onnx_importer.cpp 71.1 KB
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// This file is part of OpenCV project.
// It is subject to the license terms in the LICENSE file found in the top-level directory
// of this distribution and at http://opencv.org/license.html.

// Copyright (C) 2018, Intel Corporation, all rights reserved.
// Third party copyrights are property of their respective owners.

#include "../precomp.hpp"
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#include <opencv2/dnn/shape_utils.hpp>
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#ifdef HAVE_PROTOBUF

#include <iostream>
#include <fstream>
#include <string>
#include <limits>
#include <algorithm>


#if defined(__GNUC__) && __GNUC__ >= 5
#pragma GCC diagnostic push
#pragma GCC diagnostic ignored "-Wsuggest-override"
#endif
#include "opencv-onnx.pb.h"
#if defined(__GNUC__) && __GNUC__ >= 5
#pragma GCC diagnostic pop
#endif

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#include "onnx_graph_simplifier.hpp"

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namespace cv {
namespace dnn {
CV__DNN_EXPERIMENTAL_NS_BEGIN


class ONNXImporter
{
    opencv_onnx::ModelProto model_proto;
    struct LayerInfo {
        int layerId;
        int outputId;
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        LayerInfo(int _layerId = 0, int _outputId = 0) : layerId(_layerId), outputId(_outputId) {}
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    };

    std::map<std::string, Mat> getGraphTensors(
                                    const opencv_onnx::GraphProto& graph_proto);
    Mat getBlob(const opencv_onnx::NodeProto& node_proto, const std::map<std::string, Mat>& constBlobs, int index);

    LayerParams getLayerParams(const opencv_onnx::NodeProto& node_proto);
    bool isCeilMode(const LayerParams& layerParams);

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    void addLayer(Net& dstNet, LayerParams& layerParams,
                  const opencv_onnx::NodeProto& node_proto,
                  std::map<std::string, LayerInfo>& layer_id,
                  std::map<std::string, MatShape>& outShapes);

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public:

    ONNXImporter(const char *onnxFile)
    {
        std::fstream input(onnxFile, std::ios::in | std::ios::binary);

        if (!model_proto.ParseFromIstream(&input))
            CV_Error(Error::StsUnsupportedFormat, "Failed to parse onnx model");
    }

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    ONNXImporter(const char* buffer, size_t sizeBuffer)
    {
        struct _Buf : public std::streambuf
        {
            _Buf(const char* buffer, size_t sizeBuffer)
            {
                char* p = const_cast<char*>(buffer);
                setg(p, p, p + sizeBuffer);
            }
        };

        _Buf buf(buffer, sizeBuffer);
        std::istream input(&buf);

        if (!model_proto.ParseFromIstream(&input))
            CV_Error(Error::StsUnsupportedFormat, "Failed to parse onnx model from in-memory byte array.");
    }

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    void populateNet(Net dstNet);
};

inline void replaceLayerParam(LayerParams& layerParams, const String& oldKey, const String& newKey)
{
    if (layerParams.has(oldKey)) {
        layerParams.set(newKey, layerParams.get(oldKey));
        layerParams.erase(oldKey);
    }
}

void releaseONNXTensor(opencv_onnx::TensorProto& tensor_proto)
{
    if (!tensor_proto.raw_data().empty()) {
        delete tensor_proto.release_raw_data();
    }
}

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void runLayer(LayerParams& params, const std::vector<Mat>& inputs,
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              std::vector<Mat>& outputs)
{
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    Ptr<Layer> layer = LayerFactory::createLayerInstance(params.type, params);
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    CV_Assert((bool)layer);

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    std::vector<MatShape> inpShapes(inputs.size());
    int ddepth = CV_32F;
    for (size_t i = 0; i < inputs.size(); ++i)
    {
        inpShapes[i] = shape(inputs[i]);
        if (i > 0 && ddepth != inputs[i].depth())
            CV_Error(Error::StsNotImplemented, "Mixed input data types.");
        ddepth = inputs[i].depth();
    }

    std::vector<MatShape> outShapes, internalShapes;
    layer->getMemoryShapes(inpShapes, 0, outShapes, internalShapes);

    std::vector<Mat> internals(internalShapes.size());
    outputs.resize(outShapes.size());
    for (size_t i = 0; i < outShapes.size(); ++i)
        outputs[i].create(outShapes[i], ddepth);
    for (size_t i = 0; i < internalShapes.size(); ++i)
        internals[i].create(internalShapes[i], ddepth);

    layer->finalize(inputs, outputs);
    layer->forward(inputs, outputs, internals);
}

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std::map<std::string, Mat> ONNXImporter::getGraphTensors(
                                        const opencv_onnx::GraphProto& graph_proto)
{
  opencv_onnx::TensorProto tensor_proto;
  std::map<std::string, Mat> layers_weights;

  for (int i = 0; i < graph_proto.initializer_size(); i++)
  {
    tensor_proto = graph_proto.initializer(i);
    Mat mat = getMatFromTensor(tensor_proto);
    releaseONNXTensor(tensor_proto);
    layers_weights.insert(std::make_pair(tensor_proto.name(), mat));
  }
  return layers_weights;
}

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static DictValue parse(const ::google::protobuf::RepeatedField< ::google::protobuf::int64>& src) {
    std::vector<int32_t> dst(src.size());
    convertInt64ToInt32(src, dst, src.size());
    return DictValue::arrayInt(&dst[0], src.size());
}

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LayerParams ONNXImporter::getLayerParams(const opencv_onnx::NodeProto& node_proto)
{
    LayerParams lp;
    for(int i = 0; i < node_proto.attribute_size(); i++)
    {
        opencv_onnx::AttributeProto attribute_proto = node_proto.attribute(i);
        std::string attribute_name = attribute_proto.name();

        if(attribute_name == "kernel_shape")
        {
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            CV_Assert(attribute_proto.ints_size() == 2 || attribute_proto.ints_size() == 3);
            lp.set("kernel_size", parse(attribute_proto.ints()));
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        }
        else if(attribute_name == "strides")
        {
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            CV_Assert(attribute_proto.ints_size() == 2 || attribute_proto.ints_size() == 3);
            lp.set("stride", parse(attribute_proto.ints()));
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        }
        else if(attribute_name == "pads")
        {
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            if (node_proto.op_type() == "Pad")
            {
                // Padding layer.
                // Paddings are in order begin0, begin1, .. beginN, end0, end1, ..., endN.
                // We need to shuffle it to begin0, end0, begin1, end1, ...
                CV_Assert(attribute_proto.ints_size() % 2 == 0);
                const int dims = attribute_proto.ints_size() / 2;
                std::vector<int32_t> paddings;
                paddings.reserve(attribute_proto.ints_size());
                for (int i = 0; i < dims; ++i)
                {
                    paddings.push_back(attribute_proto.ints(i));
                    paddings.push_back(attribute_proto.ints(dims + i));
                }
                lp.set("paddings", DictValue::arrayInt(&paddings[0], paddings.size()));
            }
            else
            {
                // Convolution or pooling.
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                CV_Assert(attribute_proto.ints_size() == 4 || attribute_proto.ints_size() == 6);
                lp.set("pad", parse(attribute_proto.ints()));
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            }
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        }
        else if(attribute_name == "auto_pad")
        {
            if (attribute_proto.s() == "SAME_UPPER" || attribute_proto.s() == "SAME_LOWER") {
                lp.set("pad_mode",  "SAME");
            }
            else if (attribute_proto.s() == "VALID") {
                lp.set("pad_mode", "VALID");
            }
        }
        else if(attribute_name == "dilations")
        {
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            CV_Assert(attribute_proto.ints_size() == 2 || attribute_proto.ints_size() == 3);
            lp.set("dilation", parse(attribute_proto.ints()));
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        }
        else if (attribute_proto.has_i())
        {
            ::google::protobuf::int64 src = attribute_proto.i();
            if (src < std::numeric_limits<int32_t>::min() || src > std::numeric_limits<int32_t>::max())
                CV_Error(Error::StsOutOfRange, "Input is out of OpenCV 32S range");
            else
                lp.set(attribute_name, saturate_cast<int32_t>(src));
        }
        else if (attribute_proto.has_f())
        {
            lp.set(attribute_name, attribute_proto.f());
        }
        else if (attribute_proto.has_s())
        {
            lp.set(attribute_name, attribute_proto.s());
        }
        else if (attribute_proto.floats_size() > 0)
        {
            lp.set(attribute_name, DictValue::arrayReal(
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                attribute_proto.floats().data(), attribute_proto.floats_size()));
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        }
        else if (attribute_proto.ints_size() > 0)
        {
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            lp.set(attribute_proto.name(), parse(attribute_proto.ints()));
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        }
        else if (attribute_proto.has_t())
        {
            opencv_onnx::TensorProto tensor = attribute_proto.t();
            Mat blob = getMatFromTensor(tensor);
            lp.blobs.push_back(blob);
        }
        else if (attribute_proto.has_g() || attribute_proto.strings_size() > 0 ||
                    attribute_proto.tensors_size() > 0 || attribute_proto.graphs_size() > 0)
        {
                CV_Error(Error::StsNotImplemented, "Unexpected attribute type");
        }
        else
            CV_Error(Error::StsNotImplemented, "Unsupported attribute type");
    }
    return lp;
}

