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Diffstat (limited to 'VolumetricFullConvolution.lua')
-rw-r--r--VolumetricFullConvolution.lua19
1 files changed, 0 insertions, 19 deletions
diff --git a/VolumetricFullConvolution.lua b/VolumetricFullConvolution.lua
index 3c86a14..58eaa1d 100644
--- a/VolumetricFullConvolution.lua
+++ b/VolumetricFullConvolution.lua
@@ -57,22 +57,6 @@ function VolumetricFullConvolution:reset(stdv)
self.bias:uniform(-stdv, stdv)
end
-local function makeContiguous(self, input, gradOutput)
- if not input:isContiguous() then
- self._input = self._input or input.new()
- self._input:resizeAs(input):copy(input)
- input = self._input
- end
- if gradOutput then
- if not gradOutput:isContiguous() then
- self._gradOutput = self._gradOutput or gradOutput.new()
- self._gradOutput:resizeAs(gradOutput):copy(gradOutput)
- gradOutput = self._gradOutput
- end
- end
- return input, gradOutput
-end
-
local function calculateAdj(targetSize, ker, pad, stride)
return (targetSize + 2 * pad - ker) % stride
end
@@ -113,7 +97,6 @@ function VolumetricFullConvolution:updateOutput(input)
adjH = calculateAdj(tH, self.kH, self.padH, self.dH)
end
- inputTensor = makeContiguous(self, inputTensor)
inputTensor.THNN.VolumetricFullConvolution_updateOutput(
inputTensor:cdata(),
self.output:cdata(),
@@ -153,7 +136,6 @@ function VolumetricFullConvolution:updateGradInput(input, gradOutput)
end
end
- inputTensor, gradOutput = makeContiguous(self, inputTensor, gradOutput)
inputTensor.THNN.VolumetricFullConvolution_updateGradInput(
inputTensor:cdata(),
gradOutput:cdata(),
@@ -199,7 +181,6 @@ function VolumetricFullConvolution:accGradParameters(input, gradOutput, scale)
adjH = calculateAdj(tH, self.kH, self.padH, self.dH)
end
- inputTensor, gradOutput = makeContiguous(self, inputTensor, gradOutput)
inputTensor.THNN.VolumetricFullConvolution_accGradParameters(
inputTensor:cdata(),
gradOutput:cdata(),