onnx_importer.cpp 63.5 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();
        }
        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" || layer_type == "ReduceMean")
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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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            layerParams.set("pool", layer_type == "GlobalMaxPool"? "MAX" : "AVE");
            layerParams.set("global_pooling", layer_type == "GlobalAveragePool" || layer_type == "GlobalMaxPool");

            if (layer_type == "ReduceMean")
            {
                if (layerParams.get<int>("keepdims") == 0 || !layerParams.has("axes"))
                    CV_Error(Error::StsNotImplemented, "Unsupported mode of ReduceMean operation.");

                MatShape inpShape = outShapes[node_proto.input(0)];
                DictValue axes = layerParams.get("axes");
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                if (inpShape.size() == 3 && axes.size() <= 2)
                {
                    int axis = axes.get<int>(0);
                    CV_CheckNE(axis, 0, "");
                    outShapes[layerParams.name] = inpShape;
                    outShapes[layerParams.name][axis] = 1;

                    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());
                    avgLp.set("pool", "ave");
                    if (axes.size() == 2)
                    {
                        CV_CheckEQ(axes.get<int>(0), 1, "Unsupported ReduceMean mode");
                        CV_CheckEQ(axes.get<int>(1), 2, "Unsupported ReduceMean mode");
                        avgLp.set("global_pooling", true);
                        outShapes[layerParams.name][axes.get<int>(1)] = 1;
                    }
                    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);

                    layerParams.type = "Flatten";
                    layerParams.set("axis", 0);
                    layerParams.set("end_axis", 1);

                    node_proto.set_input(0, avgLp.name);
                    node_proto.set_output(0, layerParams.name);
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                }
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                else
                {
                    if (inpShape.size() != 4 && inpShape.size() != 5)
                    CV_Error(Error::StsNotImplemented, "Unsupported input shape of reduce_mean 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++) {
                        int axis = axes.get<int>(i);
                        CV_Assert_N(axis >= 2 + i, axis < inpShape.size());
                        kernel_size[axis - 2] = inpShape[axis];
                    }
                    layerParams.set("kernel_size", DictValue::arrayInt(&kernel_size[0], kernel_size.size()));
                }
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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";
                        constParams.blobs.push_back(blob);
                        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);
                        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 == "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";
        }
859 860 861 862 863 864 865 866 867 868 869 870 871 872 873 874 875 876 877 878 879 880 881 882 883 884 885 886 887 888 889 890 891 892 893 894 895 896 897 898 899 900 901 902 903 904 905 906 907 908 909 910 911 912 913
        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);
            }

            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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            if (constBlobs.find(node_proto.input(1)) != constBlobs.end())
            {
                Mat blob = getBlob(node_proto, constBlobs, 1);
                layerParams.blobs.push_back(blob.t());
                layerParams.set("num_output", layerParams.blobs[0].size[0]);
            }
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        }
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        else if (layer_type == "Mul" || layer_type == "Div")
923 924
        {
            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) {
941 942
                    float coeff = isDiv ? 1.0 / blob.at<float>(0) : blob.at<float>(0);
                    layerParams.set("scale", coeff);
943 944 945
                    layerParams.type = "Power";
                }
                else {
946 947
                    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)])
            {
954
                layerParams.type = "Eltwise";
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                layerParams.set("operation", isDiv ? "div" : "prod");
            }
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            else
            {
                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";
            }
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            if (!haveVariables)
            {
                Mat inp0 = getBlob(node_proto, constBlobs, 0);
                Mat inp1 = getBlob(node_proto, constBlobs, 1);
                if (inp0.size != inp1.size)
                    CV_Error(Error::StsNotImplemented, "Constant multiply with different shapes");

                Mat out;
                if (isDiv)
                    divide(inp0, inp1, out);
                else
                    multiply(inp0, inp1, out);

                out = out.reshape(1, inp0.dims, inp0.size);
                out.dims = inp0.dims;  // to workaround dims == 1
997
                addConstant(layerParams.name, out, constBlobs, outShapes);
998
                continue;
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            }
        }
        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++) {
                layerParams.blobs.push_back(getBlob(node_proto, constBlobs, j));
            }
            layerParams.set("num_output", layerParams.blobs[0].size[0]);
            layerParams.set("bias_term", node_proto.input_size() == 3);
        }
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        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));
1019
            layerParams.set("bias_term", node_proto.input_size() == 3);
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1021 1022 1023 1024
            if (!layerParams.has("kernel_size"))
                CV_Error(Error::StsNotImplemented,
                         "Required attribute 'kernel_size' is not present.");