Mat ONNXImporter::getBlob(const opencv_onnx::NodeProto& node_proto,
                    const std::map<std::string, Mat>& constBlobs, int index)
{
    CV_Assert(index < node_proto.input_size());
    std::map<std::string, Mat>::const_iterator constBlob;
    constBlob = constBlobs.find(node_proto.input(index));
    if (constBlob == constBlobs.end()) {
        CV_Error(Error::StsObjectNotFound,
             "Blob " + node_proto.input(index) + " not found in const blobs");
    }
    return constBlob->second;
}

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void ONNXImporter::addLayer(Net& dstNet, LayerParams& layerParams,
                            const opencv_onnx::NodeProto& node_proto,
                            std::map<std::string, LayerInfo>& layer_id,
                            std::map<std::string, MatShape>& outShapes)
{
    std::map<std::string, LayerInfo>::iterator layerId;
    std::map<std::string, MatShape>::iterator shapeIt;

    int id = dstNet.addLayer(layerParams.name, layerParams.type, layerParams);
    for (int i = 0; i < node_proto.output_size(); ++i)
    {
        layer_id.insert(std::make_pair(node_proto.output(i), LayerInfo(id, i)));
    }

    std::vector<MatShape> layerInpShapes, layerOutShapes, layerInternalShapes;
    int inpNum = 0;
    for (int j = 0; j < node_proto.input_size(); j++) {
        layerId = layer_id.find(node_proto.input(j));
        if (layerId != layer_id.end()) {
            dstNet.connect(layerId->second.layerId, layerId->second.outputId, id, inpNum);
            ++inpNum;
            // Collect input shapes.
            shapeIt = outShapes.find(node_proto.input(j));
            CV_Assert(shapeIt != outShapes.end());
            layerInpShapes.push_back(shapeIt->second);
        }
    }
    // Compute shape of output blob for this layer.
    Ptr<Layer> layer = dstNet.getLayer(id);
    layer->getMemoryShapes(layerInpShapes, 0, layerOutShapes, layerInternalShapes);
    for (int i = 0; i < node_proto.output_size() && i < (int)layerOutShapes.size(); ++i)
    {
        outShapes[node_proto.output(i)] = layerOutShapes[i];
    }
}

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static void addConstant(const std::string& name,
                        const Mat& blob,
                        std::map<std::string, Mat>& constBlobs,
                        std::map<std::string, MatShape>& outShapes)
{
    constBlobs.insert(std::make_pair(name, blob));
    outShapes.insert(std::make_pair(name, shape(blob)));
}

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void ONNXImporter::populateNet(Net dstNet)
{
    CV_Assert(model_proto.has_graph());
    opencv_onnx::GraphProto graph_proto = model_proto.graph();
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    simplifySubgraphs(graph_proto);

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    std::map<std::string, Mat> constBlobs = getGraphTensors(graph_proto);
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    // List of internal blobs shapes.
    std::map<std::string, MatShape> outShapes;
    // Add all the inputs shapes. It includes as constant blobs as network's inputs shapes.
    for (int i = 0; i < graph_proto.input_size(); ++i)
    {
        opencv_onnx::ValueInfoProto valueInfoProto = graph_proto.input(i);
        CV_Assert(valueInfoProto.has_type());
        opencv_onnx::TypeProto typeProto = valueInfoProto.type();
        CV_Assert(typeProto.has_tensor_type());
        opencv_onnx::TypeProto::Tensor tensor = typeProto.tensor_type();
        CV_Assert(tensor.has_shape());
        opencv_onnx::TensorShapeProto tensorShape = tensor.shape();

        MatShape inpShape(tensorShape.dim_size());
        for (int j = 0; j < inpShape.size(); ++j)
        {
            inpShape[j] = tensorShape.dim(j).dim_value();
        }
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        if (!inpShape.empty())
        {
            inpShape[0] = std::max(inpShape[0], 1); // It's OK to have undetermined batch size
        }
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        outShapes[valueInfoProto.name()] = inpShape;
    }
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    std::string framework_name;
    if (model_proto.has_producer_name()) {
        framework_name = model_proto.producer_name();
    }

    // create map with network inputs (without const blobs)
    std::map<std::string, LayerInfo> layer_id;
    std::map<std::string, LayerInfo>::iterator layerId;
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    std::map<std::string, MatShape>::iterator shapeIt;
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    // fill map: push layer name, layer id and output id
    std::vector<String> netInputs;
    for (int j = 0; j < graph_proto.input_size(); j++)
    {
        const std::string& name = graph_proto.input(j).name();
        if (constBlobs.find(name) == constBlobs.end()) {
            netInputs.push_back(name);
            layer_id.insert(std::make_pair(name, LayerInfo(0, netInputs.size() - 1)));
        }
    }
    dstNet.setInputsNames(netInputs);

    int layersSize = graph_proto.node_size();
    LayerParams layerParams;
    opencv_onnx::NodeProto node_proto;

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    for(int li = 0; li < layersSize; li++)
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    {
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        node_proto = graph_proto.node(li);
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        layerParams = getLayerParams(node_proto);
        CV_Assert(node_proto.output_size() >= 1);
        layerParams.name = node_proto.output(0);

        std::string layer_type = node_proto.op_type();
        layerParams.type = layer_type;
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        if (layer_type == "MaxPool")
        {
            layerParams.type = "Pooling";
            layerParams.set("pool", "MAX");
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            layerParams.set("ceil_mode", layerParams.has("pad_mode"));
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        }
        else if (layer_type == "AveragePool")
        {
            layerParams.type = "Pooling";
            layerParams.set("pool", "AVE");
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            layerParams.set("ceil_mode", layerParams.has("pad_mode"));
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            layerParams.set("ave_pool_padded_area", framework_name == "pytorch");
        }
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        else if (layer_type == "GlobalAveragePool" || layer_type == "GlobalMaxPool" ||
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                layer_type == "ReduceMean" || layer_type == "ReduceSum" || layer_type == "ReduceMax")
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        {
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            CV_Assert(node_proto.input_size() == 1);
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            layerParams.type = "Pooling";
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            String pool;
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            if (layer_type == "GlobalMaxPool" || layer_type == "ReduceMax")
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                pool = "MAX";
            else if (layer_type == "ReduceSum")
                pool = "SUM";
            else
                pool = "AVE";
            layerParams.set("pool", pool);
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            layerParams.set("global_pooling", !layerParams.has("axes"));
            if (layerParams.has("axes") && (layer_type == "ReduceMean" || layer_type == "ReduceSum" || layer_type == "ReduceMax"))
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            {
                MatShape inpShape = outShapes[node_proto.input(0)];
                DictValue axes = layerParams.get("axes");
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                bool keepdims = layerParams.get<int>("keepdims");
                MatShape targetShape = inpShape;
                for (int i = 0; i < axes.size(); i++) {
                    int axis = clamp(axes.get<int>(i), inpShape.size());
                    if (keepdims) {
                        targetShape[axis] = 1;
                    } else {
                        targetShape.erase(targetShape.begin() + axis);
                    }
                }

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                if (inpShape.size() == 3 && axes.size() <= 2)
                {
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                    int axis = clamp(axes.get<int>(0), inpShape.size());
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                    CV_CheckNE(axis, 0, "");

                    LayerParams reshapeLp;
                    reshapeLp.name = layerParams.name + "/reshape";
                    reshapeLp.type = "Reshape";
                    CV_Assert(layer_id.find(reshapeLp.name) == layer_id.end());
                    reshapeLp.set("axis", 0);
                    reshapeLp.set("num_axes", 1);
                    int newShape[] = {1, -1};
                    reshapeLp.set("dim", DictValue::arrayInt(&newShape[0], 2));

                    opencv_onnx::NodeProto proto;
                    proto.add_input(node_proto.input(0));
                    proto.add_output(reshapeLp.name);
                    addLayer(dstNet, reshapeLp, proto, layer_id, outShapes);

