StridedConvolutionBlock¶
-
class
maze.perception.blocks.feed_forward.strided_conv.
StridedConvolutionBlock
(*args: Any, **kwargs: Any)¶ A block containing multiple subsequent strided convolution layers.
One layer consists of a single strided convolution followed by an activation function. The block expects the input tensors to have the from (batch-dim, channel-dim, row-dim, column-dim).
- Parameters
in_keys – One key identifying the input tensors.
out_keys – One key identifying the output tensors.
in_shapes – List of input shapes.
hidden_channels – List containing the number of hidden channels for hidden layers.
hidden_kernels – List containing the size of the convolving kernels.
non_lin – The non-linearity to apply after each layer.
convolution_dimension – Dimension of the convolution to use [1, 2, 3]
hidden_strides – List containing the strides of the convolutions.
hidden_dilations – List containing the spacing between kernel elements.
hidden_padding – List containing the padding added to both sides of the input
padding_mode – ‘zeros’, ‘reflect’, ‘replicate’ or ‘circular’.
-
build_layer_dict
() → collections.OrderedDict¶ Compiles a block-specific dictionary of network layers. This could be overwritten by derived layers (e.g. to get a ‘BatchNormalizedConvolutionBlock’).
- Returns
Ordered dictionary of torch modules [str, nn.Module]
-
normalized_forward
(block_input: Dict[str, torch.Tensor]) → Dict[str, torch.Tensor]¶ (overrides
ShapeNormalizationBlock
)implementation of
ShapeNormalizationBlock
interface