Exemplo n.º 1
0
    def build(self, input_shape):
        if self._expand_ratio != 1:
            # First 1x1 conv for channel expansion.
            self._conv0 = tf.keras.layers.Conv2D(
                filters=self._in_filters * self._expand_ratio,
                kernel_size=1,
                strides=1,
                use_bias=False,
                kernel_initializer=self._kernel_initializer,
                kernel_regularizer=self._kernel_regularizer,
                bias_regularizer=self._bias_regularizer)
            self._norm0 = self._norm(axis=self._bn_axis,
                                     momentum=self._norm_momentum,
                                     epsilon=self._norm_epsilon)

        # Depthwise conv.
        self._conv1 = tf.keras.layers.DepthwiseConv2D(
            kernel_size=(self._kernel_size, self._kernel_size),
            strides=self._strides,
            padding='same',
            use_bias=False,
            depthwise_initializer=self._kernel_initializer,
            depthwise_regularizer=self._kernel_regularizer,
            bias_regularizer=self._bias_regularizer)
        self._norm1 = self._norm(axis=self._bn_axis,
                                 momentum=self._norm_momentum,
                                 epsilon=self._norm_epsilon)

        # Squeeze and excitation.
        if self._se_ratio is not None and self._se_ratio > 0 and self._se_ratio <= 1:
            self._squeeze_excitation = nn_layers.SqueezeExcitation(
                in_filters=self._in_filters,
                se_ratio=self._se_ratio,
                expand_ratio=self._expand_ratio,
                kernel_initializer=self._kernel_initializer,
                kernel_regularizer=self._kernel_regularizer,
                bias_regularizer=self._bias_regularizer)
        else:
            self._squeeze_excitation = None

        # Last 1x1 conv.
        self._conv2 = tf.keras.layers.Conv2D(
            filters=self._out_filters,
            kernel_size=1,
            strides=1,
            use_bias=False,
            kernel_initializer=self._kernel_initializer,
            kernel_regularizer=self._kernel_regularizer,
            bias_regularizer=self._bias_regularizer)
        self._norm2 = self._norm(axis=self._bn_axis,
                                 momentum=self._norm_momentum,
                                 epsilon=self._norm_epsilon)

        if self._stochastic_depth_drop_rate:
            self._stochastic_depth = nn_layers.StochasticDepth(
                self._stochastic_depth_drop_rate)
        else:
            self._stochastic_depth = None

        super(InvertedBottleneckBlock, self).build(input_shape)
Exemplo n.º 2
0
    def build(self, input_shape):
        if self._use_projection:
            self._shortcut = tf.keras.layers.Conv2D(
                filters=self._filters * 4,
                kernel_size=1,
                strides=self._strides,
                use_bias=False,
                kernel_initializer=self._kernel_initializer,
                kernel_regularizer=self._kernel_regularizer,
                bias_regularizer=self._bias_regularizer)
            self._norm0 = self._norm(axis=self._bn_axis,
                                     momentum=self._norm_momentum,
                                     epsilon=self._norm_epsilon)

        self._conv1 = tf.keras.layers.Conv2D(
            filters=self._filters,
            kernel_size=1,
            strides=1,
            use_bias=False,
            kernel_initializer=self._kernel_initializer,
            kernel_regularizer=self._kernel_regularizer,
            bias_regularizer=self._bias_regularizer)
        self._norm1 = self._norm(axis=self._bn_axis,
                                 momentum=self._norm_momentum,
                                 epsilon=self._norm_epsilon)

        self._conv2 = tf.keras.layers.Conv2D(
            filters=self._filters,
            kernel_size=3,
            strides=self._strides,
            dilation_rate=self._dilation_rate,
            padding='same',
            use_bias=False,
            kernel_initializer=self._kernel_initializer,
            kernel_regularizer=self._kernel_regularizer,
            bias_regularizer=self._bias_regularizer)
        self._norm2 = self._norm(axis=self._bn_axis,
                                 momentum=self._norm_momentum,
                                 epsilon=self._norm_epsilon)

        self._conv3 = tf.keras.layers.Conv2D(
            filters=self._filters * 4,
            kernel_size=1,
            strides=1,
            use_bias=False,
            kernel_initializer=self._kernel_initializer,
            kernel_regularizer=self._kernel_regularizer,
            bias_regularizer=self._bias_regularizer)
        self._norm3 = self._norm(axis=self._bn_axis,
                                 momentum=self._norm_momentum,
                                 epsilon=self._norm_epsilon)