                    LayerParams avgLp;
                    avgLp.name = layerParams.name + "/avg";
                    avgLp.type = "Pooling";
                    CV_Assert(layer_id.find(avgLp.name) == layer_id.end());
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                    avgLp.set("pool", pool);
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                    if (axes.size() == 2)
                    {
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                        CV_CheckEQ(clamp(axes.get<int>(0), inpShape.size()), 1, ("Unsupported " + layer_type  + " mode").c_str());
                        CV_CheckEQ(clamp(axes.get<int>(1), inpShape.size()), 2, ("Unsupported " + layer_type  + " mode").c_str());
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                        avgLp.set("global_pooling", true);
                    }
                    else
                    {
                        avgLp.set(axis == 2 ? "global_pooling_w" : "global_pooling_h", true);
                        avgLp.set(axis == 2 ? "kernel_h" : "kernel_w", 1);
                    }

                    node_proto.set_input(0, reshapeLp.name);
                    node_proto.set_output(0, avgLp.name);
                    addLayer(dstNet, avgLp, node_proto, layer_id, outShapes);
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                }
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                else
                {
                    if (inpShape.size() != 4 && inpShape.size() != 5)
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                        CV_Error(Error::StsNotImplemented, "Unsupported input shape of " + layer_type + " operation.");
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                    CV_Assert(axes.size() <= inpShape.size() - 2);
                    std::vector<int> kernel_size(inpShape.size() - 2, 1);
                    for (int i = 0; i < axes.size(); i++) {
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                        int axis = clamp(axes.get<int>(i), inpShape.size());
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                        CV_Assert_N(axis >= 2 + i, axis < inpShape.size());
                        kernel_size[axis - 2] = inpShape[axis];
                    }
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                    LayerParams poolLp = layerParams;
                    poolLp.name = layerParams.name + "/avg";
                    CV_Assert(layer_id.find(poolLp.name) == layer_id.end());
                    poolLp.set("kernel_size", DictValue::arrayInt(&kernel_size[0], kernel_size.size()));

                    node_proto.set_output(0, poolLp.name);
                    addLayer(dstNet, poolLp, node_proto, layer_id, outShapes);
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                }
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                layerParams.type = "Reshape";
                layerParams.set("dim", DictValue::arrayInt(&targetShape[0], targetShape.size()));

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                node_proto.set_input(0, node_proto.output(0));
                node_proto.set_output(0, layerParams.name);
            }
            else if (!layerParams.has("axes") && (layer_type == "ReduceMean" || layer_type == "ReduceSum" || layer_type == "ReduceMax"))
            {
                CV_CheckEQ(layerParams.get<int>("keepdims"), 0, (layer_type + " layer only supports keepdims = false").c_str());
                LayerParams reshapeLp;
                reshapeLp.name = layerParams.name + "/reshape";
                reshapeLp.type = "Reshape";
                CV_Assert(layer_id.find(reshapeLp.name) == layer_id.end());
                int newShape[] = {1, 1, 1, -1};
                reshapeLp.set("dim", DictValue::arrayInt(&newShape[0], 4));

                opencv_onnx::NodeProto proto;
                proto.add_input(node_proto.input(0));
                proto.add_output(reshapeLp.name);
                addLayer(dstNet, reshapeLp, proto, layer_id, outShapes);

                LayerParams poolLp = layerParams;
                poolLp.name = layerParams.name + "/pool";
                CV_Assert(layer_id.find(poolLp.name) == layer_id.end());

                node_proto.set_input(0, reshapeLp.name);
                node_proto.set_output(0, poolLp.name);
                addLayer(dstNet, poolLp, node_proto, layer_id, outShapes);

                layerParams.type = "Reshape";
                int targetShape[] = {1};
                layerParams.set("dim", DictValue::arrayInt(&targetShape[0], 1));

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                node_proto.set_input(0, node_proto.output(0));
                node_proto.set_output(0, layerParams.name);
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            }
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        }
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        else if (layer_type == "Slice")
        {
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            int axis = 0;
            std::vector<int> begin;
            std::vector<int> end;
            int inp_size = node_proto.input_size();

            if (inp_size == 1)
            {
                if (layerParams.has("steps"))
                {
                    DictValue steps = layerParams.get("steps");
                    for (int i = 0; i < steps.size(); ++i)
                    {
                        if (steps.get<int>(i) != 1)
                            CV_Error(Error::StsNotImplemented,
                                "Slice layer only supports steps = 1");
                    }
                }
                if (layerParams.has("axes")) {
                    DictValue axes = layerParams.get("axes");
                    for (int i = 1; i < axes.size(); ++i) {
                        CV_Assert(axes.get<int>(i - 1) == axes.get<int>(i) - 1);
                    }
                    axis = axes.get<int>(0);
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                }

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                DictValue starts = layerParams.get("starts");
                DictValue ends = layerParams.get("ends");
                CV_Assert(starts.size() == ends.size());

                if (axis > 0) {
                    begin.resize(axis, 0);
                    end.resize(axis, -1);
                }
                for (int i = 0; i < starts.size(); ++i)
                {
                    begin.push_back(starts.get<int>(i));
                    int finish = ends.get<int>(i);
                    end.push_back((finish < 0) ? --finish : finish); // numpy doesn't include last dim
                }
            } else {
                CV_Assert(inp_size >= 3);
                for (int i = 1; i < inp_size; i++) {
                    CV_Assert(constBlobs.find(node_proto.input(i)) != constBlobs.end());
                }
                Mat start_blob = getBlob(node_proto, constBlobs, 1);
                Mat end_blob   = getBlob(node_proto, constBlobs, 2);
                CV_Assert(start_blob.total() == end_blob.total());

                if (inp_size > 3) {
                    Mat axes_blob = getBlob(node_proto, constBlobs, 3);
                    const int* axes = (int*)axes_blob.data;
                    for (int i = 1; i < axes_blob.total(); ++i) {
                        CV_Assert(axes[i - 1] == axes[i] - 1);
                    }
                    axis = axes[0];
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                }

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                const int* starts = start_blob.ptr<int>();
                const int* ends   = end_blob.ptr<int>();
                if (axis > 0) {
                    begin.resize(axis, 0);
                    end.resize(axis, -1);
                }
                std::copy(starts, starts + start_blob.total(), std::back_inserter(begin));
                for (int i = 0; i < end_blob.total(); ++i)
                {
                    int finish = ends[i];
                    end.push_back((finish < 0) ? --finish : finish); // numpy doesn't include last dim
                }
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                if (inp_size == 5) {
                    CV_Assert(constBlobs.find(node_proto.input(4)) != constBlobs.end());
                    Mat step_blob = getBlob(node_proto, constBlobs, 4);
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                    // Very strange application for Slice op with tensor reversing.
                    // We just workaround it for 2d constants.
                    if (constBlobs.find(node_proto.input(0)) != constBlobs.end() &&
                        axis == 0 &&
                        start_blob.at<int>(0) == -1 && step_blob.at<int>(0) == -1 &&
                        end_blob.at<int>(0) == std::numeric_limits<int32_t>::min())
                    {
                        Mat inp = getBlob(node_proto, constBlobs, 0);
                        if (inp.dims == 2)
                        {
                            Mat flipped;
                            flip(inp, flipped, 0);
                            addConstant(layerParams.name, flipped, constBlobs, outShapes);
                            continue;
                        }
                    }
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                    CV_CheckEQ(countNonZero(step_blob != 1), 0, "Slice layer only supports steps = 1");
                }
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            }
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            layerParams.set("begin", DictValue::arrayInt(&begin[0], begin.size()));
            layerParams.set("end", DictValue::arrayInt(&end[0], end.size()));
            layerParams.set("axis", axis);
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            if (constBlobs.find(node_proto.input(0)) != constBlobs.end())
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            {
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                Mat inp = getBlob(node_proto, constBlobs, 0);
                std::vector<Mat> inputs, sliced;
                inputs.push_back(inp);
                runLayer(layerParams, inputs, sliced);
                CV_Assert(sliced.size() == 1);
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                addConstant(layerParams.name, sliced[0], constBlobs, outShapes);
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                continue;
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            }
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        }
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        else if (layer_type == "Split")
        {
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            if (layerParams.has("split"))
            {
                DictValue splits = layerParams.get("split");
                const int numSplits = splits.size();
                CV_Assert(numSplits > 1);
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                std::vector<int> slicePoints(numSplits - 1, splits.get<int>(0));
                for (int i = 1; i < splits.size() - 1; ++i)
                {
                    slicePoints[i] = slicePoints[i - 1] + splits.get<int>(i - 1);
                }
                layerParams.set("slice_point", DictValue::arrayInt(&slicePoints[0], slicePoints.size()));
            }
            else
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            {
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                layerParams.set("num_split", node_proto.output_size());
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            }
            layerParams.type = "Slice";
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        }
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        else if (layer_type == "Add" || layer_type == "Sum" || layer_type == "Sub")
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        {
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            bool isSub = layer_type == "Sub";
            CV_CheckEQ(node_proto.input_size(), 2, "");
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            bool is_const_0 = layer_id.find(node_proto.input(0)) == layer_id.end();
            bool is_const_1 = layer_id.find(node_proto.input(1)) == layer_id.end();
            if (is_const_0 && is_const_1)
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            {
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                Mat blob_0 = getBlob(node_proto, constBlobs, 0);
                Mat blob_1 = getBlob(node_proto, constBlobs, 1);
                CV_Assert(blob_0.size == blob_1.size);
                Mat output = isSub ? (blob_0 - blob_1) : (blob_0 + blob_1);
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                addConstant(layerParams.name, output, constBlobs, outShapes);
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                continue;
            }
            else if (is_const_0 || is_const_1)
            {
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                int const_blob_id = is_const_0 ? 0 : 1;
                Mat blob = getBlob(node_proto, constBlobs, const_blob_id);
                int blob_total = blob.total();
                if (blob_total == 1) {
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                    layerParams.type = "Power";
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                    layerParams.set("shift", (isSub ? -1 : 1) * blob.at<float>(0));
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                }
                else {
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                    MatShape inpShape = outShapes[node_proto.input(1 - const_blob_id)];
                    if (shape(blob) == inpShape)
                    {
                        LayerParams constParams;
                        constParams.name = layerParams.name + "/const";
                        constParams.type = "Const";
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                        constParams.blobs.push_back((isSub ? -1 : 1) * blob);
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                        int id = dstNet.addLayer(constParams.name, constParams.type, constParams);
                        layer_id.insert(std::make_pair(constParams.name, LayerInfo(id, 0)));
                        outShapes[constParams.name] = shape(blob);

