opset.py 12.3 KB
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# Copyright (c) 2019  PaddlePaddle Authors. All Rights Reserved.
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#
# Licensed under the Apache License, Version 2.0 (the "License"
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
#     http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.

import math
import sys
import x2paddle
import os
import numpy as np
import paddle.fluid.core as core
import paddle.fluid as fluid
import onnx
from onnx import helper, onnx_pb
from x2paddle.op_mapper.paddle2onnx.opset10.opset import OpSet10


class OpSet11(OpSet10):
    def __init__(self):
        super(OpSet11, self).__init__()

    def relu6(self, op, block):
        min_name = self.get_name(op.type, 'min')
        max_name = self.get_name(op.type, 'max')
        min_node = self.make_constant_node(min_name, onnx_pb.TensorProto.FLOAT,
                                           0)
        max_node = self.make_constant_node(max_name, onnx_pb.TensorProto.FLOAT,
                                           op.attr('threshold'))
        node = helper.make_node(
            'Clip',
            inputs=[op.input('X')[0], min_name, max_name],
            outputs=op.output('Out'), )
        return [min_node, max_node, node]

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    def pad2d(self, op, block):
        x_shape = block.var(op.input('X')[0]).shape
        paddings = op.attr('paddings')
        onnx_pads = []
        #TODO support pads is Variable
        if op.attr('data_format') == 'NCHW':
            pads = [
                0, 0, paddings[0], paddings[2], 0, 0, paddings[1], paddings[3]
            ]
        else:
            pads = [
                0, paddings[0], paddings[2], 0, 0, paddings[1], paddings[3], 0
            ]
        pads_name = self.get_name(op.type, 'pads')
        pads_node = self.make_constant_node(pads_name,
                                            onnx_pb.TensorProto.INT64, pads)
        constant_value_name = self.get_name(op.type, 'constant_value')
        constant_value_node = self.make_constant_node(constant_value_name,
                                                      onnx_pb.TensorProto.FLOAT,
                                                      op.attr('pad_value'))
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        node = helper.make_node(
            'Pad',
            inputs=op.input('X') + [pads_name, constant_value_name],
            outputs=op.output('Out'),
            mode=op.attr('mode'))
        return [pads_node, constant_value_node, node]
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    def clip(self, op, block):
        min_name = self.get_name(op.type, 'min')
        max_name = self.get_name(op.type, 'max')
        min_node = self.make_constant_node(min_name, onnx_pb.TensorProto.FLOAT,
                                           op.attr('min'))
        max_node = self.make_constant_node(max_name, onnx_pb.TensorProto.FLOAT,
                                           op.attr('max'))
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        node = helper.make_node(
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            'Clip',
            inputs=[op.input('X')[0], min_name, max_name],
            outputs=op.output('Out'))
        return [min_node, max_node, node]
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    def bilinear_interp(self, op, block):
        input_names = op.input_names
        coordinate_transformation_mode = ''
        align_corners = op.attr('align_corners')
        align_mode = op.attr('align_mode')
        if align_corners:
            coordinate_transformation_mode = 'align_corners'
        elif align_mode == 1:
            coordinate_transformation_mode = 'asymmetric'
        else:
            coordinate_transformation_mode = 'half_pixel'