        if self._stochastic_depth_drop_rate:
            self._stochastic_depth = nn_layers.StochasticDepth(
                self._stochastic_depth_drop_rate)
        else:
            self._stochastic_depth = None

        super(BottleneckBlock, self).build(input_shape)
Exemplo n.º 3
0
    def build(self, input_shape):
        if self._use_projection:
            self._shortcut = tf.keras.layers.Conv3D(
                filters=self._filters,
                kernel_size=1,
                strides=self._strides,
                use_bias=False,
                kernel_initializer=self._kernel_initializer,
                kernel_regularizer=self._kernel_regularizer,
                bias_regularizer=self._bias_regularizer)
            self._norm0 = self._norm(axis=self._bn_axis,
                                     momentum=self._norm_momentum,
                                     epsilon=self._norm_epsilon)

        self._conv1 = tf.keras.layers.Conv3D(
            filters=self._filters,
            kernel_size=3,
            strides=self._strides,
            padding='same',
            use_bias=False,
            kernel_initializer=self._kernel_initializer,
            kernel_regularizer=self._kernel_regularizer,
            bias_regularizer=self._bias_regularizer)
        self._norm1 = self._norm(axis=self._bn_axis,
                                 momentum=self._norm_momentum,
                                 epsilon=self._norm_epsilon)

        self._conv2 = tf.keras.layers.Conv3D(
            filters=self._filters,
            kernel_size=3,
            strides=1,
            padding='same',
            use_bias=False,
            kernel_initializer=self._kernel_initializer,
            kernel_regularizer=self._kernel_regularizer,
            bias_regularizer=self._bias_regularizer)
        self._norm2 = self._norm(axis=self._bn_axis,
                                 momentum=self._norm_momentum,
                                 epsilon=self._norm_epsilon)

        if self._se_ratio and self._se_ratio > 0 and self._se_ratio <= 1:
            self._squeeze_excitation = nn_layers.SqueezeExcitation(
                in_filters=self._filters,
                out_filters=self._filters,
                se_ratio=self._se_ratio,
                use_3d_input=True,
                kernel_initializer=self._kernel_initializer,
                kernel_regularizer=self._kernel_regularizer,
                bias_regularizer=self._bias_regularizer)
        else:
            self._squeeze_excitation = None

        if self._stochastic_depth_drop_rate:
            self._stochastic_depth = nn_layers.StochasticDepth(
                self._stochastic_depth_drop_rate)
        else:
            self._stochastic_depth = None

        super(ResidualBlock3DVolume, self).build(input_shape)
Exemplo n.º 4
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    def build(self, input_shape):
        expand_filters = self._in_filters
        if self._expand_ratio > 1:
            # First 1x1 conv for channel expansion.
            expand_filters = nn_layers.make_divisible(
                self._in_filters * self._expand_ratio, self._divisible_by)

            expand_kernel = 1 if self._use_depthwise else self._kernel_size
            expand_stride = 1 if self._use_depthwise else self._strides

            self._conv0 = tf.keras.layers.Conv2D(
                filters=expand_filters,
                kernel_size=expand_kernel,
                strides=expand_stride,
                padding='same',
                use_bias=False,
                kernel_initializer=self._kernel_initializer,
                kernel_regularizer=self._kernel_regularizer,
                bias_regularizer=self._bias_regularizer)
            self._norm0 = self._norm(axis=self._bn_axis,
                                     momentum=self._norm_momentum,
                                     epsilon=self._norm_epsilon)

        if self._use_depthwise:
            # Depthwise conv.
            self._conv1 = tf.keras.layers.DepthwiseConv2D(
                kernel_size=(self._kernel_size, self._kernel_size),
                strides=self._strides,
                padding='same',
                depth_multiplier=1,
                dilation_rate=self._dilation_rate,
                use_bias=False,
                depthwise_initializer=self._kernel_initializer,
                depthwise_regularizer=self._depthsize_regularizer,
                bias_regularizer=self._bias_regularizer)
            self._norm1 = self._norm(axis=self._bn_axis,
                                     momentum=self._norm_momentum,
                                     epsilon=self._norm_epsilon)