                        layerParams.type = "Eltwise";
                        node_proto.set_input(const_blob_id, constParams.name);
                    }
                    else
                    {
                        layerParams.type = "Scale";
                        layerParams.set("bias_term", true);
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                        int axis = 1;
                        for (int i = 0; i < graph_proto.initializer_size(); i++)
                        {
                            opencv_onnx::TensorProto tensor_proto = graph_proto.initializer(i);
                            if (tensor_proto.name() == node_proto.input(const_blob_id))
                            {
                                axis = inpShape.size() - tensor_proto.dims_size();
                                break;
                            }
                        }
                        layerParams.set("axis", axis);
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                        blob = blob.reshape(1, 1);
                        layerParams.blobs.push_back((isSub ? -1 : 1) * blob);
                    }
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                }
            }
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            else if (outShapes[node_proto.input(0)] == outShapes[node_proto.input(1)])
            {
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                layerParams.type = "Eltwise";
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                if (isSub)
                {
                    static float subCoeffs[] = {1.f, -1.f};
                    layerParams.set("coeff", DictValue::arrayReal<float*>(subCoeffs, 2));
                }
            }
            else
            {
                if (isSub)
                {
                    LayerParams powerParams;
                    powerParams.name = layerParams.name + "/neg";
                    powerParams.type = "Power";
                    powerParams.set("scale", -1);

                    //Create Power layer
                    int id = dstNet.addLayer(powerParams.name, powerParams.type, powerParams);
                    //Connect to input
                    layerId = layer_id.find(node_proto.input(1));
                    CV_Assert(layerId != layer_id.end());
                    dstNet.connect(layerId->second.layerId, layerId->second.outputId, id, 0);
                    //Add shape
                    layer_id.insert(std::make_pair(powerParams.name, LayerInfo(id, 0)));
                    outShapes[powerParams.name] = outShapes[node_proto.input(1)];

                    //Replace input to Power
                    node_proto.set_input(1, powerParams.name);
                }
                layerParams.type = "Scale";
                layerParams.set("bias_term", true);
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            }
        }
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        else if (layer_type == "Pow")
        {
            if (layer_id.find(node_proto.input(1)) != layer_id.end())
                CV_Error(Error::StsNotImplemented, "Unsupported Pow op with variable power");

            Mat blob = getBlob(node_proto, constBlobs, 1);
            if (blob.total() != 1)
                CV_Error(Error::StsNotImplemented, "Pow op supports only scalar power");

            blob.convertTo(blob, CV_32F);
            layerParams.type = "Power";
            layerParams.set("power", blob.at<float>(0));
        }
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        else if (layer_type == "Max")
        {
            layerParams.type = "Eltwise";
            layerParams.set("operation", "max");
        }
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        else if (layer_type == "Neg")
        {
            layerParams.type = "Power";
            layerParams.set("scale", -1);
        }
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        else if (layer_type == "Constant")
        {
            CV_Assert(node_proto.input_size() == 0);
            CV_Assert(layerParams.blobs.size() == 1);
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            addConstant(layerParams.name, layerParams.blobs[0], constBlobs, outShapes);
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            continue;
        }
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        else if (layer_type == "LSTM")
        {
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            LayerParams lstmParams = layerParams;
            lstmParams.name += "/lstm";

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            // https://pytorch.org/docs/stable/nn.html#lstm
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            CV_Assert(node_proto.input_size() == 7);
            Mat Wx = getBlob(node_proto, constBlobs, 1);
            Mat Wh = getBlob(node_proto, constBlobs, 2);
            Mat b = getBlob(node_proto, constBlobs, 3);
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            CV_CheckEQ(countNonZero(getBlob(node_proto, constBlobs, 5)), 0, "Unsupported non zero initial_h");
            CV_CheckEQ(countNonZero(getBlob(node_proto, constBlobs, 6)), 0, "Unsupported non zero initial_c");
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            b = b.reshape(1, b.size[0]);
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            const int numHidden = lstmParams.get<int>("hidden_size");
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            const int numDirs = Wx.size[0];  // Is 1 for forward only and 2 for bidirectional LSTM.
            const int numFeatures = Wx.size[2];
            Mat bx = b.colRange(0, b.cols / 2);
            Mat bh = b.colRange(b.cols / 2, b.cols);
            b = bx + bh;
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            // IFGO->IGFO
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            for (int k = 0; k < numDirs; ++k)
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            {
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                float* WxData = Wx.ptr<float>(k);
                float* WhData = Wh.ptr<float>(k);
                float* biasData = b.ptr<float>(k);
                for (int j = 0; j < numHidden; ++j)
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                {
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                    for (int i = 0; i < numFeatures; ++i)
                    {
                        std::swap(WxData[(numHidden + j) * numFeatures + i],
                                  WxData[(numHidden * 2 + j) * numFeatures + i]);
                    }
                    for (int i = 0; i < numHidden; ++i)
                    {
                        std::swap(WhData[(numHidden + j) * numHidden + i],
                                  WhData[(numHidden * 2 + j) * numHidden + i]);
                    }
                    std::swap(biasData[numHidden + j], biasData[numHidden * 2 + j]);
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                }
            }
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            Wx = Wx.reshape(1, Wx.size[0] * Wx.size[1]);
            Wh = Wh.reshape(1, Wh.size[0] * Wh.size[1]);
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            lstmParams.blobs.resize(3);
            lstmParams.blobs[0] = Wh;
            lstmParams.blobs[1] = Wx;
            lstmParams.blobs[2] = b;
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            lstmParams.set("bidirectional", lstmParams.get<String>("direction", "") == "bidirectional");
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            node_proto.set_output(0, lstmParams.name);  // set different name so output shapes will be registered on that name
            addLayer(dstNet, lstmParams, node_proto, layer_id, outShapes);

            MatShape lstmShape = outShapes[node_proto.output(0)];

            // Add fake 1 as it is done in ONNX
            lstmShape.insert(lstmShape.begin() + 1, 1);

            layerParams.type = "Reshape";
            layerParams.set("dim", DictValue::arrayInt(&lstmShape[0], lstmShape.size()));
            node_proto.set_input(0, lstmParams.name);  // redirect input to LSTM
            node_proto.set_output(0, layerParams.name);  // keep origin LSTM's name
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        }
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        else if (layer_type == "ImageScaler")
        {
            const float scale = layerParams.has("scale") ? layerParams.get<float>("scale") : 1.0f;
            layerParams.erase("scale");

            if (layerParams.has("bias"))
            {
                layerParams.type = "Scale";
                layerParams.blobs.push_back(
                    Mat(Size(1,  layerParams.get("bias").size()), CV_32FC1, scale));

                layerParams.set("bias_term", true);
                Mat bias(1, layerParams.get("bias").size(), CV_32FC1);
                for (int j = 0; j < bias.total(); j++) {
                    bias.at<float>(0, j) = layerParams.get("bias").getRealValue(j);
                }
                layerParams.blobs.push_back(bias);
                layerParams.erase("bias");
            }
            else {
                layerParams.set("scale", scale);
                layerParams.type = "Power";
            }
        }
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        else if (layer_type == "Clip")
        {
            layerParams.type = "ReLU6";
            replaceLayerParam(layerParams, "min", "min_value");
            replaceLayerParam(layerParams, "max", "max_value");

        }
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        else if (layer_type == "LeakyRelu")
        {
            layerParams.type = "ReLU";
            replaceLayerParam(layerParams, "alpha", "negative_slope");
        }
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        else if (layer_type == "Relu")
        {
            layerParams.type = "ReLU";
        }
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        else if (layer_type == "Elu")
        {
            layerParams.type = "ELU";
        }
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        else if (layer_type == "Tanh")
        {
            layerParams.type = "TanH";
        }
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        else if (layer_type == "PRelu")
        {
            layerParams.type = "PReLU";
            layerParams.blobs.push_back(getBlob(node_proto, constBlobs, 1));
        }
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        else if (layer_type == "LRN")
        {
            replaceLayerParam(layerParams, "size", "local_size");
        }
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        else if (layer_type == "InstanceNormalization")
        {
            if (node_proto.input_size() != 3)
                CV_Error(Error::StsNotImplemented,
                         "Expected input, scale, bias");

            layerParams.blobs.resize(4);
            layerParams.blobs[2] = getBlob(node_proto, constBlobs, 1);  // weightData
            layerParams.blobs[3] = getBlob(node_proto, constBlobs, 2);  // biasData
            layerParams.set("has_bias", true);
            layerParams.set("has_weight", true);

