Package ai.djl.nn.convolutional
Class Conv2dTranspose
java.lang.Object
ai.djl.nn.AbstractBaseBlock
ai.djl.nn.AbstractBlock
ai.djl.nn.convolutional.Deconvolution
ai.djl.nn.convolutional.Conv2dTranspose
- All Implemented Interfaces:
Block
The input to a
Conv2dTranspose is an NDList with a single 4-D
NDArray. The layout of the NDArray must be "NCHW".
The shapes are
data: (batch_size, channel, height, width)weight: (num_filter, channel, kernel[0], kernel[1])bias: (num_filter,)out: (batch_size, num_filter, out_height, out_width)
out_height = f(height, kernel[0], pad[0], oPad[0], stride[0], dilate[0])
out_width = f(width, kernel[1], pad[1], oPad[1], stride[1], dilate[1])
where f(x, k, p, oP, s, d) = (x-1)*s-2*p+k+oP
Both weight and bias are learn-able parameters.
- See Also:
-
Nested Class Summary
Nested ClassesModifier and TypeClassDescriptionstatic final classThe Builder to construct aConv2dTransposetype ofBlock.Nested classes/interfaces inherited from class ai.djl.nn.convolutional.Deconvolution
Deconvolution.DeconvolutionBuilder<T extends Deconvolution.DeconvolutionBuilder> -
Field Summary
Fields inherited from class ai.djl.nn.convolutional.Deconvolution
bias, dilation, filters, groups, includeBias, kernelShape, outPadding, padding, stride, weightFields inherited from class ai.djl.nn.AbstractBlock
children, parametersFields inherited from class ai.djl.nn.AbstractBaseBlock
inputNames, inputShapes, outputDataTypes, version -
Method Summary
Modifier and TypeMethodDescriptionstatic Conv2dTranspose.Builderbuilder()Creates a builder to build aConv2dTranspose.static NDListconv2dTranspose(NDArray input, NDArray weight) Applies 2D deconvolution over an input signal composed of several input planes.static NDListconv2dTranspose(NDArray input, NDArray weight, NDArray bias) Applies 2D deconvolution over an input signal composed of several input planes.static NDListconv2dTranspose(NDArray input, NDArray weight, NDArray bias, Shape stride) Applies 2D deconvolution over an input signal composed of several input planes.static NDListApplies 2D deconvolution over an input signal composed of several input planes.static NDListconv2dTranspose(NDArray input, NDArray weight, NDArray bias, Shape stride, Shape padding, Shape outPadding) Applies 2D deconvolution over an input signal composed of several input planes.static NDListconv2dTranspose(NDArray input, NDArray weight, NDArray bias, Shape stride, Shape padding, Shape outPadding, Shape dilation) Applies 2D deconvolution over an input signal composed of several input planes.static NDListconv2dTranspose(NDArray input, NDArray weight, NDArray bias, Shape stride, Shape padding, Shape outPadding, Shape dilation, int groups) Applies 2D deconvolution over an input signal composed of several input planes.protected LayoutType[]Returns the expected layout of the input.protected StringReturns the string representing the layout of the input.protected intReturns the number of dimensions of the input.Methods inherited from class ai.djl.nn.convolutional.Deconvolution
beforeInitialize, forwardInternal, getOutputShapes, loadMetadata, prepareMethods inherited from class ai.djl.nn.AbstractBlock
addChildBlock, addChildBlock, addChildBlockSingleton, addParameter, getChildren, getDirectParametersMethods inherited from class ai.djl.nn.AbstractBaseBlock
cast, clear, describeInput, forward, forward, forwardInternal, getInputShapes, getOutputDataTypes, getParameters, initialize, initializeChildBlocks, isInitialized, loadParameters, readInputShapes, saveInputShapes, saveMetadata, saveParameters, setInitializer, setInitializer, setInitializer, toStringMethods inherited from class java.lang.Object
clone, equals, finalize, getClass, hashCode, notify, notifyAll, wait, wait, waitMethods inherited from interface ai.djl.nn.Block
forward, freezeParameters, freezeParameters, getCustomMetadata, getOutputShapes
-
Method Details
-
getExpectedLayout
Returns the expected layout of the input.- Specified by:
getExpectedLayoutin classDeconvolution- Returns:
- the expected layout of the input
-
getStringLayout
Returns the string representing the layout of the input.- Specified by:
getStringLayoutin classDeconvolution- Returns:
- the string representing the layout of the input
-
numDimensions
protected int numDimensions()Returns the number of dimensions of the input.- Specified by:
numDimensionsin classDeconvolution- Returns:
- the number of dimensions of the input