        # Squeeze and excitation.
        if self._se_ratio and self._se_ratio > 0 and self._se_ratio <= 1:
            logging.info('Use Squeeze and excitation.')
            in_filters = self._in_filters
            if self._expand_se_in_filters:
                in_filters = expand_filters
            self._squeeze_excitation = nn_layers.SqueezeExcitation(
                in_filters=in_filters,
                out_filters=expand_filters,
                se_ratio=self._se_ratio,
                divisible_by=self._divisible_by,
                kernel_initializer=self._kernel_initializer,
                kernel_regularizer=self._kernel_regularizer,
                bias_regularizer=self._bias_regularizer,
                activation=self._se_inner_activation,
                gating_activation=self._se_gating_activation)
        else:
            self._squeeze_excitation = None

        # Last 1x1 conv.
        self._conv2 = tf.keras.layers.Conv2D(
            filters=self._out_filters,
            kernel_size=1,
            strides=1,
            padding='same',
            use_bias=False,
            kernel_initializer=self._kernel_initializer,
            kernel_regularizer=self._kernel_regularizer,
            bias_regularizer=self._bias_regularizer)
        self._norm2 = self._norm(axis=self._bn_axis,
                                 momentum=self._norm_momentum,
                                 epsilon=self._norm_epsilon)

        if self._stochastic_depth_drop_rate:
            self._stochastic_depth = nn_layers.StochasticDepth(
                self._stochastic_depth_drop_rate)
        else:
            self._stochastic_depth = None

        super(InvertedBottleneckBlock, self).build(input_shape)
Exemplo n.º 5
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  def build(self, input_shape):
    if self._use_projection:
      if self._resnetd_shortcut:
        self._shortcut0 = tf.keras.layers.AveragePooling2D(
            pool_size=2, strides=self._strides, padding='same')
        self._shortcut1 = tf.keras.layers.Conv2D(
            filters=self._filters * 4,
            kernel_size=1,
            strides=1,
            use_bias=False,
            kernel_initializer=self._kernel_initializer,
            kernel_regularizer=self._kernel_regularizer,
            bias_regularizer=self._bias_regularizer)
      else:
        self._shortcut = tf.keras.layers.Conv2D(
            filters=self._filters * 4,
            kernel_size=1,
            strides=self._strides,
            use_bias=False,
            kernel_initializer=self._kernel_initializer,
            kernel_regularizer=self._kernel_regularizer,
            bias_regularizer=self._bias_regularizer)

      self._norm0 = self._norm(
          axis=self._bn_axis,
          momentum=self._norm_momentum,
          epsilon=self._norm_epsilon,
          trainable=self._bn_trainable)

    self._conv1 = tf.keras.layers.Conv2D(
        filters=self._filters,
        kernel_size=1,
        strides=1,
        use_bias=False,
        kernel_initializer=self._kernel_initializer,
        kernel_regularizer=self._kernel_regularizer,
        bias_regularizer=self._bias_regularizer)
    self._norm1 = self._norm(
        axis=self._bn_axis,
        momentum=self._norm_momentum,
        epsilon=self._norm_epsilon,
        trainable=self._bn_trainable)
    self._activation1 = tf_utils.get_activation(
        self._activation, use_keras_layer=True)

    self._conv2 = tf.keras.layers.Conv2D(
        filters=self._filters,
        kernel_size=3,
        strides=self._strides,
        dilation_rate=self._dilation_rate,
        padding='same',
        use_bias=False,
        kernel_initializer=self._kernel_initializer,
        kernel_regularizer=self._kernel_regularizer,
        bias_regularizer=self._bias_regularizer)
    self._norm2 = self._norm(
        axis=self._bn_axis,
        momentum=self._norm_momentum,
        epsilon=self._norm_epsilon,
        trainable=self._bn_trainable)
    self._activation2 = tf_utils.get_activation(
        self._activation, use_keras_layer=True)

    self._conv3 = tf.keras.layers.Conv2D(
        filters=self._filters * 4,
        kernel_size=1,
        strides=1,
        use_bias=False,
        kernel_initializer=self._kernel_initializer,
        kernel_regularizer=self._kernel_regularizer,
        bias_regularizer=self._bias_regularizer)
    self._norm3 = self._norm(
        axis=self._bn_axis,
        momentum=self._norm_momentum,
        epsilon=self._norm_epsilon,
        trainable=self._bn_trainable)
    self._activation3 = tf_utils.get_activation(
        self._activation, use_keras_layer=True)