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            if (layerParams.has("output_shape"))
            {
                const DictValue& outShape = layerParams.get("output_shape");
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                DictValue strides = layerParams.get("stride");
                DictValue kernel = layerParams.get("kernel_size");
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1031 1032 1033
                String padMode;
                std::vector<int> adjust_pads;
                if (layerParams.has("pad_mode"))
1034
                {
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                    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()));
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                }
            }
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            else if (layerParams.has("output_padding"))
            {
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                replaceLayerParam(layerParams, "output_padding", "adj");
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            }
1053
        }
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        else if (layer_type == "Transpose")
        {
            layerParams.type = "Permute";
            replaceLayerParam(layerParams, "perm", "order");
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            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);
1065
                addConstant(layerParams.name, transposed[0], constBlobs, outShapes);
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                continue;
            }
1068
        }
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        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";
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            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
1101
                addConstant(layerParams.name, out, constBlobs, outShapes);
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                continue;
            }
1104
        }
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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);
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                addConstant(layerParams.name, output, constBlobs, outShapes);
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                continue;
            }
        }
1120 1121 1122 1123
        else if (layer_type == "Unsqueeze")
        {
            CV_Assert(node_proto.input_size() == 1);
            DictValue axes = layerParams.get("axes");
1124 1125 1126 1127 1128 1129 1130 1131 1132 1133 1134 1135 1136 1137 1138
            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);
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                addConstant(layerParams.name, out, constBlobs, outShapes);
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                continue;
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            }

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

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            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);
1152
            layerParams.type = "Reshape";
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            layerParams.set("dim", DictValue::arrayInt(&outShape[0], outShape.size()));
1154
        }
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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());

            shapeIt = outShapes.find(node_proto.input(0));
            CV_Assert(shapeIt != outShapes.end());
            MatShape inpShape = shapeIt->second;
            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));
                }
            }

            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);

                    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";
            }
            else
                CV_Error(Error::StsNotImplemented, "Unsupported Expand op");
        }
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        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);

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

1238
                if (layer_id.find(node_proto.input(0)) == layer_id.end()) {
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                    std::vector<Mat> inputs(1, getBlob(node_proto, constBlobs, 0)), outputs;
                    runLayer(layerParams, inputs, outputs);
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                    addConstant(layerParams.name, outputs[0], constBlobs, outShapes);
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                    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);
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                    addConstant(layerParams.name, out, constBlobs, outShapes);
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                    continue;
                }
                replaceLayerParam(layerParams, "shape", "dim");
            }
        }
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        else if (layer_type == "Pad")
        {
            layerParams.type = "Padding";
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            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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        }
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        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;

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            addConstant(layerParams.name, shapeMat, constBlobs, outShapes);
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            continue;
        }
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        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();
                }
                blob.convertTo(blob, type);
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                addConstant(layerParams.name, blob, constBlobs, outShapes);
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                continue;
            }
            else
                layerParams.type = "Identity";
        }
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        else if (layer_type == "ConstantOfShape" || layer_type == "ConstantFill")
        {
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            int depth = CV_32F;
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            float fill_value;
            if (!layerParams.blobs.empty())
            {
                CV_Assert(!layerParams.has("value"));
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                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);

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            MatShape inpShape = getBlob(node_proto, constBlobs, 0);
            for (int i = 0; i < inpShape.size(); i++)
                CV_CheckGT(inpShape[i], 0, "");
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            Mat tensor(inpShape.size(), &inpShape[0], depth, Scalar(fill_value));
            addConstant(layerParams.name, tensor, constBlobs, outShapes);
1340 1341
            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);
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            int axis = layerParams.get<int>("axis", 0);
1349

1350
            if ((constBlobs.find(node_proto.input(0)) != constBlobs.end()))
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            {
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                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);
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                out = input(ranges);
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                MatShape outShape = shape(out);
                if (outShape.size() > 1)
                {
                    outShape.erase(outShape.begin() + axis);
                    out.reshape(0, outShape);
                }
                addConstant(layerParams.name, out, constBlobs, outShapes);
                continue;
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            }
            else
            {
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                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";
                    layerParams.set("dim", DictValue::arrayInt(&inpShape[0], inpShape.size()));
                    node_proto.set_input(0, sliceLp.name);
                }
                else
                {
                    layerParams = sliceLp;
                }
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            }
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        }
        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);
                }
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                runLayer(layerParams, inputs, concatenated);
1424 1425

                CV_Assert(concatenated.size() == 1);
1426
                addConstant(layerParams.name, concatenated[0], constBlobs, outShapes);
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                continue;
            }
        }
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        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");
1436
            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, "");
            CV_CheckTypeEQ(shapes.depth(), CV_32S, "");
            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));
            }
1503
            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