-
conv2dTranspose
Applies 2D deconvolution over an input signal composed of several input planes.- Parameters:
input- the inputNDArrayof shape (batchSize, inputChannel, height, width)weight- filtersNDArrayof shape (outChannel, inputChannel/groups, height, width)- Returns:
- the output of the conv2dTranspose operation
-
conv2dTranspose
Applies 2D deconvolution over an input signal composed of several input planes.- Parameters:
input- the inputNDArrayof shape (batchSize, inputChannel, height, width)weight- filtersNDArrayof shape (outChannel, inputChannel/groups, height, width)bias- biasNDArrayof shape (outChannel)- Returns:
- the output of the conv2dTranspose operation
-
conv2dTranspose
Applies 2D deconvolution over an input signal composed of several input planes.- Parameters:
input- the inputNDArrayof shape (batchSize, inputChannel, height, width)weight- filtersNDArrayof shape (outChannel, inputChannel/groups, height, width)bias- biasNDArrayof shape (outChannel)stride- the stride of the deconvolving kernel: Shape(height, width)- Returns:
- the output of the conv2dTranspose operation
-
conv2dTranspose
public static NDList conv2dTranspose(NDArray input, NDArray weight, NDArray bias, Shape stride, Shape padding) Applies 2D deconvolution over an input signal composed of several input planes.- Parameters:
input- the inputNDArrayof shape (batchSize, inputChannel, height, width)weight- filtersNDArrayof shape (outChannel, inputChannel/groups, height, width)bias- biasNDArrayof shape (outChannel)stride- the stride of the deconvolving kernel: Shape(height, width)padding- implicit paddings on both sides of the input: Shape(height, width)- Returns:
- the output of the conv2dTranspose operation
-
conv2dTranspose
public static NDList conv2dTranspose(NDArray input, NDArray weight, NDArray bias, Shape stride, Shape padding, Shape outPadding) Applies 2D deconvolution over an input signal composed of several input planes.- Parameters:
input- the inputNDArrayof shape (batchSize, inputChannel, height, width)weight- filtersNDArrayof shape (outChannel, inputChannel/groups, height, width)bias- biasNDArrayof shape (outChannel)stride- the stride of the deconvolving kernel: Shape(height, width)padding- implicit paddings on both sides of the input: Shape(height, width)outPadding- Controls the amount of implicit zero-paddings on both sides of the output for outputPadding number of points for each dimension.- Returns:
- the output of the conv2dTranspose operation
-
conv2dTranspose
public static NDList conv2dTranspose(NDArray input, NDArray weight, NDArray bias, Shape stride, Shape padding, Shape outPadding, Shape dilation) Applies 2D deconvolution over an input signal composed of several input planes.- Parameters:
input- the inputNDArrayof shape (batchSize, inputChannel, height, width)weight- filtersNDArrayof shape (outChannel, inputChannel/groups, height, width)bias- biasNDArrayof shape (outChannel)stride- the stride of the deconvolving kernel: Shape(height, width)padding- implicit paddings on both sides of the input: Shape(height, width)outPadding- Controls the amount of implicit zero-paddings on both sides of the output for outputPadding number of points for each dimension.dilation- the spacing between kernel elements: Shape(height, width)- Returns:
- the output of the conv2dTranspose operation
-
conv2dTranspose
public static NDList conv2dTranspose(NDArray input, NDArray weight, NDArray bias, Shape stride, Shape padding, Shape outPadding, Shape dilation, int groups) Applies 2D deconvolution over an input signal composed of several input planes.- Parameters:
input- the inputNDArrayof shape (batchSize, inputChannel, height, width)weight- filtersNDArrayof shape (outChannel, inputChannel/groups, height, width)bias- biasNDArrayof shape (outChannel)stride- the stride of the deconvolving kernel: Shape(height, width)padding- implicit paddings on both sides of the input: Shape(height, width)outPadding- Controls the amount of implicit zero-paddings on both sides of the output for outputPadding number of points for each dimension. Shape(height, width)dilation- the spacing between kernel elements: Shape(height, width)groups- split input into groups: input channel(input.size(1)) should be divisible by the number of groups- Returns:
- the output of the conv2dTranspose operation
-
builder
Creates a builder to build aConv2dTranspose.- Returns:
- a new builder
-