    if self._se_ratio and self._se_ratio > 0 and self._se_ratio <= 1:
      self._squeeze_excitation = nn_layers.SqueezeExcitation(
          in_filters=self._filters * 4,
          out_filters=self._filters * 4,
          se_ratio=self._se_ratio,
          kernel_initializer=self._kernel_initializer,
          kernel_regularizer=self._kernel_regularizer,
          bias_regularizer=self._bias_regularizer)
    else:
      self._squeeze_excitation = None

    if self._stochastic_depth_drop_rate:
      self._stochastic_depth = nn_layers.StochasticDepth(
          self._stochastic_depth_drop_rate)
    else:
      self._stochastic_depth = None
    self._add = tf.keras.layers.Add()

    super(BottleneckBlock, self).build(input_shape)
Exemplo n.º 6
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  def build(self, input_shape):
    if self._use_projection:
      self._shortcut = tf.keras.layers.Conv2D(
          filters=self._filters,
          kernel_size=1,
          strides=self._strides,
          use_bias=False,
          kernel_initializer=self._kernel_initializer,
          kernel_regularizer=self._kernel_regularizer,
          bias_regularizer=self._bias_regularizer)
      self._norm0 = self._norm(
          axis=self._bn_axis,
          momentum=self._norm_momentum,
          epsilon=self._norm_epsilon,
          trainable=self._bn_trainable)

    conv1_padding = 'same'
    # explicit padding here is added for centernet
    if self._use_explicit_padding:
      self._pad = tf.keras.layers.ZeroPadding2D(padding=(1, 1))
      conv1_padding = 'valid'

    self._conv1 = tf.keras.layers.Conv2D(
        filters=self._filters,
        kernel_size=3,
        strides=self._strides,
        padding=conv1_padding,
        use_bias=False,
        kernel_initializer=self._kernel_initializer,
        kernel_regularizer=self._kernel_regularizer,
        bias_regularizer=self._bias_regularizer)
    self._norm1 = self._norm(
        axis=self._bn_axis,
        momentum=self._norm_momentum,
        epsilon=self._norm_epsilon,
        trainable=self._bn_trainable)

    self._conv2 = tf.keras.layers.Conv2D(
        filters=self._filters,
        kernel_size=3,
        strides=1,
        padding='same',
        use_bias=False,
        kernel_initializer=self._kernel_initializer,
        kernel_regularizer=self._kernel_regularizer,
        bias_regularizer=self._bias_regularizer)
    self._norm2 = self._norm(
        axis=self._bn_axis,
        momentum=self._norm_momentum,
        epsilon=self._norm_epsilon,
        trainable=self._bn_trainable)

    if self._se_ratio and self._se_ratio > 0 and self._se_ratio <= 1:
      self._squeeze_excitation = nn_layers.SqueezeExcitation(
          in_filters=self._filters,
          out_filters=self._filters,
          se_ratio=self._se_ratio,
          kernel_initializer=self._kernel_initializer,
          kernel_regularizer=self._kernel_regularizer,
          bias_regularizer=self._bias_regularizer)
    else:
      self._squeeze_excitation = None

    if self._stochastic_depth_drop_rate:
      self._stochastic_depth = nn_layers.StochasticDepth(
          self._stochastic_depth_drop_rate)
    else:
      self._stochastic_depth = None

    super(ResidualBlock, self).build(input_shape)
Exemplo n.º 7
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  def build(self, input_shape: Optional[Union[Sequence[int], tf.Tensor]]):
    """Build variables and child layers to prepare for calling."""
    conv2d_quantized = _quantize_wrapped_layer(
        tf.keras.layers.Conv2D,
        configs.DefaultNBitConvQuantizeConfig(
            ['kernel'], ['activation'], False,
            num_bits_weight=self._num_bits_weight,
            num_bits_activation=self._num_bits_activation))
    depthwise_conv2d_quantized = _quantize_wrapped_layer(
        tf.keras.layers.DepthwiseConv2D,
        configs.DefaultNBitConvQuantizeConfig(
            ['depthwise_kernel'], ['activation'], False,
            num_bits_weight=self._num_bits_weight,
            num_bits_activation=self._num_bits_activation))
    expand_filters = self._in_filters
    if self._expand_ratio > 1:
      # First 1x1 conv for channel expansion.
      expand_filters = nn_layers.make_divisible(
          self._in_filters * self._expand_ratio, self._divisible_by)

