ResNetBlock¶
Inheritance Diagram

-
class
ashpy.models.convolutional.pix2pixhd.ResNetBlock(filters, normalization_layer=<class 'ashpy.layers.instance_normalization.InstanceNormalization'>, non_linearity=<class 'tensorflow.python.keras.layers.advanced_activations.ReLU'>, kernel_size=3, num_blocks=2)[source]¶ Bases:
tensorflow.python.keras.engine.training.ModelResNet Blocks.
The input filters is the same as the output filters.
Methods
__init__(filters[, normalization_layer, …])Build the ResNet block composed by num_blocks. call(inputs[, training])Forward pass. Attributes
activity_regularizerOptional regularizer function for the output of this layer. dtypedynamicinbound_nodesDeprecated, do NOT use! Only for compatibility with external Keras. inputRetrieves the input tensor(s) of a layer. input_maskRetrieves the input mask tensor(s) of a layer. input_shapeRetrieves the input shape(s) of a layer. input_specGets the network’s input specs. layerslossesLosses which are associated with this Layer. metricsReturns the model’s metrics added using compile, add_metric APIs. metrics_namesReturns the model’s display labels for all outputs. nameReturns the name of this module as passed or determined in the ctor. name_scopeReturns a tf.name_scope instance for this class. non_trainable_variablesnon_trainable_weightsoutbound_nodesDeprecated, do NOT use! Only for compatibility with external Keras. outputRetrieves the output tensor(s) of a layer. output_maskRetrieves the output mask tensor(s) of a layer. output_shapeRetrieves the output shape(s) of a layer. run_eagerlySettable attribute indicating whether the model should run eagerly. sample_weightsstate_updatesReturns the updates from all layers that are stateful. statefulsubmodulesSequence of all sub-modules. trainabletrainable_variablesSequence of variables owned by this module and it’s submodules. trainable_weightsupdatesvariablesReturns the list of all layer variables/weights. weightsReturns the list of all layer variables/weights. -
__init__(filters, normalization_layer=<class 'ashpy.layers.instance_normalization.InstanceNormalization'>, non_linearity=<class 'tensorflow.python.keras.layers.advanced_activations.ReLU'>, kernel_size=3, num_blocks=2)[source]¶ Build the ResNet block composed by num_blocks.
- Each block is composed by
- Conv2D with strides 1 and padding “same”
- Normalization Layer
- Non Linearity
The final result is the output of the ResNet + input.
Parameters: - filters (int) – initial filters (same as the output filters).
- normalization_layer (
tf.keras.layers.Layer) – layer of normalization used by the residual block. - non_linearity (
tf.keras.layers.Layer) – non linearity used in the resnet block. - kernel_size (int) – kernel size used in the resnet block.
- num_blocks (int) – number of blocks, each block is composed by conv, normalization and non linearity.
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