            // Get number of channels in input
            int size = layerParams.blobs[2].total();
            layerParams.blobs[0] = Mat::zeros(size, 1, CV_32F); // mean
            layerParams.blobs[1] = Mat::ones(size, 1, CV_32F); // std

            LayerParams mvnParams;
            mvnParams.name = layerParams.name + "/MVN";
            mvnParams.type = "MVN";
            mvnParams.set("eps", layerParams.get<float>("epsilon"));
            layerParams.erase("epsilon");

            //Create MVN layer
            int id = dstNet.addLayer(mvnParams.name, mvnParams.type, mvnParams);
            //Connect to input
            layerId = layer_id.find(node_proto.input(0));
            CV_Assert(layerId != layer_id.end());
            dstNet.connect(layerId->second.layerId, layerId->second.outputId, id, 0);
            //Add shape
            layer_id.insert(std::make_pair(mvnParams.name, LayerInfo(id, 0)));
            outShapes[mvnParams.name] = outShapes[node_proto.input(0)];

            //Replace Batch Norm's input to MVN
            node_proto.set_input(0, mvnParams.name);
            layerParams.type = "BatchNorm";
        }
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        else if (layer_type == "BatchNormalization")
        {
            if (node_proto.input_size() != 5)
                CV_Error(Error::StsNotImplemented,
                         "Expected input, scale, bias, mean and var");

            layerParams.type = "BatchNorm";
            replaceLayerParam(layerParams, "epsilon", "eps");
            replaceLayerParam(layerParams, "spatial", "use_global_stats");

            Mat meanData = getBlob(node_proto, constBlobs, 3);
            Mat stdData =  getBlob(node_proto, constBlobs, 4);

            layerParams.blobs.push_back(meanData);
            layerParams.blobs.push_back(stdData);

            if (!node_proto.input(1).empty()) {
                layerParams.set("has_weight", true);
                layerParams.blobs.push_back(getBlob(node_proto, constBlobs, 1));  // weightData
            } else {
                layerParams.set("has_weight", false);
            }

            if (!node_proto.input(2).empty()) {
                layerParams.set("has_bias", true);
                layerParams.blobs.push_back(getBlob(node_proto, constBlobs, 2)); // biasData
            } else {
                layerParams.set("has_bias", false);
            }
        }
        else if (layer_type == "Gemm")
        {
            CV_Assert(node_proto.input_size() >= 2);
            layerParams.type = "InnerProduct";
            Mat weights = getBlob(node_proto, constBlobs, 1);
            int ind_num_out = 0;
            if (layerParams.has("transB") && !layerParams.get<int>("transB")) {
                transpose(weights, weights);
                ind_num_out = 1;
            }
            layerParams.blobs.push_back(weights);

            if (node_proto.input_size() == 3) {
                Mat bias = getBlob(node_proto, constBlobs, 2);
                layerParams.blobs.push_back(bias);
            }
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            if (constBlobs.find(node_proto.input(0)) != constBlobs.end())
            {
                Mat inputBuf = getBlob(node_proto, constBlobs, 0);

                LayerParams constParams;
                constParams.name = node_proto.input(0);
                constParams.type = "Const";
                constParams.blobs.push_back(inputBuf);

                opencv_onnx::NodeProto proto;
                proto.add_output(constParams.name);
                addLayer(dstNet, constParams, proto, layer_id, outShapes);
            }
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            layerParams.set("num_output", layerParams.blobs[0].size[ind_num_out]);
            layerParams.set("bias_term", node_proto.input_size() == 3);
        }
        else if (layer_type == "MatMul")
        {
            CV_Assert(node_proto.input_size() == 2);
            layerParams.type = "InnerProduct";
            layerParams.set("bias_term", false);
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            CV_Assert(constBlobs.find(node_proto.input(0)) == constBlobs.end());
            int firstInpDims = outShapes[node_proto.input(0)].size();
            int secondInpDims;
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            if (constBlobs.find(node_proto.input(1)) != constBlobs.end())
            {
                Mat blob = getBlob(node_proto, constBlobs, 1);
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                secondInpDims = blob.dims;
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                layerParams.blobs.push_back(blob.t());
                layerParams.set("num_output", layerParams.blobs[0].size[0]);
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            } else {
                secondInpDims = outShapes[node_proto.input(1)].size();
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            }
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            layerParams.set("axis", firstInpDims - secondInpDims + 1);
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        }
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        else if (layer_type == "Mul" || layer_type == "Div")
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        {
            CV_Assert(node_proto.input_size() == 2);
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            bool isDiv = layer_type == "Div";
            int constId = -1;
            bool haveVariables = false;
            for (int i = 0; i < 2; ++i)
            {
                if (constBlobs.find(node_proto.input(i)) != constBlobs.end())
                    constId = i;
                else
                    haveVariables = true;
            }
            if (constId != -1 && haveVariables)
            {
                Mat blob = getBlob(node_proto, constBlobs, constId);
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                blob = blob.reshape(1, 1);
                if (blob.total() == 1) {
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                    float coeff = isDiv ? 1.0 / blob.at<float>(0) : blob.at<float>(0);
                    layerParams.set("scale", coeff);
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                    layerParams.type = "Power";
                }
                else {
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                    if (isDiv)
                        divide(1.0, blob, blob);
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                    layerParams.blobs.push_back(blob);
                    layerParams.type = "Scale";
                }
            }
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            else if (outShapes[node_proto.input(0)] == outShapes[node_proto.input(1)])
            {
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                layerParams.type = "Eltwise";
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                layerParams.set("operation", isDiv ? "div" : "prod");
            }
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            else
            {
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                // Scale layer allocate output with the first input shape
                if (total(outShapes[node_proto.input(0)]) < total(outShapes[node_proto.input(1)]))
                {
                    opencv_onnx::NodeProto proto;
                    proto.add_input(node_proto.input(1));
                    proto.add_input(node_proto.input(0));
                    proto.add_output(layerParams.name);
                    node_proto = proto;
                }

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                if (isDiv)
                {
                    LayerParams powerParams;
                    powerParams.name = layerParams.name + "/inv";
                    powerParams.type = "Power";
                    powerParams.set("power", -1);

                    //Create Power layer
                    int id = dstNet.addLayer(powerParams.name, powerParams.type, powerParams);
                    //Connect to input
                    layerId = layer_id.find(node_proto.input(1));
                    CV_Assert(layerId != layer_id.end());
                    dstNet.connect(layerId->second.layerId, layerId->second.outputId, id, 0);
                    //Add shape
                    layer_id.insert(std::make_pair(powerParams.name, LayerInfo(id, 0)));
                    outShapes[powerParams.name] = outShapes[node_proto.input(1)];

                    //Replace input to Power
                    node_proto.set_input(1, powerParams.name);
                }
                layerParams.type = "Scale";
            }
1086 1087 1088 1089 1090

            if (!haveVariables)
            {
                Mat inp0 = getBlob(node_proto, constBlobs, 0);
                Mat inp1 = getBlob(node_proto, constBlobs, 1);
1091
                if (inp0.size != inp1.size && inp1.total() != 1)
1092 1093
                    CV_Error(Error::StsNotImplemented, "Constant multiply with different shapes");

1094
                Mat out = isDiv ? inp0 / inp1 : inp0.mul(inp1);
1095 1096
                out = out.reshape(1, inp0.dims, inp0.size);
                out.dims = inp0.dims;  // to workaround dims == 1
1097
                addConstant(layerParams.name, out, constBlobs, outShapes);
1098
                continue;
1099 1100 1101 1102 1103 1104 1105
            }
        }
        else if (layer_type == "Conv")
        {
            CV_Assert(node_proto.input_size() >= 2);
            layerParams.type = "Convolution";
            for (int j = 1; j < node_proto.input_size(); j++) {
1106 1107 1108 1109
                if (constBlobs.find(node_proto.input(j)) != constBlobs.end())
                {
                    layerParams.blobs.push_back(getBlob(node_proto, constBlobs, j));
                }
1110
            }
1111 1112
            int outCn = layerParams.blobs.empty() ? outShapes[node_proto.input(1)][0] : layerParams.blobs[0].size[0];
            layerParams.set("num_output", outCn);
1113
        }
1114 1115 1116 1117 1118 1119 1120
        else if (layer_type == "ConvTranspose")
        {
            CV_Assert(node_proto.input_size() >= 2);
            layerParams.type = "Deconvolution";
            for (int j = 1; j < node_proto.input_size(); j++) {
                layerParams.blobs.push_back(getBlob(node_proto, constBlobs, j));
            }
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            layerParams.set("num_output", layerParams.blobs[0].size[1] * layerParams.get<int>("group", 1));
1122
            layerParams.set("bias_term", node_proto.input_size() == 3);
1123

