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5c88f072
编写于
10月 20, 2016
作者:
W
wangyang59
浏览文件
操作
浏览文件
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电子邮件补丁
差异文件
initial take on deconv layers
上级
05204af1
变更
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5 changed file
with
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+670
-0
paddle/gserver/layers/ConvTransBaseLayer.cpp
paddle/gserver/layers/ConvTransBaseLayer.cpp
+77
-0
paddle/gserver/layers/ConvTransBaseLayer.h
paddle/gserver/layers/ConvTransBaseLayer.h
+112
-0
paddle/gserver/layers/ExpandConvTransLayer.cpp
paddle/gserver/layers/ExpandConvTransLayer.cpp
+332
-0
paddle/gserver/layers/ExpandConvTransLayer.h
paddle/gserver/layers/ExpandConvTransLayer.h
+106
-0
paddle/gserver/tests/test_LayerGrad.cpp
paddle/gserver/tests/test_LayerGrad.cpp
+43
-0
未找到文件。
paddle/gserver/layers/ConvTransBaseLayer.cpp
0 → 100644
浏览文件 @
5c88f072
/* Copyright (c) 2016 Baidu, Inc. All Rights Reserve.
Licensed under the Apache License, Version 2.0 (the "License");
you may not use this file except in compliance with the License.
You may obtain a copy of the License at
http://www.apache.org/licenses/LICENSE-2.0
Unless required by applicable law or agreed to in writing, software
distributed under the License is distributed on an "AS IS" BASIS,
WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
See the License for the specific language governing permissions and
limitations under the License. */
#include "paddle/utils/Logging.h"
#include "ConvTransBaseLayer.h"
namespace
paddle
{
bool
ConvTransBaseLayer
::
init
(
const
LayerMap
&
layerMap
,
const
ParameterMap
&
parameterMap
)
{
/* Initialize the basic parent class */
Layer
::
init
(
layerMap
,
parameterMap
);
/* Initialize the convolutional layer parameter */
channel_
=
config_
.
num_filters
();
sharedBiases_
=
config_
.
shared_biases
();
for
(
auto
&
inputConfig
:
config_
.
inputs
())
{
const
ConvConfig
&
conf
=
inputConfig
.
conv_conf
();
padding_
.
push_back
(
conf
.
padding
());
stride_
.
push_back
(
conf
.
stride
());
filterSize_
.
push_back
(
conf
.
filter_size
());
paddingY_
.
push_back
(
conf
.
padding_y
());
strideY_
.
push_back
(
conf
.
stride_y
());
filterSizeY_
.
push_back
(
conf
.
filter_size_y
());
filterPixels_
.
push_back
(
filterSize_
.
back
()
*
filterSizeY_
.
back
());
numFilters_
.
push_back
(
conf
.
channels
());
imgSize_
.
push_back
(
conf
.
img_size
());
imgPixels_
.
push_back
(
imgSize_
.
back
()
*
imgSize_
.
back
());
groups_
.
push_back
(
conf
.
groups
());
filterChannels_
.
push_back
(
conf
.
filter_channels
());
outputX_
.
push_back
(
conf
.
output_x
());
outputs_
.
push_back
(
outputX_
.
back
()
*
outputX_
.
back
());
}
/* initialize the weightList */
CHECK
(
inputLayers_
.
size
()
==
parameters_
.
size
());
for
(
size_t
i
=
0
;
i
<
inputLayers_
.
size
();
i
++
)
{
size_t
height
,
width
;
height
=
filterPixels_
[
i
]
*
filterChannels_
[
i
];
width
=
numFilters_
[
i
];
// create a new weight
CHECK_EQ
(
parameters_
[
i
]
->
getSize
(),
width
*
height
);
Weight
*
w
=
new
Weight
(
height
,
width
,
parameters_
[
i
]);
weights_
.
emplace_back
(
w
);
}
/* initialize the biases_ */
if
(
biasParameter_
.
get
()
!=
NULL
)
{
if
(
sharedBiases_
)
{
CHECK_EQ
((
size_t
)
channel_
,
biasParameter_
->
getSize
());
biases_
=
std
::
unique_ptr
<
Weight
>
(
new
Weight
(
channel_
,
1
,
biasParameter_
));
}
else
{
biases_
=
std
::
unique_ptr
<
Weight
>
(
new
Weight
(
getSize
(),
1
,
biasParameter_
));
}
}
// default caffe model
caffeMode_
=
true
;
return
true
;
}
}
// namespace paddle
paddle/gserver/layers/ConvTransBaseLayer.h
0 → 100644
浏览文件 @
5c88f072
/* Copyright (c) 2016 Baidu, Inc. All Rights Reserve.
