""" Copyright (C) 2018-2020 Intel Corporation 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 numpy as np from mo.front.common.partial_infer.utils import mark_input_bins, assign_dims_to_weights, tf_window_op_pad_infer from mo.front.extractor import spatial_getter from mo.front.onnx.extractors.utils import get_backend_pad from mo.graph.graph import Node, Graph from mo.graph.perm_inputs import PermuteInputs from mo.ops.op import Op, PermuteAttrs class Deconvolution(Op): op = 'Deconvolution' def __init__(self, graph: Graph, attrs: dict): super().__init__(graph, { 'type': self.op, 'op': self.op, 'version': 'opset1', 'infer': self.infer, 'in_ports_count': 3, 'out_ports_count': 1, }, attrs) def backend_attrs(self): return [ ('dilations', lambda node: ','.join(map(str, node['dilation'][node.spatial_dims]))), ('strides', lambda node: ','.join(map(str, node['stride'][node.spatial_dims]))), ('pads_begin', lambda node: ','.join(map(str, get_backend_pad(node.pad, node.spatial_dims, 0))) if node.has_valid( 'pad') else None), ('pads_end', lambda node: ','.join(map(str, get_backend_pad(node.pad, node.spatial_dims, 1))) if node.has_valid( 'pad') else None), 'auto_pad', ] @staticmethod def infer(node: Node): """ Deconvolution has an input argument that explicitly determines output shape, so in contrast to the forward Conv2d we shouldn't infer output shape. We just use this output shape as an input shape and pass it to our utilities that computes numeric values for padding. They also deliver output shape that is interpreted here as input shape for convolution. We need to check that the real input shape and shape inferred by those utility functions match. """ output_shape = np.array(node.in_node(2).value) batch = np.array(node.in_node(0).shape)[0] output_shape[0] = batch kernel_shape = node.in_node(1).shape node['kernel_shape'] = kernel_shape if output_shape is None or kernel_shape is None or node.spatial_dims is None or node.stride is None: return if not node.has_valid('kernel_spatial_idx'): node['kernel_spatial_idx'] = np.delete([x for x in range(len(kernel_shape))], (node.input_feature_channel, node.output_feature_channel)) if not node.has_valid('dilation'): node['dilation'] = np.full([len(output_shape)], 1, dtype=np.int64) spatial_dims = node.spatial_dims output_spatial = np.array(output_shape[spatial_dims]) stride_spatial = np.array(node.stride[spatial_dims]) node['kernel_spatial'] = np.array(kernel_shape[node.kernel_spatial_idx]) node.pad_spatial_shape, input_spatial_for_check = tf_window_op_pad_infer( output_spatial, node.kernel_spatial, stride_spatial, node.auto_pad) assert all(input_spatial_for_check == node.in_node(0).shape[spatial_dims]) pad = np.zeros((len(output_shape), 2), dtype=np.int64) pad[spatial_dims] = node.pad_spatial_shape node.pad = pad node.output = output_shape[node.channel_dims][0] node.output_shape = output_shape node.out_node().shape = output_shape mark_input_bins(node, ['weights'], 1) assign_dims_to_weights(node.in_node(1), node.kernel_spatial_idx, node.input_feature_channel, node.output_feature_channel, len(kernel_shape)) # OK, now we are sure this is a supported Deconvolution layer node.type = 'Deconvolution' node.op = 'Deconv2D' # Add permute_attrs PermuteAttrs.create_permute_attrs(node, attrs=[('pad', 'input:0'), ('stride', 'input:0'), ('output_shape', 'input:0'), ('batch_dims', 'input:0'), ('channel_dims', 'input:0'), ('spatial_dims', 'input:0'), ('kernel_shape', 'input:1'), ('kernel_spatial_idx', 'input:1'), ('input_feature_channel', 'input:1'), ('output_feature_channel', 'input:1'), ]) PermuteAttrs.set_permutation(node.in_node(1), node, node.get_weights_permute if node.has_valid('get_weights_permute') else None) PermuteInputs().set_input_permutation(node.in_node(2), node, 'input:0', 'shape') node['force_precision_in_ports'] = {2: 'int64'}