      expand_kernel = 1 if self._use_depthwise else self._kernel_size
      expand_stride = 1 if self._use_depthwise else self._strides

      self._conv0 = conv2d_quantized(
          filters=expand_filters,
          kernel_size=expand_kernel,
          strides=expand_stride,
          padding='same',
          use_bias=False,
          kernel_initializer=self._kernel_initializer,
          kernel_regularizer=self._kernel_regularizer,
          bias_regularizer=self._bias_regularizer,
          activation=NoOpActivation())
      self._norm0 = self._norm_with_quantize(
          axis=self._bn_axis,
          momentum=self._norm_momentum,
          epsilon=self._norm_epsilon)
      self._activation_layer = tfmot.quantization.keras.QuantizeWrapperV2(
          tf_utils.get_activation(self._activation, use_keras_layer=True),
          configs.DefaultNBitActivationQuantizeConfig(
              num_bits_weight=self._num_bits_weight,
              num_bits_activation=self._num_bits_activation))

    if self._use_depthwise:
      # Depthwise conv.
      self._conv1 = depthwise_conv2d_quantized(
          kernel_size=(self._kernel_size, self._kernel_size),
          strides=self._strides,
          padding='same',
          depth_multiplier=1,
          dilation_rate=self._dilation_rate,
          use_bias=False,
          depthwise_initializer=self._kernel_initializer,
          depthwise_regularizer=self._depthsize_regularizer,
          bias_regularizer=self._bias_regularizer,
          activation=NoOpActivation())
      self._norm1 = self._norm_with_quantize(
          axis=self._bn_axis,
          momentum=self._norm_momentum,
          epsilon=self._norm_epsilon)
      self._depthwise_activation_layer = (
          tfmot.quantization.keras.QuantizeWrapperV2(
              tf_utils.get_activation(self._depthwise_activation,
                                      use_keras_layer=True),
              configs.DefaultNBitActivationQuantizeConfig(
                  num_bits_weight=self._num_bits_weight,
                  num_bits_activation=self._num_bits_activation)))

    # Squeeze and excitation.
    if self._se_ratio and self._se_ratio > 0 and self._se_ratio <= 1:
      logging.info('Use Squeeze and excitation.')
      in_filters = self._in_filters
      if self._expand_se_in_filters:
        in_filters = expand_filters
      self._squeeze_excitation = qat_nn_layers.SqueezeExcitationNBitQuantized(
          in_filters=in_filters,
          out_filters=expand_filters,
          se_ratio=self._se_ratio,
          divisible_by=self._divisible_by,
          kernel_initializer=self._kernel_initializer,
          kernel_regularizer=self._kernel_regularizer,
          bias_regularizer=self._bias_regularizer,
          activation=self._se_inner_activation,
          gating_activation=self._se_gating_activation,
          num_bits_weight=self._num_bits_weight,
          num_bits_activation=self._num_bits_activation)
    else:
      self._squeeze_excitation = None

    # Last 1x1 conv.
    self._conv2 = conv2d_quantized(
        filters=self._out_filters,
        kernel_size=1,
        strides=1,
        padding='same',
        use_bias=False,
        kernel_initializer=self._kernel_initializer,
        kernel_regularizer=self._kernel_regularizer,
        bias_regularizer=self._bias_regularizer,
        activation=NoOpActivation())
    self._norm2 = self._norm_with_quantize(
        axis=self._bn_axis,
        momentum=self._norm_momentum,
        epsilon=self._norm_epsilon)

    if self._stochastic_depth_drop_rate:
      self._stochastic_depth = nn_layers.StochasticDepth(
          self._stochastic_depth_drop_rate)
    else:
      self._stochastic_depth = None
    self._add = tf.keras.layers.Add()