Licensed under the Apache License, Version 2.0 (the "License");
you may not use this file except in compliance with the License.
You may obtain a copy of the License at
http://www.apache.org/licenses/LICENSE-2.0
Unless required by applicable law or agreed to in writing, software
distributed under the License is distributed on an "AS IS" BASIS,
WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
See the License for the specific language governing permissions and
limitations under the License. */
#pragma once
#include "Layer.h"
namespace
paddle
{
/**
* @brief A Base Convolution Layer, which convolves the input image
* with learned filters and (optionally) adds biases.
*/
class
ConvTransBaseLayer
:
public
Layer
{
protected:
typedef
std
::
vector
<
int
>
IntV
;
/// The number of channel in image (the output of the deconv layer).
int
channel_
;
/// The x dimension of the padding.
IntV
padding_
;
/// The y dimension of the padding.
IntV
paddingY_
;
/// The x dimension of the stride.
IntV
stride_
;
/// The y dimension of the stride.
IntV
strideY_
;
/// The x dimension of a filter kernel.
IntV
filterSize_
;
/// The y dimension of a filter kernel.
IntV
filterSizeY_
;
/// The number of filters(i.e. the number channels of the deconv layer input)
IntV
numFilters_
;
/// The spatial dimensions of input feature map.
IntV
imgSize_
;
/// The total pixel size of input feature map.
/// imgPixels_ = imgSizeX_ * imgSizeY_.
IntV
imgPixels_
;
/// filterPixels_ = filterSizeX_ * filterSizeY_.
IntV
filterPixels_
;
/// filterChannels_ = channels_/groups_.
IntV
filterChannels_
;
/// The spatial dimensions of output feature map.
IntV
outputX_
;
/// The spatial dimensions of output feature map.
IntV
outputs_
;
/// Group size, refer to grouped convolution in
/// Alex Krizhevsky's paper: when group=2, the first half of the
/// filters are only connected to the first half of the input channels,
/// and the second half only connected to the second half.
IntV
groups_
;
/// Whether the bias is shared for feature in each channel.
bool
sharedBiases_
;
/// shape of weight: (numChannels * filterPixels_, numFilters)
WeightList
weights_
;
/// If shared_biases is false shape of bias: (numFilters_, 1)
/// If shared_biases is ture shape of bias:
/// (numFilters_ * outputX * outputY, 1)
std
::
unique_ptr
<
Weight
>
biases_
;
/// True by default. The only difference is the calculation
/// of output size.
bool
caffeMode_
;
public:
explicit
ConvTransBaseLayer
(
const
LayerConfig
&
config
)
:
Layer
(
config
)
{}
virtual
bool
init
(
const
LayerMap
&
layerMap
,
const
ParameterMap
&
parameterMap
);
Weight
&
getWeight
(
int
idx
)
{
return
*
weights_
[
idx
];
}
/**
* Calculate image size based on caffeMode_ from outputSize.
* - input(+padding): 0123456789
* - imageSize(+padding) = 10;
* - filterSize = 3;
* - stride = 2;
* - caffeMode_ is true:
- output: (012), (234), (456), (678)
- outputSize = 4;
* - caffeMode_ is false:
* - output: (012), (234), (456), (678), (9)
* - outputSize = 5;
*/
int
imageSize
(
int
outputSize
,
int
filterSize
,
int
padding
,
int
stride
)
{
int
imageSize
;
if
(
!
caffeMode_
)
{
imageSize
=
(
outputSize
-
1
)
*
stride
+
filterSize
-
2
*
padding
-
stride
+
1
;
}
else
{
imageSize
=
(
outputSize
-
1
)
*
stride
+
filterSize
-
2
*
padding
;
}
CHECK_GE
(
imageSize
,
1
);
return
imageSize
;
}
};
}
// namespace paddle
paddle/gserver/layers/ExpandConvTransLayer.cpp
0 → 100644
浏览文件 @
5c88f072
/* Copyright (c) 2016 Baidu, Inc. All Rights Reserve.
Licensed under the Apache License, Version 2.0 (the "License");
you may not use this file except in compliance with the License.