1124 1125 1126 1127
            if (!layerParams.has("kernel_size"))
                CV_Error(Error::StsNotImplemented,
                         "Required attribute 'kernel_size' is not present.");

1128 1129 1130
            if (layerParams.has("output_shape"))
            {
                const DictValue& outShape = layerParams.get("output_shape");
1131 1132
                DictValue strides = layerParams.get("stride");
                DictValue kernel = layerParams.get("kernel_size");
1133

1134 1135 1136
                String padMode;
                std::vector<int> adjust_pads;
                if (layerParams.has("pad_mode"))
1137
                {
1138 1139 1140 1141 1142 1143 1144 1145 1146 1147 1148 1149
                    padMode = toUpperCase(layerParams.get<String>("pad_mode"));
                    if (padMode != "SAME" && padMode != "VALID")
                        CV_Error(Error::StsError, "Unsupported padding mode " + padMode);

                    for (int i = 0; i < strides.size(); i++)
                    {
                        int sz = outShape.get<int>(2 + i);
                        int stride = strides.get<int>(i);
                        adjust_pads.push_back(padMode == "SAME"? (sz - 1) % stride :
                                                                 (sz - kernel.get<int>(i)) % stride);
                    }
                    layerParams.set("adj", DictValue::arrayInt(&adjust_pads[0], adjust_pads.size()));
1150 1151
                }
            }
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            else if (layerParams.has("output_padding"))
            {
1154
                replaceLayerParam(layerParams, "output_padding", "adj");
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            }
1156
        }
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        else if (layer_type == "Transpose")
        {
            layerParams.type = "Permute";
            replaceLayerParam(layerParams, "perm", "order");
1161 1162 1163 1164 1165 1166 1167

            CV_Assert(node_proto.input_size() == 1);
            if (constBlobs.find(node_proto.input(0)) != constBlobs.end())
            {
                std::vector<Mat> inputs(1, getBlob(node_proto, constBlobs, 0)), transposed;
                runLayer(layerParams, inputs, transposed);
                CV_Assert(transposed.size() == 1);
1168
                addConstant(layerParams.name, transposed[0], constBlobs, outShapes);
1169 1170
                continue;
            }
1171
        }
1172 1173 1174
        else if (layer_type == "Squeeze")
        {
            CV_Assert_N(node_proto.input_size() == 1, layerParams.has("axes"));
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            DictValue axes_dict = layerParams.get("axes");
            MatShape inpShape = outShapes[node_proto.input(0)];

            std::vector<bool> maskedAxes(inpShape.size(), false);
            for (int i = 0; i < axes_dict.size(); ++i)
            {
                int axis = axes_dict.getIntValue(i);
                CV_CheckLE(axis, static_cast<int>(inpShape.size()), "Squeeze axis");
                maskedAxes[axis] = inpShape[axis] == 1;
            }
            MatShape outShape;
            for (int i = 0; i < inpShape.size(); ++i)
            {
                if (!maskedAxes[i])
                    outShape.push_back(inpShape[i]);
            }
            if (outShape.size() != inpShape.size())
            {
                layerParams.type = "Reshape";
                layerParams.set("dim", DictValue::arrayInt(&outShape[0], outShape.size()));
            }
            else
                layerParams.type = "Identity";
1198 1199 1200 1201 1202 1203

            if (constBlobs.find(node_proto.input(0)) != constBlobs.end())
            {
                Mat inp = getBlob(node_proto, constBlobs, 0);
                Mat out = inp.reshape(1, outShape);
                out.dims = outShape.size();  // to workaround dims == 1
1204
                addConstant(layerParams.name, out, constBlobs, outShapes);
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                continue;
            }
1207
        }
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        else if (layer_type == "Flatten")
        {
            CV_CheckEQ(node_proto.input_size(), 1, "");
            if (constBlobs.find(node_proto.input(0)) != constBlobs.end())
            {
                Mat input = getBlob(node_proto, constBlobs, 0);
                int axis = clamp(layerParams.get<int>("axis", 1), input.dims);

                std::vector<int> out_size(&input.size[0], &input.size[0] + axis);
                out_size.push_back(input.total(axis));
                Mat output = input.reshape(1, out_size);
1219
                addConstant(layerParams.name, output, constBlobs, outShapes);
1220 1221 1222
                continue;
            }
        }
1223 1224 1225 1226
        else if (layer_type == "Unsqueeze")
        {
            CV_Assert(node_proto.input_size() == 1);
            DictValue axes = layerParams.get("axes");
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            if (constBlobs.find(node_proto.input(0)) != constBlobs.end())
            {
                // Constant input.
                Mat input = getBlob(node_proto, constBlobs, 0);

                std::vector<int> dims;
                for (int j = 0; j < input.dims; j++) {
                    dims.push_back(input.size[j]);
                }
                CV_Assert(axes.getIntValue(axes.size()-1) <= dims.size());
                for (int j = 0; j < axes.size(); j++) {
                    dims.insert(dims.begin() + axes.getIntValue(j), 1);
                }

                Mat out = input.reshape(0, dims);
1242
                addConstant(layerParams.name, out, constBlobs, outShapes);
1243
                continue;
1244 1245
            }

1246 1247 1248 1249
            // Variable input.
            if (axes.size() != 1)
                CV_Error(Error::StsNotImplemented, "Multidimensional unsqueeze");

1250 1251 1252 1253 1254
            MatShape inpShape = outShapes[node_proto.input(0)];
            int axis = axes.getIntValue(0);
            CV_Assert(0 <= axis && axis <= inpShape.size());
            std::vector<int> outShape = inpShape;
            outShape.insert(outShape.begin() + axis, 1);
1255
            layerParams.type = "Reshape";
1256
            layerParams.set("dim", DictValue::arrayInt(&outShape[0], outShape.size()));
1257
        }
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        else if (layer_type == "Expand")
        {
            CV_CheckEQ(node_proto.input_size(), 2, "");
            CV_Assert(constBlobs.find(node_proto.input(1)) != constBlobs.end());
            Mat newShapeMat = getBlob(node_proto, constBlobs, 1);
            MatShape targetShape(newShapeMat.ptr<int>(), newShapeMat.ptr<int>() + newShapeMat.total());

1265 1266 1267 1268 1269 1270 1271 1272 1273 1274 1275 1276 1277 1278 1279 1280 1281 1282 1283 1284 1285 1286 1287 1288 1289 1290 1291 1292 1293 1294 1295 1296 1297 1298 1299 1300 1301 1302 1303
            MatShape inpShape;
            bool haveVariables = constBlobs.find(node_proto.input(0)) == constBlobs.end();
            if (haveVariables)
            {
                shapeIt = outShapes.find(node_proto.input(0));
                CV_Assert(shapeIt != outShapes.end());
                inpShape = shapeIt->second;
            }
            else
            {
                inpShape = shape(getBlob(node_proto, constBlobs, 0));
            }

            String srcName = node_proto.input(0);
            // Unsqueeze and repeat along new axis
            if (targetShape.size() == inpShape.size() + 1)
            {
                for (int i = 0; i < targetShape.size(); i++)
                {
                    if (targetShape[i] == -1 && i < inpShape.size())
                        targetShape[i] = inpShape[i];
                    else if (i < inpShape.size() && targetShape[i] != inpShape[i])
                        inpShape.insert(inpShape.begin() + i, 1);
                }
                if (haveVariables)
                {
                    LayerParams reshapeLp;
                    reshapeLp.name = layerParams.name + "/reshape";
                    reshapeLp.type = "Reshape";
                    CV_Assert(layer_id.find(reshapeLp.name) == layer_id.end());
                    reshapeLp.set("dim", DictValue::arrayInt(&inpShape[0], inpShape.size()));

                    opencv_onnx::NodeProto proto;
                    proto.add_input(node_proto.input(0));
                    proto.add_output(reshapeLp.name);
                    addLayer(dstNet, reshapeLp, proto, layer_id, outShapes);
                    srcName = reshapeLp.name;
                }
            }
1304 1305 1306 1307 1308 1309 1310 1311 1312 1313 1314 1315 1316 1317
            CV_CheckEQ(inpShape.size(), targetShape.size(), "Unsupported Expand op with different dims");

            std::vector<int> broadcast_axes;
            for (int i = 0; i < targetShape.size(); i++)
            {
                if (targetShape[i] != inpShape[i])
                {
                    if (inpShape[i] == 1)
                        broadcast_axes.push_back(i);
                    else
                        CV_Error(Error::StsError, format("Could not be broadcast by axis: %d", i));
                }
            }

1318 1319 1320 1321 1322 1323 1324 1325 1326 1327 1328 1329 1330
            if (!haveVariables)
            {
                if (broadcast_axes.size() != 1)
                    CV_Error(Error::StsNotImplemented, "Expand op doesn't support multiple axes for constant input");