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        roi_name = self.get_name(op.type, 'roi')
        roi_node = self.make_constant_node(roi_name, onnx_pb.TensorProto.FLOAT,
                                           [1, 1, 1, 1, 1, 1, 1, 1])
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        if ('OutSize' in input_names and len(op.input('OutSize')) > 0) or (
                'SizeTensor' in input_names and
                len(op.input('SizeTensor')) > 0):
            node_list = list()
            empty_name = self.get_name(op.type, 'empty')
            empty_tensor = helper.make_tensor(
                empty_name,
                onnx_pb.TensorProto.FLOAT, (0, ),
                np.array([]).astype('float32'),
                raw=False)
            empty_node = helper.make_node(
                'Constant', [], outputs=[empty_name], value=empty_tensor)
            shape_name0 = self.get_name(op.type, 'shape')
            shape_node0 = helper.make_node(
                'Shape', inputs=op.input('X'), outputs=[shape_name0])
            starts_name = self.get_name(op.type, 'slice.starts')
            starts_node = self.make_constant_node(
                starts_name, onnx_pb.TensorProto.INT64, [0])
            ends_name = self.get_name(op.type, 'slice.ends')
            ends_node = self.make_constant_node(ends_name,
                                                onnx_pb.TensorProto.INT64, [2])
            shape_name1 = self.get_name(op.type, 'shape')
            shape_node1 = helper.make_node(
                'Slice',
                inputs=[shape_name0, starts_name, ends_name],
                outputs=[shape_name1])
            node_list.extend([
                roi_node, empty_node, shape_node0, starts_node, ends_node,
                shape_node1
            ])
            if 'OutSize' in input_names and len(op.input('OutSize')) > 0:
                cast_shape_name = self.get_name(op.type, "shape.cast")
                cast_shape_node = helper.make_node(
                    'Cast',
                    inputs=op.input('OutSize'),
                    outputs=[cast_shape_name],
                    to=onnx_pb.TensorProto.INT64)
                node_list.append(cast_shape_node)
            else:
                concat_shape_name = self.get_name(op.type, "shape.concat")
                concat_shape_node = helper.make_node(
                    "Concat",
                    inputs=op.input('SizeTensor'),
                    outputs=[concat_shape_name],
                    axis=0)
                cast_shape_name = self.get_name(op.type, "shape.cast")
                cast_shape_node = helper.make_node(
                    'Cast',
                    inputs=[concat_shape_name],
                    outputs=[cast_shape_name],
                    to=onnx_pb.TensorProto.INT64)
                node_list.extend([concat_shape_node, cast_shape_node])
            shape_name3 = self.get_name(op.type, "shape.concat")
            shape_node3 = helper.make_node(
                'Concat',
                inputs=[shape_name1, cast_shape_name],
                outputs=[shape_name3],
                axis=0)
            result_node = helper.make_node(
                'Resize',
                inputs=[op.input('X')[0], roi_name, empty_name, shape_name3],
                outputs=op.output('Out'),
                mode='linear',
                coordinate_transformation_mode=coordinate_transformation_mode)
            node_list.extend([shape_node3, result_node])
            return node_list
        elif 'Scale' in input_names and len(op.input('Scale')) > 0:
            node = helper.make_node(
                'Resize',
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                inputs=[op.input('X')[0], roi_name, op.input('Scale')[0]],
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                outputs=op.output('Out'),
                mode='linear',
                coordinate_transformation_mode=coordinate_transformation_mode)
        else:
            out_shape = [op.attr('out_h'), op.attr('out_w')]
            scale = op.attr('scale')
            if out_shape.count(-1) > 0:
                scale_name = self.get_name(op.type, 'scale')
                scale_node = self.make_constant_node(scale_name,
                                                     onnx_pb.TensorProto.FLOAT,
                                                     [1, 1, scale, scale])
                node = helper.make_node(
                    'Resize',
                    inputs=[op.input('X')[0], roi_name, scale_name],
                    outputs=op.output('Out'),
                    mode='nearest',
                    coordinate_transformation_mode=coordinate_transformation_mode
                )
                return [scale_node, roi_node, node]
            else:
                raise Exception("Unexpected situation happend")
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        return [roi_node, node]
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    def nearest_interp(self, op, block):
        input_names = op.input_names
        coordinate_transformation_mode = ''
        align_corners = op.attr('align_corners')
        if align_corners:
            coordinate_transformation_mode = 'align_corners'
        else:
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            coordinate_transformation_mode = 'half_pixel'
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        roi_name = self.get_name(op.type, 'roi')
        roi_node = self.make_constant_node(roi_name, onnx_pb.TensorProto.FLOAT,
                                           [1, 1, 1, 1, 1, 1, 1, 1])
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        if 'OutSize' in input_names and len(op.input('OutSize')) > 0:
            node = helper.make_node(
                'Resize',
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                inputs=[op.input('X')[0], roi_name, op.input('OutSize')[0]],
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                outputs=op.output('Out'),
                mode='nearest',
                coordinate_transformation_mode=coordinate_transformation_mode)
        elif 'Scale' in input_names and len(op.input('Scale')) > 0:
            node = helper.make_node(
                'Resize',
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                inputs=[op.input('X')[0], roi_name, op.input('Scale')[0]],
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                outputs=op.output('Out'),
                mode='nearest',
                coordinate_transformation_mode=coordinate_transformation_mode)
        else:
            out_shape = [op.attr('out_h'), op.attr('out_w')]
            scale = op.attr('scale')
            if out_shape.count(-1) > 0:
                scale_name = self.get_name(op.type, 'scale')
                scale_node = self.make_constant_node(scale_name,
                                                     onnx_pb.TensorProto.FLOAT,
                                                     [1, 1, scale, scale])
                node = helper.make_node(
                    'Resize',
                    inputs=[op.input('X')[0], roi_name, scale_name],
                    outputs=op.output('Out'),
                    mode='nearest',
                    coordinate_transformation_mode=coordinate_transformation_mode
                )
                return [scale_node, roi_node, node]
            else:
                raise Exception("Unexpected situation happend")
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        return [roi_node, node]
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    def hard_swish(self, op, block):
        min_name = self.get_name(op.type, 'min')
        max_name = self.get_name(op.type, 'max')
        scale_name = self.get_name(op.type, 'scale')
        offset_name = self.get_name(op.type, 'offset')
        min_node = self.make_constant_node(min_name, onnx_pb.TensorProto.FLOAT,
                                           0)
        max_node = self.make_constant_node(max_name, onnx_pb.TensorProto.FLOAT,
                                           op.attr('threshold'))
        scale_node = self.make_constant_node(scale_name,
                                             onnx_pb.TensorProto.FLOAT,
                                             op.attr('scale'))
        offset_node = self.make_constant_node(offset_name,
                                              onnx_pb.TensorProto.FLOAT,
                                              op.attr('offset'))

        name0 = self.get_name(op.type, 'add')
        node0 = helper.make_node(
            'Add', inputs=[op.input('X')[0], offset_name], outputs=[name0])
        name1 = self.get_name(op.type, 'relu')
        node1 = helper.make_node(
            'Clip',
            inputs=[name0, min_name, max_name],
            outputs=[name1], )
        name2 = self.get_name(op.type, 'mul')
        node2 = helper.make_node(
            'Mul', inputs=[op.input('X')[0], name1], outputs=[name2])
        node3 = helper.make_node(
            'Div', inputs=[name2, scale_name], outputs=op.output('Out'))
        return [
            min_node, max_node, scale_node, offset_node, node0, node1, node2,
            node3
        ]

    def yolo_box(self, op, block):
        from .paddle_custom_layer.yolo_box import yolo_box
        return yolo_box(op, block)

    def multiclass_nms(self, op, block):
        from .paddle_custom_layer.multiclass_nms import multiclass_nms
        return multiclass_nms(op, block)