You may obtain a copy of the License at
http://www.apache.org/licenses/LICENSE-2.0
Unless required by applicable law or agreed to in writing, software
distributed under the License is distributed on an "AS IS" BASIS,
WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
See the License for the specific language governing permissions and
limitations under the License. */
#include "paddle/utils/Logging.h"
#include "paddle/utils/Stat.h"
#include "ExpandConvTransLayer.h"
namespace
paddle
{
REGISTER_LAYER
(
exconvt
,
ExpandConvTransLayer
);
bool
ExpandConvTransLayer
::
init
(
const
LayerMap
&
layerMap
,
const
ParameterMap
&
parameterMap
)
{
/* Initialize the basic convolutional parent class */
ConvTransBaseLayer
::
init
(
layerMap
,
parameterMap
);
/* Initialize the projection */
for
(
auto
&
inputConfig
:
config_
.
inputs
())
{
const
ConvConfig
&
conf
=
inputConfig
.
conv_conf
();
subM_
.
push_back
(
conf
.
channels
()
/
conf
.
groups
());
subN_
.
push_back
(
conf
.
output_x
()
*
conf
.
output_x
());
subK_
.
push_back
(
channel_
*
conf
.
filter_size
()
*
conf
.
filter_size
()
/
conf
.
groups
());
/* Consistent caffe mode for multiple input */
caffeMode_
=
conf
.
caffe_mode
();
}
return
true
;
}
// Why this is necessary after calling init?
size_t
ExpandConvTransLayer
::
getSize
()
{
CHECK_NE
(
inputLayers_
.
size
(),
0UL
);
imgSizeH_
.
clear
();
imgSizeW_
.
clear
();
outputH_
.
clear
();
outputW_
.
clear
();
subN_
.
clear
();
size_t
layerSize
=
0
;
for
(
size_t
i
=
0
;
i
<
inputLayers_
.
size
();
i
++
)
{
outputH_
.
push_back
(
inputLayers_
[
i
]
->
getOutput
().
getFrameHeight
());
outputW_
.
push_back
(
inputLayers_
[
i
]
->
getOutput
().
getFrameWidth
());
if
(
outputH_
[
i
]
==
0
)
outputH_
[
i
]
=
outputX_
[
i
];
if
(
outputW_
[
i
]
==
0
)
outputW_
[
i
]
=
outputX_
[
i
];
imgSizeH_
.
push_back
(
imageSize
(
outputH_
[
i
],
filterSize_
[
i
],
padding_
[
i
],
stride_
[
i
]));
imgSizeW_
.
push_back
(
imageSize
(
outputW_
[
i
],
filterSize_
[
i
],
padding_
[
i
],
stride_
[
i
]));
subN_
.
push_back
(
outputH_
[
i
]
*
outputW_
[
i
]);
CHECK
(
layerSize
==
0
||
imgSizeH_
[
i
]
*
imgSizeW_
[
i
]
*
(
size_t
)
channel_
==
layerSize
);
layerSize
=
imgSizeH_
[
i
]
*
imgSizeW_
[
i
]
*
channel_
;
}
getOutput
().
setFrameHeight
(
imgSizeH_
[
0
]);
getOutput
().
