Beispiel #1
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 def test_reshape_layer(self):
     block_expand = layer.block_expand(
         input=conv, num_channels=4, stride_x=1, block_x=1)
     expand = layer.expand(
         input=weight,
         expand_as=pixel,
         expand_level=layer.ExpandLevel.FROM_TIMESTEP)
     repeat = layer.repeat(input=pixel, num_repeats=4)
     reshape = layer.seq_reshape(input=pixel, reshape_size=4)
     rotate = layer.rotate(input=pixel, height=16, width=49)
     print layer.parse_network(block_expand, expand, repeat, reshape, rotate)
Beispiel #2
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 def test_reshape_layer(self):
     block_expand = layer.block_expand(
         input=conv, num_channels=4, stride_x=1, block_x=1)
     expand = layer.expand(
         input=weight,
         expand_as=pixel,
         expand_level=layer.ExpandLevel.FROM_NO_SEQUENCE)
     repeat = layer.repeat(input=pixel, num_repeats=4)
     reshape = layer.seq_reshape(input=pixel, reshape_size=4)
     rotate = layer.rotate(input=pixel, height=16, width=49)
     print layer.parse_network(
         [block_expand, expand, repeat, reshape, rotate])
Beispiel #3
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    def __build_nn__(self):
        '''
        Build the network topology.
        '''
        # Get the image features with CNN.
        conv_features = self.conv_groups(self.image, conf.filter_num,
                                         conf.with_bn)

        # Expand the output of CNN into a sequence of feature vectors.
        sliced_feature = layer.block_expand(
            input=conv_features,
            num_channels=conf.num_channels,
            stride_x=conf.stride_x,
            stride_y=conf.stride_y,
            block_x=conf.block_x,
            block_y=conf.block_y)

        # Use RNN to capture sequence information forwards and backwards.
        gru_forward = simple_gru(
            input=sliced_feature, size=conf.hidden_size, act=Relu())
        gru_backward = simple_gru(
            input=sliced_feature,
            size=conf.hidden_size,
            act=Relu(),
            reverse=True)

        # Map the output of RNN to character distribution.
        self.output = layer.fc(input=[gru_forward, gru_backward],
                               size=self.num_classes + 1,
                               act=Linear())

        self.log_probs = paddle.layer.mixed(
            input=paddle.layer.identity_projection(input=self.output),
            act=paddle.activation.Softmax())

        # Use warp CTC to calculate cost for a CTC task.
        if not self.is_infer:
            self.cost = layer.warp_ctc(
                input=self.output,
                label=self.label,
                size=self.num_classes + 1,
                norm_by_times=conf.norm_by_times,
                blank=self.num_classes)

            self.eval = evaluator.ctc_error(input=self.output, label=self.label)
Beispiel #4
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    def __build_nn__(self):
        '''
        建立网络拓扑
        '''
        # 通过CNN获取图像特征
        conv_features = self.conv_groups(self.image, conf.filter_num,
                                         conf.with_bn)

        # 将CNN的输出展开成一系列特征向量。
        sliced_feature = layer.block_expand(
            input=conv_features,
            num_channels=conf.num_channels,
            stride_x=conf.stride_x,
            stride_y=conf.stride_y,
            block_x=conf.block_x,
            block_y=conf.block_y)

        # 使用RNN向前和向后捕获序列信息。
        gru_forward = simple_gru(
            input=sliced_feature, size=conf.hidden_size, act=Relu())
        gru_backward = simple_gru(
            input=sliced_feature,
            size=conf.hidden_size,
            act=Relu(),
            reverse=True)

        # 将RNN的输出映射到字符分布。
        self.output = layer.fc(input=[gru_forward, gru_backward],
                               size=self.num_classes + 1,
                               act=Linear())

        self.log_probs = paddle.layer.mixed(
            input=paddle.layer.identity_projection(input=self.output),
            act=paddle.activation.Softmax())

        # 使用扭曲CTC来计算CTC任务的成本。
        if not self.is_infer:
            self.cost = layer.warp_ctc(
                input=self.output,
                label=self.label,
                size=self.num_classes + 1,
                norm_by_times=conf.norm_by_times,
                blank=self.num_classes)

            self.eval = evaluator.ctc_error(input=self.output, label=self.label)