                Mat input = getBlob(node_proto, constBlobs, 0);
                input = input.reshape(0, total(inpShape, 0, broadcast_axes[0]));
                Mat output = cv::repeat(input, 1, targetShape[broadcast_axes[0]]);
                output = output.reshape(0, targetShape);
                addConstant(layerParams.name, output, constBlobs, outShapes);
                continue;
            }

1331 1332 1333 1334 1335 1336 1337 1338 1339 1340 1341 1342 1343 1344 1345 1346 1347 1348 1349 1350 1351 1352 1353 1354 1355 1356 1357 1358 1359 1360 1361 1362 1363 1364
            if (broadcast_axes.size() == 2 &&
                broadcast_axes[0] == broadcast_axes[1] - 1 && broadcast_axes[1] == inpShape.size() - 1)
            {
                LayerParams constParams;
                constParams.name = layerParams.name + "/const";
                CV_Assert(layer_id.find(constParams.name) == layer_id.end());
                constParams.type = "Const";

                Mat inp = Mat::ones(newShapeMat.total(), newShapeMat.ptr<int>(), CV_32F);
                constParams.blobs.push_back(inp);

                opencv_onnx::NodeProto proto;
                proto.add_output(constParams.name);
                addLayer(dstNet, constParams, proto, layer_id, outShapes);

                layerParams.type = "Scale";
                layerParams.set("bias_term", false);
                node_proto.set_input(0, constParams.name);
                node_proto.set_input(1, shapeIt->first);
            }
            else if (broadcast_axes.size() == 1 && broadcast_axes[0] <= 1)
            {
                String base_name = layerParams.name + "/copy_";
                std::vector<std::string> input_names;
                for (int j = 0; j < targetShape[broadcast_axes[0]]; j++)
                {
                    std::ostringstream ss;
                    ss << j;
                    LayerParams copyLP;
                    copyLP.name = base_name + ss.str();
                    copyLP.type = "Identity";
                    CV_Assert(layer_id.find(copyLP.name) == layer_id.end());
                    input_names.push_back(copyLP.name);

1365
                    node_proto.set_input(0, srcName);
1366 1367 1368 1369 1370 1371 1372 1373 1374 1375
                    node_proto.set_output(0, copyLP.name);
                    addLayer(dstNet, copyLP, node_proto, layer_id, outShapes);
                }
                node_proto.clear_input();
                for (int i = 0; i < input_names.size(); i++)
                {
                    node_proto.add_input(input_names[i]);
                }
                layerParams.set("axis", broadcast_axes[0]);
                layerParams.type = "Concat";
1376
                node_proto.set_output(0, layerParams.name);
1377 1378 1379 1380
            }
            else
                CV_Error(Error::StsNotImplemented, "Unsupported Expand op");
        }
1381 1382 1383 1384 1385 1386 1387 1388
        else if (layer_type == "Reshape")
        {
            CV_Assert(node_proto.input_size() == 2 || layerParams.has("shape"));

            if (node_proto.input_size() == 2) {
                Mat blob = getBlob(node_proto, constBlobs, 1);
                CV_Assert(blob.type() == CV_32SC1);

1389 1390 1391
                layerParams.set("dim", DictValue::arrayInt<int*>(
                            blob.ptr<int>(), blob.total() ));

1392
                if (layer_id.find(node_proto.input(0)) == layer_id.end()) {
1393 1394
                    std::vector<Mat> inputs(1, getBlob(node_proto, constBlobs, 0)), outputs;
                    runLayer(layerParams, inputs, outputs);
1395
                    addConstant(layerParams.name, outputs[0], constBlobs, outShapes);
1396 1397 1398 1399 1400 1401 1402 1403 1404 1405 1406 1407 1408
                    continue;
                }
            }
            else {
                DictValue shape = layerParams.get("shape");
                std::vector<int> dim;
                for (int j = 0; j < shape.size(); j++) {
                    dim.push_back(shape.getIntValue(j));
                }

                if (layer_id.find(node_proto.input(0)) == layer_id.end()) {
                    Mat input = getBlob(node_proto, constBlobs, 0);
                    Mat out = input.reshape(0, dim);
1409
                    addConstant(layerParams.name, out, constBlobs, outShapes);
1410 1411 1412 1413 1414
                    continue;
                }
                replaceLayerParam(layerParams, "shape", "dim");
            }
        }
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        else if (layer_type == "Pad")
        {
            layerParams.type = "Padding";
1418 1419 1420 1421 1422 1423 1424 1425 1426 1427 1428 1429 1430 1431 1432
            replaceLayerParam(layerParams, "mode", "type");
            if (node_proto.input_size() == 3 || node_proto.input_size() == 2)
            {
                // Paddings are in order begin0, begin1, .. beginN, end0, end1, ..., endN.
                // We need to shuffle it to begin0, end0, begin1, end1, ...
                Mat paddings = getBlob(node_proto, constBlobs, 1).reshape(1, 2);
                paddings = paddings.t();
                layerParams.set("paddings", DictValue::arrayInt(paddings.ptr<int>(), paddings.total()));

                if (node_proto.input_size() == 3)
                {
                    Mat value = getBlob(node_proto, constBlobs, 2);
                    layerParams.set("value", value.at<float>(0));
                }
            }
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        }
1434 1435 1436 1437 1438 1439 1440 1441 1442 1443 1444 1445
        else if (layer_type == "Shape")
        {
            CV_Assert(node_proto.input_size() == 1);
            shapeIt = outShapes.find(node_proto.input(0));
            CV_Assert(shapeIt != outShapes.end());
            MatShape inpShape = shapeIt->second;

            Mat shapeMat(inpShape.size(), 1, CV_32S);
            for (int j = 0; j < inpShape.size(); ++j)
                shapeMat.at<int>(j) = inpShape[j];
            shapeMat.dims = 1;

1446
            addConstant(layerParams.name, shapeMat, constBlobs, outShapes);
1447 1448
            continue;
        }
1449 1450 1451 1452 1453 1454 1455 1456 1457 1458 1459 1460 1461 1462 1463 1464 1465 1466
        else if (layer_type == "Cast")
        {
            if (constBlobs.find(node_proto.input(0)) != constBlobs.end())
            {
                Mat blob = getBlob(node_proto, constBlobs, 0);
                int type;
                switch (layerParams.get<int>("to"))
                {
                    case opencv_onnx::TensorProto_DataType_FLOAT:   type = CV_32F; break;
                    case opencv_onnx::TensorProto_DataType_UINT8:   type = CV_8U; break;
                    case opencv_onnx::TensorProto_DataType_UINT16:  type = CV_16U; break;
                    case opencv_onnx::TensorProto_DataType_FLOAT16: type = CV_16S; break;
                    case opencv_onnx::TensorProto_DataType_INT8:
                    case opencv_onnx::TensorProto_DataType_INT16:
                    case opencv_onnx::TensorProto_DataType_INT32:
                    case opencv_onnx::TensorProto_DataType_INT64:   type = CV_32S; break;
                    default: type = blob.type();
                }
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                Mat dst;
                blob.convertTo(dst, type);
                dst.dims = blob.dims;
                addConstant(layerParams.name, dst, constBlobs, outShapes);
1471 1472 1473 1474 1475
                continue;
            }
            else
                layerParams.type = "Identity";
        }
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        else if (layer_type == "ConstantOfShape" || layer_type == "ConstantFill")
        {
1478
            int depth = CV_32F;
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            float fill_value;
            if (!layerParams.blobs.empty())
            {
                CV_Assert(!layerParams.has("value"));
1483 1484 1485 1486
                depth = layerParams.blobs[0].depth();
                Mat floats;
                layerParams.blobs[0].convertTo(floats, CV_32F);
                fill_value = floats.at<float>(0, 0);
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            }
            else
                fill_value = layerParams.get("value", 0);

1491 1492 1493
            MatShape inpShape = getBlob(node_proto, constBlobs, 0);
            for (int i = 0; i < inpShape.size(); i++)
                CV_CheckGT(inpShape[i], 0, "");
1494 1495
            Mat tensor(inpShape.size(), &inpShape[0], depth, Scalar(fill_value));
            addConstant(layerParams.name, tensor, constBlobs, outShapes);
1496 1497
            continue;
        }
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        else if (layer_type == "Gather")
        {
            CV_Assert(node_proto.input_size() == 2);
            Mat indexMat = getBlob(node_proto, constBlobs, 1);
            CV_Assert_N(indexMat.type() == CV_32S, indexMat.total() == 1);
            int index = indexMat.at<int>(0);
1504
            int axis = layerParams.get<int>("axis", 0);
1505

1506
            if ((constBlobs.find(node_proto.input(0)) != constBlobs.end()))
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            {
1508 1509
                Mat input = getBlob(node_proto, constBlobs, 0);
                Mat out;
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                std::vector<cv::Range> ranges(input.dims, Range::all());
                ranges[axis] = Range(index, index + 1);
1512