setFrameWidth
(
imgSizeW_
[
0
]);
return
layerSize
;
}
void
ExpandConvTransLayer
::
resetExpandInput
(
size_t
height
,
size_t
width
)
{
Matrix
::
resizeOrCreate
(
expandInput_
,
height
,
width
,
false
,
useGpu_
);
}
/*void ExpandConvTransLayer::resetConvOutput(size_t batchSize, int inIdx) {
Matrix::resizeOrCreate(transOutValue_, batchSize * numFilters_, subN_[inIdx],
false, useGpu_);
}*/
void
ExpandConvTransLayer
::
addSharedBias
()
{
size_t
mapW
=
getSize
()
/
channel_
;
size_t
mapH
=
getOutputValue
()
->
getElementCnt
()
/
mapW
;
MatrixPtr
out
=
Matrix
::
create
(
getOutputValue
()
->
getData
(),
mapH
,
mapW
,
false
,
useGpu_
);
Matrix
::
resizeOrCreate
(
transOutValue_
,
mapW
,
mapH
,
false
,
useGpu_
);
out
->
transpose
(
transOutValue_
,
false
);
// false means no memory allocation
transOutValue_
->
reshape
(
transOutValue_
->
getElementCnt
()
/
channel_
,
channel_
);
MatrixPtr
bias
=
Matrix
::
create
(
biases_
->
getW
()
->
getData
(),
1
,
biases_
->
getW
()
->
getElementCnt
(),
false
,
useGpu_
);
transOutValue_
->
addBias
(
*
bias
,
1.0
f
);
transOutValue_
->
reshape
(
mapW
,
mapH
);
transOutValue_
->
transpose
(
out
,
false
);
// false means no memory allocation
out
->
clear
();
bias
->
clear
();
}
void
ExpandConvTransLayer
::
addUnsharedBias
()
{
MatrixPtr
outValue
=
getOutputValue
();
MatrixPtr
bias
=
Matrix
::
create
(
biases_
->
getW
()
->
getData
(),
1
,
biases_
->
getW
()
->
getElementCnt
(),
false
,
useGpu_
);
outValue
->
addBias
(
*
bias
,
1.0
f
);
}
void
ExpandConvTransLayer
::
expandOneFrame
(
MatrixPtr
image
,
size_t
startIdx
,
int
inIdx
)
{
resetExpandInput
(
subK_
[
inIdx
]
*
groups_
[
inIdx
],
subN_
[
inIdx
]);
real
*
imgData
=
image
->
getData
()
+
startIdx
*
image
->
getWidth
();
MatrixPtr
imageTmp
=
Matrix
::
create
(
imgData
,
1
,
imgSizeH_
[
inIdx
]
*
imgSizeW_
[
inIdx
]
*
channel_
,
false
,
useGpu_
);
expandInput_
->
convExpand
(
*
imageTmp
,
imgSizeH_
[
inIdx
],
imgSizeW_
[
inIdx
],
channel_
,
filterSize_
[
inIdx
],
filterSize_
[
inIdx
],
stride_
[
inIdx
],
stride_
[
inIdx
],
padding_
[
inIdx
],
padding_
[
inIdx
],
outputH_
[
inIdx
],
outputW_
[
inIdx
]);
imageTmp
->
clear
();
}
void
ExpandConvTransLayer
::
expandBackOnce
(
MatrixPtr
imageGrad
,
int
inIdx
,
int
startIdx
)
{
int
subM
=
subM_
[
inIdx
];
int
subN
=
subN_
[
inIdx
];
int
subK
=
subK_
[
inIdx
];
LayerPtr
prevLayer
=
getPrev
(
inIdx
);
if
(
NULL
==
prevLayer
->
getOutputGrad
())
{
return
;
}
expandOneFrame
(
imageGrad
,
startIdx
,
inIdx
);
real
*
outGradData
=
prevLayer
->
getOutputGrad
()
->
getData
()
+
startIdx
*
subN
*
numFilters_
[
inIdx
];
real
*
wgtData
=
weights_
[
inIdx
]
->
getW
()
->
getData
();
real
*
expInData
=
expandInput_
->
getData
();
for
(
int
g
=
0
;
g
<
groups_
[
inIdx
];
++
g
)
{
MatrixPtr
A
=
Matrix
::
create
(
wgtData
,
subK
,
subM
,
true
,
useGpu_
);
// mark transpose
MatrixPtr
B
=
Matrix
::
create
(
expInData
,
subK
,
subN
,
false
,
useGpu_
);
MatrixPtr
C
=
Matrix
::
create
(
outGradData
,
subM
,
subN
,
false
,
useGpu_
);
C
->
mul
(
A
,
B
,
1
,
1
);
A
->
clear
();
B
->
clear
();
C
->
clear
();
wgtData
+=
subK
*
subM
;
expInData
+=
subK
*
subN
;
outGradData
+=
subM
*
subN
;
}
}
void
ExpandConvTransLayer
::
forward
(
PassType
passType
)
{
Layer
::
forward
(
passType
);
/* malloc memory for the output_ if necessary */
/* note: one sample correspond to one colum, and the
* transOutValue correspond sample to one row */
int
batchSize
=
inputLayers_
[
0
]
->
getOutputValue
()
->
getHeight
();
resetOutput
(
batchSize
,
getSize
());
MatrixPtr
output
=
nullptr
;
for
(
size_t
i
=
0
;
i
!=
inputLayers_
.
size
();
++
i
)
{
LayerPtr
prevLayer
=
getPrev
(
i
);
output
=
prevLayer
->
getOutputValue
();
REGISTER_TIMER_INFO
(
"shrinkFwd"
,
getName
().
