BaseDecoder¶
Inheritance Diagram

-
class
ashpy.models.convolutional.decoders.BaseDecoder(layer_spec_input_res, layer_spec_target_res, kernel_size, initial_filters, filters_cap, channels, use_dropout=True, dropout_prob=0.3, non_linearity=<class 'tensorflow.python.keras.layers.advanced_activations.LeakyReLU'>)[source]¶ Bases:
ashpy.models.convolutional.interfaces.Conv2DInterfacePrimitive Model for all decoder (i.e., transpose convolution) based architecture.
Notes
Default to DCGAN Generator architecture.
Examples
Direct Usage:
dummy_generator = BaseDecoder( layer_spec_input_res=(8, 8), layer_spec_target_res=(64, 64), kernel_size=(5, 5), initial_filters=1024, filters_cap=16, channels=3, )
Subclassing
class DummyGenerator(BaseDecoder): def call(self, input, training=True): print("Dummy Generator!") return input dummy_generator = DummyGenerator( layer_spec_input_res=(8, 8), layer_spec_target_res=(32, 32), kernel_size=(5, 5), initial_filters=1024, filters_cap=16, channels=3, ) dummy_generator(tf.random.normal((1, 100)))
Dummy Generator!
Methods
__init__(layer_spec_input_res, …[, …])Instantiate the
BaseDecoder.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__(layer_spec_input_res, layer_spec_target_res, kernel_size, initial_filters, filters_cap, channels, use_dropout=True, dropout_prob=0.3, non_linearity=<class 'tensorflow.python.keras.layers.advanced_activations.LeakyReLU'>)[source]¶ Instantiate the
BaseDecoder.- Model Assembly:
1.
_add_initial_block(): Ingest thetf.keras.Modelinputs and prepare them for_add_building_block().2.
_add_building_block(): Core of the model, the layers specified here get added to thetf.keras.Modelmultiple times consuming the hyperparameters generated in the_get_layer_spec().3.
_add_final_block(): Final block of ourtf.keras.Model, take the model after_add_building_block()and prepare them for the for the final output.
- Parameters
layer_spec_input_res (
tupleof (int,int)) – Shape of the_get_layer_spec()input tensors.layer_spec_target_res – (
tupleof (int,int)): Shape of tensor desired as output of_get_layer_spec().kernel_size (
tupleof (int,int)) – Kernel used by the convolution layers.initial_filters (int) – Numbers of filters at the end of the first block.
filters_cap (int) – Cap filters to a set amount, in the case of Decoder is a floor value AKA the minimum amount of filters.
channels (int) – Channels of the output images (1 for Grayscale, 3 for RGB).
- Returns
- Raises
ValueError – If filters_cap > initial_filters
-
_add_building_block(filters)[source]¶ Construct the core of the
tf.keras.Model.The layers specified here get added to the
tf.keras.Modelmultiple times consuming the hyperparameters generated in the_get_layer_spec().- Parameters
filters (int) – Number of filters to use for this iteration of the Building Block.
-
_add_final_block(channels)[source]¶ Take the results of
_add_building_block()and prepare them for the for the final output.
-
_add_initial_block(initial_filters, input_res)[source]¶ Ingest the
tf.keras.Modelinputs and prepare them for_add_building_block().