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                out = input(ranges);
1514 1515 1516 1517 1518
                MatShape outShape = shape(out);
                if (outShape.size() > 1)
                {
                    outShape.erase(outShape.begin() + axis);
                    out.reshape(0, outShape);
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                } else {
                    out.dims = 1;
1521 1522 1523
                }
                addConstant(layerParams.name, out, constBlobs, outShapes);
                continue;
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            }
            else
            {
1527 1528 1529 1530 1531 1532 1533 1534 1535 1536 1537 1538 1539 1540 1541 1542 1543 1544 1545 1546 1547 1548 1549 1550 1551 1552
                shapeIt = outShapes.find(node_proto.input(0));
                CV_Assert(shapeIt != outShapes.end());
                MatShape inpShape = shapeIt->second;

                LayerParams sliceLp;
                sliceLp.type = "Slice";
                sliceLp.name = inpShape.size() > 1 ? layerParams.name + "/slice" : layerParams.name;
                std::vector<int> begin(inpShape.size(), 0);
                std::vector<int> end(inpShape.size(), -1);
                begin[axis] = index;
                end[axis] = index + 1;

                cv::dnn::DictValue paramBegin = cv::dnn::DictValue::arrayInt(begin.data(), begin.size());
                cv::dnn::DictValue paramEnd = cv::dnn::DictValue::arrayInt(end.data(), end.size());
                sliceLp.set("begin", paramBegin);
                sliceLp.set("end", paramEnd);

                if (inpShape.size() > 1)
                {
                    opencv_onnx::NodeProto proto;
                    proto.add_input(node_proto.input(0));
                    proto.add_output(sliceLp.name);
                    addLayer(dstNet, sliceLp, proto, layer_id, outShapes);

                    inpShape.erase(inpShape.begin() + axis);
                    layerParams.type = "Reshape";
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                    layerParams.set("axis", 0);
1554 1555 1556 1557 1558 1559 1560
                    layerParams.set("dim", DictValue::arrayInt(&inpShape[0], inpShape.size()));
                    node_proto.set_input(0, sliceLp.name);
                }
                else
                {
                    layerParams = sliceLp;
                }
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            }
1562 1563 1564 1565 1566 1567 1568 1569 1570 1571 1572 1573 1574 1575 1576 1577 1578 1579 1580 1581
        }
        else if (layer_type == "Concat")
        {
            bool hasVariableInps = false;
            for (int i = 0; i < node_proto.input_size(); ++i)
            {
                if (layer_id.find(node_proto.input(i)) != layer_id.end())
                {
                    hasVariableInps = true;
                    break;
                }
            }

            if (!hasVariableInps)
            {
                std::vector<Mat> inputs(node_proto.input_size()), concatenated;
                for (size_t i = 0; i < inputs.size(); ++i)
                {
                    inputs[i] = getBlob(node_proto, constBlobs, i);
                }
1582
                runLayer(layerParams, inputs, concatenated);
1583 1584

                CV_Assert(concatenated.size() == 1);
1585
                addConstant(layerParams.name, concatenated[0], constBlobs, outShapes);
1586 1587 1588
                continue;
            }
        }
1589 1590 1591 1592 1593 1594
        else if (layer_type == "Resize")
        {
            for (int i = 1; i < node_proto.input_size(); i++)
                CV_Assert(layer_id.find(node_proto.input(i)) == layer_id.end());

            String interp_mode = layerParams.get<String>("coordinate_transformation_mode");
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            CV_Assert_N(interp_mode != "tf_crop_and_resize", interp_mode != "tf_half_pixel_for_nn");
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            layerParams.set("align_corners", interp_mode == "align_corners");
            Mat shapes = getBlob(node_proto, constBlobs, node_proto.input_size() - 1);
            CV_CheckEQ(shapes.size[0], 4, "");
            CV_CheckEQ(shapes.size[1], 1, "");
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            CV_CheckDepth(shapes.depth(), shapes.depth() == CV_32S || shapes.depth() == CV_32F, "");
            if (shapes.depth() == CV_32F)
                shapes.convertTo(shapes, CV_32S);
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            int height = shapes.at<int>(2);
            int width  = shapes.at<int>(3);
            if (node_proto.input_size() == 3)
            {
                shapeIt = outShapes.find(node_proto.input(0));
                CV_Assert(shapeIt != outShapes.end());
                MatShape scales = shapeIt->second;
                height *= scales[2];
                width  *= scales[3];
            }
            layerParams.set("width", width);
            layerParams.set("height", height);

            if (layerParams.get<String>("mode") == "linear") {
                layerParams.set("mode", interp_mode == "pytorch_half_pixel" ?
                                        "opencv_linear" : "bilinear");
            }
            replaceLayerParam(layerParams, "mode", "interpolation");
        }
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        else if (layer_type == "Upsample")
        {
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            //fused from Resize Subgraph
            if (layerParams.has("coordinate_transformation_mode"))
            {
                String interp_mode = layerParams.get<String>("coordinate_transformation_mode");
                CV_Assert_N(interp_mode != "tf_crop_and_resize", interp_mode != "tf_half_pixel_for_nn");

                layerParams.set("align_corners", interp_mode == "align_corners");
                if (layerParams.get<String>("mode") == "linear")
                {
                    layerParams.set("mode", interp_mode == "pytorch_half_pixel" ?
                                            "opencv_linear" : "bilinear");
                }
            }
            if (layerParams.get<String>("mode") == "linear" && framework_name == "pytorch")
                layerParams.set("mode", "opencv_linear");

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            layerParams.type = "Resize";
            if (layerParams.has("scales"))
            {
                // Pytorch layer
                DictValue scales = layerParams.get("scales");
                CV_Assert(scales.size() == 4);
                layerParams.set("zoom_factor_y", scales.getIntValue(2));
                layerParams.set("zoom_factor_x", scales.getIntValue(3));
            }
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            else if (layerParams.has("height_scale") && layerParams.has("width_scale"))
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            {
                // Caffe2 layer
                replaceLayerParam(layerParams, "height_scale", "zoom_factor_y");
                replaceLayerParam(layerParams, "width_scale", "zoom_factor_x");
            }
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            else
            {
                // scales as input
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                Mat scales = getBlob(node_proto, constBlobs, 1);
                CV_Assert(scales.total() == 4);
                layerParams.set("zoom_factor_y", scales.at<float>(2));
                layerParams.set("zoom_factor_x", scales.at<float>(3));
            }
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            replaceLayerParam(layerParams, "mode", "interpolation");
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        }
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        else if (layer_type == "SoftMax" || layer_type == "LogSoftmax")
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        {
            layerParams.type = "Softmax";
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            layerParams.set("log_softmax", layer_type == "LogSoftmax");
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        }
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        else if (layer_type == "DetectionOutput")
        {
            CV_CheckEQ(node_proto.input_size(), 3, "");
            if (constBlobs.find(node_proto.input(2)) != constBlobs.end())
            {
                Mat priors = getBlob(node_proto, constBlobs, 2);

                LayerParams constParams;
                constParams.name = layerParams.name + "/priors";
                constParams.type = "Const";
                constParams.blobs.push_back(priors);

                opencv_onnx::NodeProto priorsProto;
                priorsProto.add_output(constParams.name);
                addLayer(dstNet, constParams, priorsProto, layer_id, outShapes);

                node_proto.set_input(2, constParams.name);
            }
        }
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        else
        {
            for (int j = 0; j < node_proto.input_size(); j++) {
                if (layer_id.find(node_proto.input(j)) == layer_id.end())
                    layerParams.blobs.push_back(getBlob(node_proto, constBlobs, j));
            }
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        }
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        addLayer(dstNet, layerParams, node_proto, layer_id, outShapes);
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    }
}
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Net readNetFromONNX(const String& onnxFile)
{
    ONNXImporter onnxImporter(onnxFile.c_str());
    Net net;
    onnxImporter.populateNet(net);
    return net;
}

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Net readNetFromONNX(const char* buffer, size_t sizeBuffer)
{
    ONNXImporter onnxImporter(buffer, sizeBuffer);
    Net net;
    onnxImporter.populateNet(net);
    return net;
}

Net readNetFromONNX(const std::vector<uchar>& buffer)
{
    return readNetFromONNX(reinterpret_cast<const char*>(buffer.data()), buffer.size());
}

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Mat readTensorFromONNX(const String& path)
{
    opencv_onnx::TensorProto tensor_proto = opencv_onnx::TensorProto();
    std::fstream input(path.c_str(), std::ios::in | std::ios::binary);
    if (!tensor_proto.ParseFromIstream(&input)) {
        CV_Error(Error::StsUnsupportedFormat, "Failed to parse data");
    }
    Mat mat = getMatFromTensor(tensor_proto);
    releaseONNXTensor(tensor_proto);
    return mat;
}

CV__DNN_EXPERIMENTAL_NS_END
}} // namespace

#endif