c_str
());
shrinkFwd
(
output
,
i
);
}
/* add the bias-vector */
if
(
biases_
.
get
()
!=
NULL
)
{
if
(
sharedBiases_
)
{
addSharedBias
();
}
else
{
addUnsharedBias
();
}
}
/* activation */
forwardActivation
();
}
void
ExpandConvTransLayer
::
shrinkFwd
(
MatrixPtr
output
,
int
inpIdx
)
{
int
subM
=
subM_
[
inpIdx
];
int
subN
=
subN_
[
inpIdx
];
int
subK
=
subK_
[
inpIdx
];
size_t
batchSize
=
output
->
getHeight
();
MatrixPtr
image
=
getOutputValue
();
/* reset the expand-grad memory */
resetExpandInput
(
subK
*
groups_
[
inpIdx
],
subN
);
real
*
localData
=
output
->
getData
();
real
*
imageData
=
image
->
getData
();
for
(
size_t
n
=
0
;
n
<
batchSize
;
n
++
)
{
real
*
wgtData
=
weights_
[
inpIdx
]
->
getW
()
->
getData
();
real
*
expandInData
=
expandInput_
->
getData
();
for
(
int
g
=
0
;
g
<
groups_
[
inpIdx
];
g
++
)
{
// create temporary matrix
MatrixPtr
C
=
Matrix
::
create
(
expandInData
,
subK
,
subN
,
false
,
useGpu_
);
MatrixPtr
B
=
Matrix
::
create
(
localData
,
subM
,
subN
,
false
,
useGpu_
);
MatrixPtr
A
=
Matrix
::
create
(
wgtData
,
subK
,
subM
,
false
,
useGpu_
);
C
->
mul
(
A
,
B
);
// mul
// clear the temporary matrix
A
->
clear
();
B
->
clear
();
C
->
clear
();
expandInData
+=
subK
*
subN
;
localData
+=
subM
*
subN
;
wgtData
+=
subK
*
subM
;
}
// shrink one frame outGrad
MatrixPtr
oneTmp
=
Matrix
::
create
(
expandInput_
->
getData
(),
subK
*
groups_
[
inpIdx
],
subN
,
false
,
useGpu_
);
MatrixPtr
vTmp
=
Matrix
::
create
(
imageData
,
1
,
imgSizeH_
[
inpIdx
]
*
imgSizeW_
[
inpIdx
]
*
channel_
,
false
,
useGpu_
);
vTmp
->
convShrink
(
*
oneTmp
,
imgSizeH_
[
inpIdx
],
imgSizeW_
[
inpIdx
],
channel_
,
filterSize_
[
inpIdx
],
filterSize_
[
inpIdx
],
stride_
[
inpIdx
],
stride_
[
inpIdx
],
padding_
[
inpIdx
],
padding_
[
inpIdx
],
outputH_
[
inpIdx
],
outputW_
[
inpIdx
],
1.0
f
,
1.0
f
);
vTmp
->
clear
();
oneTmp
->
clear
();
// move the data-pointer
imageData
+=
imgSizeH_
[
inpIdx
]
*
imgSizeW_
[
inpIdx
]
*
channel_
;
}
}
void
ExpandConvTransLayer
::
bpropSharedBias
(
MatrixPtr
biases
,
MatrixPtr
v
)
{
size_t
mapW
=
getSize
()
/
channel_
;
size_t
mapH
=
v
->
getElementCnt
()
/
mapW
;
MatrixPtr
vTmp
=
Matrix
::
create
(
v
->
getData
(),
mapH
,
mapW
,
false
,
useGpu_
);
Matrix
::
resizeOrCreate
(
transOutValue_
,
mapW
,
mapH
,
false
,
useGpu_
);
vTmp
->
transpose
(
transOutValue_
,
false
);
// false means no memory allocation
vTmp
->
reshape
(
transOutValue_
->
getElementCnt
()
/
channel_
,
channel_
);
biases
->
collectBias
(
*
vTmp
,
1.0
f
);
}
void
ExpandConvTransLayer
::
bpropBiases
(
MatrixPtr
v
)
{
MatrixPtr
biases
=
Matrix
::
create
(
biases_
->
getWGrad
()
->
getData
(),
1
,
biases_
->
getWGrad
()
->
getElementCnt
(),
false
,
useGpu_
);
if
(
sharedBiases_
)
{
bpropSharedBias
(
biases
,
v
);
}
else
{
biases
->
collectBias
(
*
v
,
1.0
f
);
}
biases
->
clear
();
}
void
ExpandConvTransLayer
::
backward
(
const
UpdateCallback
&
callback
)
{
backwardActivation
();
MatrixPtr
imageGrad
=
getOutputGrad
();
if
(
biases_
&&
biases_
->
getWGrad
())
{
bpropBiases
(
imageGrad
);
/* Increasing the number of gradient */
biases_
->
getParameterPtr
()
->
incUpdate
(
callback
);
}
for
(
size_t
i
=
0
;
i
!=
inputLayers_
.
