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Adds an N-D convolution followed by an optional batch_norm layer.
tf.contrib.layers.conv1d(
inputs, num_outputs, kernel_size, stride=1, padding='SAME', data_format=None,
rate=1, activation_fn=tf.nn.relu, normalizer_fn=None, normalizer_params=None,
weights_initializer=initializers.xavier_initializer(), weights_regularizer=None,
biases_initializer=tf.zeros_initializer(), biases_regularizer=None, reuse=None,
variables_collections=None, outputs_collections=None, trainable=True, scope=None
)
It is required that 1 <= N <= 3.
convolution
creates a variable called weights
, representing the
convolutional kernel, that is convolved (actually cross-correlated) with the
inputs
to produce a Tensor
of activations. If a normalizer_fn
is
provided (such as batch_norm
), it is then applied. Otherwise, if
normalizer_fn
is None and a biases_initializer
is provided then a biases
variable would be created and added the activations. Finally, if
activation_fn
is not None
, it is applied to the activations as well.
Performs atrous convolution with input stride/dilation rate equal to rate
if a value > 1 for any dimension of rate
is specified. In this case
stride
values != 1 are not supported.
Args | |
---|---|
inputs
|
A Tensor of rank N+2 of shape [batch_size] + input_spatial_shape +
[in_channels] if data_format does not start with "NC" (default), or
[batch_size, in_channels] + input_spatial_shape if data_format starts
with "NC".
|
num_outputs
|
Integer, the number of output filters. |
kernel_size
|
A sequence of N positive integers specifying the spatial dimensions of the filters. Can be a single integer to specify the same value for all spatial dimensions. |
stride
|
A sequence of N positive integers specifying the stride at which to
compute output. Can be a single integer to specify the same value for all
spatial dimensions. Specifying any stride value != 1 is incompatible
with specifying any rate value != 1.
|
padding
|
One of "VALID" or "SAME" .
|
data_format
|
A string or None. Specifies whether the channel dimension of
the input and output is the last dimension (default, or if data_format
does not start with "NC"), or the second dimension (if data_format
starts with "NC"). For N=1, the valid values are "NWC" (default) and
"NCW". For N=2, the valid values are "NHWC" (default) and "NCHW". For
N=3, the valid values are "NDHWC" (default) and "NCDHW".
|
rate
|
A sequence of N positive integers specifying the dilation rate to use
for atrous convolution. Can be a single integer to specify the same value
for all spatial dimensions. Specifying any rate value != 1 is
incompatible with specifying any stride value != 1.
|
activation_fn
|
Activation function. The default value is a ReLU function. Explicitly set it to None to skip it and maintain a linear activation. |
normalizer_fn
|
Normalization function to use instead of biases . If
normalizer_fn is provided then biases_initializer and
biases_regularizer are ignored and biases 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 dictionary containing a different list of collection per variable. |
outputs_collections
|
Collection to add the outputs. |
trainable
|
If True also add variables to the graph collection
GraphKeys.TRAINABLE_VARIABLES (see tf.Variable).
|
scope
|
Optional scope for variable_scope .
|
conv_dims
|
Optional convolution dimensionality, when set it would use the corresponding convolution (e.g. 2 for Conv 2D, 3 for Conv 3D, ..). When leaved to None it would select the convolution dimensionality based on the input rank (i.e. Conv ND, with N = input_rank - 2). |
Returns | |
---|---|
A tensor representing the output of the operation. |
Raises | |
---|---|
ValueError
|
If data_format is invalid.
|
ValueError
|
Both 'rate' and stride are not uniformly 1.
|