    super().build(input_shape)
Exemplo n.º 8
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  def build(self, input_shape: Optional[Union[Sequence[int], tf.Tensor]]):
    """Build variables and child layers to prepare for calling."""
    conv2d_quantized = _quantize_wrapped_layer(
        tf.keras.layers.Conv2D,
        configs.DefaultNBitConvQuantizeConfig(
            ['kernel'], ['activation'], False,
            num_bits_weight=self._num_bits_weight,
            num_bits_activation=self._num_bits_activation))
    if self._use_projection:
      if self._resnetd_shortcut:
        self._shortcut0 = tf.keras.layers.AveragePooling2D(
            pool_size=2, strides=self._strides, padding='same')
        self._shortcut1 = conv2d_quantized(
            filters=self._filters * 4,
            kernel_size=1,
            strides=1,
            use_bias=False,
            kernel_initializer=self._kernel_initializer,
            kernel_regularizer=self._kernel_regularizer,
            bias_regularizer=self._bias_regularizer,
            activation=NoOpActivation())
      else:
        self._shortcut = conv2d_quantized(
            filters=self._filters * 4,
            kernel_size=1,
            strides=self._strides,
            use_bias=False,
            kernel_initializer=self._kernel_initializer,
            kernel_regularizer=self._kernel_regularizer,
            bias_regularizer=self._bias_regularizer,
            activation=NoOpActivation())

      self._norm0 = self._norm_with_quantize(
          axis=self._bn_axis,
          momentum=self._norm_momentum,
          epsilon=self._norm_epsilon,
          trainable=self._bn_trainable)

    self._conv1 = conv2d_quantized(
        filters=self._filters,
        kernel_size=1,
        strides=1,
        use_bias=False,
        kernel_initializer=self._kernel_initializer,
        kernel_regularizer=self._kernel_regularizer,
        bias_regularizer=self._bias_regularizer,
        activation=NoOpActivation())
    self._norm1 = self._norm(
        axis=self._bn_axis,
        momentum=self._norm_momentum,
        epsilon=self._norm_epsilon,
        trainable=self._bn_trainable)
    self._activation1 = tfmot.quantization.keras.QuantizeWrapperV2(
        tf_utils.get_activation(self._activation, use_keras_layer=True),
        configs.DefaultNBitActivationQuantizeConfig(
            num_bits_weight=self._num_bits_weight,
            num_bits_activation=self._num_bits_activation))

    self._conv2 = conv2d_quantized(
        filters=self._filters,
        kernel_size=3,
        strides=self._strides,
        dilation_rate=self._dilation_rate,
        padding='same',
        use_bias=False,
        kernel_initializer=self._kernel_initializer,
        kernel_regularizer=self._kernel_regularizer,
        bias_regularizer=self._bias_regularizer,
        activation=NoOpActivation())
    self._norm2 = self._norm(
        axis=self._bn_axis,
        momentum=self._norm_momentum,
        epsilon=self._norm_epsilon,
        trainable=self._bn_trainable)
    self._activation2 = tfmot.quantization.keras.QuantizeWrapperV2(
        tf_utils.get_activation(self._activation, use_keras_layer=True),
        configs.DefaultNBitActivationQuantizeConfig(
            num_bits_weight=self._num_bits_weight,
            num_bits_activation=self._num_bits_activation))

    self._conv3 = conv2d_quantized(
        filters=self._filters * 4,
        kernel_size=1,
        strides=1,
        use_bias=False,
        kernel_initializer=self._kernel_initializer,
        kernel_regularizer=self._kernel_regularizer,
        bias_regularizer=self._bias_regularizer,
        activation=NoOpActivation())
    self._norm3 = self._norm_with_quantize(
        axis=self._bn_axis,
        momentum=self._norm_momentum,
        epsilon=self._norm_epsilon,
        trainable=self._bn_trainable)
    self._activation3 = tfmot.quantization.keras.QuantizeWrapperV2(
        tf_utils.get_activation(self._activation, use_keras_layer=True),
        configs.DefaultNBitActivationQuantizeConfig(
            num_bits_weight=self._num_bits_weight,
            num_bits_activation=self._num_bits_activation))