size
();
++
i
)
{
/* First, calculate the input layers error */
for
(
size_t
off
=
0
;
off
<
imageGrad
->
getHeight
();
off
++
)
{
expandBackOnce
(
imageGrad
,
i
,
off
);
}
if
(
weights_
[
i
]
->
getWGrad
())
{
/* Then, calculate the W-gradient for the current layer */
bpropWeights
(
imageGrad
,
i
);
/* Increasing the number of gradient */
weights_
[
i
]
->
getParameterPtr
()
->
incUpdate
(
callback
);
}
}
}
void
ExpandConvTransLayer
::
bpropWeights
(
MatrixPtr
v
,
int
inpIdx
)
{
MatrixPtr
weightGrad
=
weights_
[
inpIdx
]
->
getWGrad
();
MatrixPtr
outputV
=
getPrev
(
inpIdx
)
->
getOutputValue
();
int
subM
=
subM_
[
inpIdx
];
int
subN
=
subN_
[
inpIdx
];
int
subK
=
subK_
[
inpIdx
];
size_t
batchSize
=
outputV
->
getHeight
();
resetExpandInput
(
subK
*
groups_
[
inpIdx
],
subN
);
real
*
outputData
=
outputV
->
getData
();
for
(
size_t
n
=
0
;
n
<
batchSize
;
n
++
)
{
// frame by frame
// expand
expandOneFrame
(
v
,
n
,
inpIdx
);
real
*
wGradData
=
weightGrad
->
getData
();
real
*
expandInData
=
expandInput_
->
getData
();
// expand-mul one-group by one
for
(
int
g
=
0
;
g
<
groups_
[
inpIdx
];
g
++
)
{
MatrixPtr
A
=
Matrix
::
create
(
expandInData
,
subK
,
subN
,
false
,
useGpu_
);
MatrixPtr
B
=
Matrix
::
create
(
outputData
,
subM
,
subN
,
true
,
useGpu_
);
MatrixPtr
C
=
Matrix
::
create
(
wGradData
,
subK
,
subM
,
false
,
useGpu_
);
C
->
mul
(
A
,
B
,
1
,
1
);
A
->
clear
();
B
->
clear
();
C
->
clear
();
outputData
+=
subM
*
subN
;
wGradData
+=
subK
*
subM
;
expandInData
+=
subK
*
subN
;
}
}
}
}
// namespace paddle
paddle/gserver/layers/ExpandConvTransLayer.h
0 → 100644
浏览文件 @
5c88f072
/* Copyright (c) 2016 Baidu, Inc. All Rights Reserve.
Licensed under the Apache License, Version 2.0 (the "License");
you may not use this file except in compliance with the License.
You may obtain a copy of the License at
http://www.apache.org/licenses/LICENSE-2.0
Unless required by applicable law or agreed to in writing, software
distributed under the License is distributed on an "AS IS" BASIS,
WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
See the License for the specific language governing permissions and
limitations under the License. */
#pragma once
#include "ConvTransBaseLayer.h"
#include "paddle/math/Matrix.h"
#include <vector>
namespace
paddle
{
/**
* @brief A subclass of convolution layer.
* This layer expands input and use matrix multiplication to
* calculate convolution operation.
*
* The config file api is img_conv_layer.
*/
class
ExpandConvTransLayer
:
public
ConvTransBaseLayer
{
protected:
/// For expand convolution.
/// subM_ = numFilters_ / groups_.
IntV
subM_
;
/// subN_ = outputH_ * outputW_.
IntV
subN_
;
/// subK_ = channels_ * filterPixels_ * groups_.
IntV
subK_
;
/// The spatial dimensions of height of input feature map.
IntV
imgSizeH_
;
/// The spatial dimensions of width of input feature map.
