tf.contrib.layers.convolution2d_transpose(*args, **kwargs)
Adds a convolution2d_transpose with an optional batch normalization layer.
The function creates a variable called weights
, representing the kernel, that is convolved with the input. If batch_norm_params
is None
, a second variable called 'biases' is added to the result of the operation.
Args:
-
inputs
: a tensor of size [batch_size, height, width, channels]. -
num_outputs
: integer, the number of output filters. -
kernel_size
: a list of length 2 holding the [kernel_height, kernel_width] of of the filters. Can be an int if both values are the same. -
stride
: a list of length 2: [stride_height, stride_width]. Can be an int if both strides are the same. Note that presently both strides must have the same value. -
padding
: one of 'VALID' or 'SAME'. -
activation_fn
: activation function, set to None to skip it and maintain a linear activation. -
normalizer_fn
: normalization function to use instead ofbiases
. Ifnormalizer_fn
is provided thenbiases_initializer
andbiases_regularizer
are ignored andbiases
are not created nor added. default set to None for no normalizer function -
normalizer_params
: normalization function parameters. -
weights_initializer
: An initializer for the weights. -
weights_regularizer
: Optional regularizer for the weights. -
biases_initializer
: An initializer for the biases. If None skip biases. -
biases_regularizer
: Optional regularizer for the biases. -
reuse
: whether or not the layer and its variables should be reused. To be able to reuse the layer scope must be given. -
variables_collections
: optional list of collections for all the variables or a dictionay containing a different list of collection per variable. -
outputs_collections
: collection to add the outputs. -
trainable
: whether or not the variables should be trainable or not. -
scope
: Optional scope for variable_scope.
Returns:
a tensor representing the output of the operation.
Raises:
-
ValueError
: if 'kernel_size' is not a list of length 2.
Please login to continue.