    if self._se_ratio and self._se_ratio > 0 and self._se_ratio <= 1:
      self._squeeze_excitation = qat_nn_layers.SqueezeExcitationNBitQuantized(
          in_filters=self._filters * 4,
          out_filters=self._filters * 4,
          se_ratio=self._se_ratio,
          kernel_initializer=self._kernel_initializer,
          kernel_regularizer=self._kernel_regularizer,
          bias_regularizer=self._bias_regularizer,
          num_bits_weight=self._num_bits_weight,
          num_bits_activation=self._num_bits_activation)
    else:
      self._squeeze_excitation = None

    if self._stochastic_depth_drop_rate:
      self._stochastic_depth = nn_layers.StochasticDepth(
          self._stochastic_depth_drop_rate)
    else:
      self._stochastic_depth = None
    self._add = tfmot.quantization.keras.QuantizeWrapperV2(
        tf.keras.layers.Add(),
        configs.DefaultNBitQuantizeConfig(
            [], [], True,
            num_bits_weight=self._num_bits_weight,
            num_bits_activation=self._num_bits_activation))

    super().build(input_shape)
Exemplo n.º 9
0
    def build(self, input_shape):
        self._shortcut_maxpool = tf.keras.layers.MaxPool3D(
            pool_size=[1, 1, 1],
            strides=[
                self._temporal_strides, self._spatial_strides,
                self._spatial_strides
            ])

        self._shortcut_conv = tf.keras.layers.Conv3D(
            filters=4 * self._filters,
            kernel_size=1,
            strides=[
                self._temporal_strides, self._spatial_strides,
                self._spatial_strides
            ],
            use_bias=False,
            kernel_initializer=self._kernel_initializer,
            kernel_regularizer=self._kernel_regularizer,
            bias_regularizer=self._bias_regularizer)
        self._norm0 = self._norm(axis=self._bn_axis,
                                 momentum=self._norm_momentum,
                                 epsilon=self._norm_epsilon)

        self._temporal_conv = tf.keras.layers.Conv3D(
            filters=self._filters,
            kernel_size=[self._temporal_kernel_size, 1, 1],
            strides=[self._temporal_strides, 1, 1],
            padding='same',
            use_bias=False,
            kernel_initializer=self._kernel_initializer,
            kernel_regularizer=self._kernel_regularizer,
            bias_regularizer=self._bias_regularizer)
        self._norm1 = self._norm(axis=self._bn_axis,
                                 momentum=self._norm_momentum,
                                 epsilon=self._norm_epsilon)

        self._spatial_conv = tf.keras.layers.Conv3D(
            filters=self._filters,
            kernel_size=[1, 3, 3],
            strides=[1, self._spatial_strides, self._spatial_strides],
            padding='same',
            use_bias=False,
            kernel_initializer=self._kernel_initializer,
            kernel_regularizer=self._kernel_regularizer,
            bias_regularizer=self._bias_regularizer)
        self._norm2 = self._norm(axis=self._bn_axis,
                                 momentum=self._norm_momentum,
                                 epsilon=self._norm_epsilon)

        self._expand_conv = tf.keras.layers.Conv3D(
            filters=4 * self._filters,
            kernel_size=[1, 1, 1],
            strides=[1, 1, 1],
            padding='same',
            use_bias=False,
            kernel_initializer=self._kernel_initializer,
            kernel_regularizer=self._kernel_regularizer,
            bias_regularizer=self._bias_regularizer)
        self._norm3 = self._norm(axis=self._bn_axis,
                                 momentum=self._norm_momentum,
                                 epsilon=self._norm_epsilon)

        if self._se_ratio and self._se_ratio > 0 and self._se_ratio <= 1:
            self._squeeze_excitation = nn_layers.SqueezeExcitation(
                in_filters=self._filters * 4,
                out_filters=self._filters * 4,
                se_ratio=self._se_ratio,
                use_3d_input=True,
                kernel_initializer=self._kernel_initializer,
                kernel_regularizer=self._kernel_regularizer,
                bias_regularizer=self._bias_regularizer)
        else:
            self._squeeze_excitation = None

        if self._stochastic_depth_drop_rate:
            self._stochastic_depth = nn_layers.StochasticDepth(
                self._stochastic_depth_drop_rate)
        else:
            self._stochastic_depth = None

        if self._use_self_gating:
            self._self_gating = SelfGating(filters=4 * self._filters)
        else:
            self._self_gating = None

        super(BottleneckBlock3D, self).build(input_shape)