IntV
imgSizeW_
;
/// The spatial dimensions of height of output feature map.
IntV
outputH_
;
/// The spatial dimensions of width of output feature map.
IntV
outputW_
;
/// Expand one sample at a time. shape:
/// (numChannels * filterPixels_, outputSizeH * outputSizeW)
MatrixPtr
expandInput_
;
/// The transpose of output, which is an auxiliary matrix.
MatrixPtr
transOutValue_
;
public:
explicit
ExpandConvTransLayer
(
const
LayerConfig
&
config
)
:
ConvTransBaseLayer
(
config
)
{}
~
ExpandConvTransLayer
()
{}
bool
init
(
const
LayerMap
&
layerMap
,
const
ParameterMap
&
parameterMap
);
size_t
getSize
();
/**
* Create or resize expandInput_.
*/
void
resetExpandInput
(
size_t
height
,
size_t
width
);
/**
* Create or resize transOutValue_.
*/
void
resetConvOutput
(
size_t
batchSize
,
int
inIdx
);
/**
* Expand one input sample.
*/
void
expandOneFrame
(
MatrixPtr
image
,
size_t
startIdx
,
int
inIdx
);
/**
* Expand one output image and perform matrix multiplication.
*/
void
expandBackOnce
(
MatrixPtr
image
,
int
inIdx
,
int
startIdx
);
/**
* Perform matrix multiplication on one output and then shrink.
*/
void
shrinkFwd
(
MatrixPtr
output
,
int
inpIdx
);
/**
* Add shared bias.
*/
void
addSharedBias
();
/**
* Add unshared bias.
*/
void
addUnsharedBias
();
void
forward
(
PassType
passType
);
void
bpropSharedBias
(
MatrixPtr
biases
,
MatrixPtr
v
);
void
bpropBiases
(
MatrixPtr
v
);
void
backward
(
const
UpdateCallback
&
callback
);
void
bpropWeights
(
MatrixPtr
v
,
int
inpIdx
);
void
bpropActs
(
MatrixPtr
v
,
int
inpIdx
);
};
}
// namespace paddle
paddle/gserver/tests/test_LayerGrad.cpp
浏览文件 @
5c88f072
...
...
@@ -312,6 +312,49 @@ TEST(Layer, convLayer) {
#endif
}
void
testConvTransLayer
(
const
string
&
type
,
bool
trans
,
bool
useGpu
)
{
TestConfig
config
;
config
.
biasSize
=
3
;
config
.
layerConfig
.
set_type
(
type
);
config
.
layerConfig
.
set_num_filters
(
3
);
config
.
layerConfig
.
set_partial_sum
(
1
);
config
.
layerConfig
.
set_shared_biases
(
true
);
config
.
inputDefs
.
push_back
({
INPUT_DATA
,
"layer_0"
,
1024
,
288
});
LayerInputConfig
*
input
=
config
.
layerConfig
.
add_inputs
();
ConvConfig
*
conv
=
input
->
mutable_conv_conf
();
conv
->
set_filter_size
(
2
);
conv
->
set_filter_size_y
(
3
);
conv
->
set_channels
(
16
);
conv
->
set_padding
(
0
);
conv
->
set_padding_y
(
1
);
conv
->
set_stride
(
2
);
conv
->
set_stride_y
(
2
);
conv
->
set_groups
(
1
);
conv
->
set_filter_channels
(
3
/
conv
->
groups
());
conv
->
set_img_size
(
16
);
conv
->
set_output_x
(
(
2
*
conv
->
padding
()
+
conv
->
img_size
()
-
conv
->
filter_size
())
/
((
float
)
conv
->
stride
())
+
1.5
);
config
.
layerConfig
.
set_size
(
conv
->
img_size
()
*
conv
->
img_size
()
*
config
.
layerConfig
.
num_filters
());
testLayerGrad
(
config
,
"convTrans"
,
100
,
trans
,
useGpu
);
}
TEST
(
Layer
,
convTransLayer
)
{
testConvTransLayer
(
"exconvt"
,
/* trans= */
false
,
/* useGpu= */
false
);
/*
#ifndef PADDLE_ONLY_CPU
testConvLayer("exconv", trans= false, useGpu= true);
testConvLayer("cudnn_conv", trans= false, useGpu= true);
#endif
*/
}
TEST
(
Layer
,
blockExpandLayer
)
{
TestConfig
config
;
config
.
biasSize
=
0
;
...
...
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