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0f1d3af4
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0f1d3af4
编写于
10月 10, 2017
作者:
C
chengduo
提交者:
GitHub
10月 10, 2017
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差异文件
Merge pull request #4461 from chengduoZH/Add_maxpool_withIdx_only
Add max pool op (with index)
上级
8e2cc754
36da8255
变更
8
展开全部
显示空白变更内容
内联
并排
Showing
8 changed file
with
1369 addition
and
14 deletion
+1369
-14
paddle/operators/CMakeLists.txt
paddle/operators/CMakeLists.txt
+8
-0
paddle/operators/math/pooling.cc
paddle/operators/math/pooling.cc
+279
-2
paddle/operators/math/pooling.cu
paddle/operators/math/pooling.cu
+432
-8
paddle/operators/math/pooling.h
paddle/operators/math/pooling.h
+76
-4
paddle/operators/pool_with_index_op.cc
paddle/operators/pool_with_index_op.cc
+228
-0
paddle/operators/pool_with_index_op.cu
paddle/operators/pool_with_index_op.cu
+31
-0
paddle/operators/pool_with_index_op.h
paddle/operators/pool_with_index_op.h
+103
-0
python/paddle/v2/framework/tests/test_pool_max_op.py
python/paddle/v2/framework/tests/test_pool_max_op.py
+212
-0
未找到文件。
paddle/operators/CMakeLists.txt
浏览文件 @
0f1d3af4
...
...
@@ -55,12 +55,20 @@ function(op_library TARGET)
set
(
pybind_flag 1
)
endif
()
# pool_op contains several operators
if
(
"
${
TARGET
}
"
STREQUAL
"pool_op"
)
set
(
pybind_flag 1
)
# It's enough to just adding one operator to pybind
file
(
APPEND
${
pybind_file
}
"USE_OP(pool2d);
\n
"
)
endif
()
# pool_with_index_op contains several operators
if
(
"
${
TARGET
}
"
STREQUAL
"pool_with_index_op"
)
set
(
pybind_flag 1
)
# It's enough to just adding one operator to pybind
file
(
APPEND
${
pybind_file
}
"USE_OP(max_pool2d_with_index);
\n
"
)
endif
()
# activation_op contains several operators
if
(
"
${
TARGET
}
"
STREQUAL
"activation_op"
)
set
(
pybind_flag 1
)
...
...
paddle/operators/math/pooling.cc
浏览文件 @
0f1d3af4
...
...
@@ -18,6 +18,11 @@ namespace paddle {
namespace
operators
{
namespace
math
{
/*
* All tensors are in NCHW format.
* Ksize, strides, paddings are two elements. These two elements represent
* height and width, respectively.
*/
template
<
typename
PoolProcess
,
typename
T
>
class
Pool2dFunctor
<
platform
::
CPUPlace
,
PoolProcess
,
T
>
{
public:
...
...
@@ -73,6 +78,11 @@ class Pool2dFunctor<platform::CPUPlace, PoolProcess, T> {
}
};
/*
* All tensors are in NCHW format.
* Ksize, strides, paddings are two elements. These two elements represent height
* and width, respectively.
*/
template
<
typename
PoolProcess
,
class
T
>
class
Pool2dGradFunctor
<
platform
::
CPUPlace
,
PoolProcess
,
T
>
{
public:
...
...
@@ -135,6 +145,11 @@ class Pool2dGradFunctor<platform::CPUPlace, PoolProcess, T> {
}
};
/*
* All tensors are in NCHW format.
* Ksize, strides, paddings are two elements. These two elements represent
* height and width, respectively.
*/
template
<
class
T
>
class
MaxPool2dGradFunctor
<
platform
::
CPUPlace
,
T
>
{
public:
...
...
@@ -197,7 +212,7 @@ class MaxPool2dGradFunctor<platform::CPUPlace, T> {
};
template
class
MaxPool2dGradFunctor
<
platform
::
CPUPlace
,
float
>;
//
template class MaxPool2dGradFunctor<platform::CPUPlace, double>;
template
class
MaxPool2dGradFunctor
<
platform
::
CPUPlace
,
double
>;
template
class
Pool2dFunctor
<
platform
::
CPUPlace
,
paddle
::
operators
::
math
::
MaxPool
<
float
>,
float
>
;
...
...
@@ -216,6 +231,11 @@ template class Pool2dGradFunctor<
template
class
Pool2dGradFunctor
<
platform
::
CPUPlace
,
paddle
::
operators
::
math
::
AvgPoolGrad
<
double
>,
double
>
;
/*
* All tensors are in NCDHW format.
* Ksize, strides, paddings are three elements. These three elements represent
* depth, height and width, respectively.
*/
template
<
typename
PoolProcess
,
class
T
>
class
Pool3dFunctor
<
platform
::
CPUPlace
,
PoolProcess
,
T
>
{
public:
...
...
@@ -286,6 +306,11 @@ class Pool3dFunctor<platform::CPUPlace, PoolProcess, T> {
}
};
/*
* All tensors are in NCDHW format.
* Ksize, strides, paddings are three elements. These three elements represent
* depth, height and width, respectively.
*/
template
<
typename
PoolProcess
,
class
T
>
class
Pool3dGradFunctor
<
platform
::
CPUPlace
,
PoolProcess
,
T
>
{
public:
...
...
@@ -364,6 +389,11 @@ class Pool3dGradFunctor<platform::CPUPlace, PoolProcess, T> {
}
};
/*
* All tensors are in NCDHW format.
* Ksize, strides, paddings are three elements. These three elements represent
* depth, height and width, respectively.
*/
template
<
class
T
>
class
MaxPool3dGradFunctor
<
platform
::
CPUPlace
,
T
>
{
public:
...
...
@@ -440,7 +470,7 @@ class MaxPool3dGradFunctor<platform::CPUPlace, T> {
};
template
class
MaxPool3dGradFunctor
<
platform
::
CPUPlace
,
float
>;
//
template class MaxPool3dGradFunctor<platform::CPUPlace, double>;
template
class
MaxPool3dGradFunctor
<
platform
::
CPUPlace
,
double
>;
template
class
Pool3dFunctor
<
platform
::
CPUPlace
,
paddle
::
operators
::
math
::
MaxPool
<
float
>,
float
>
;
...
...
@@ -458,6 +488,253 @@ template class Pool3dGradFunctor<
platform
::
CPUPlace
,
paddle
::
operators
::
math
::
MaxPoolGrad
<
double
>,
double
>
;
template
class
Pool3dGradFunctor
<
platform
::
CPUPlace
,
paddle
::
operators
::
math
::
AvgPoolGrad
<
double
>,
double
>
;
/*
* All tensors are in NCHW format.
* Ksize, strides, paddings are two elements. These two elements represent
* height and width, respectively.
*/
template
<
typename
T
>
class
MaxPool2dWithIndexFunctor
<
platform
::
CPUPlace
,
T
>
{
public:
void
operator
()(
const
platform
::
DeviceContext
&
context
,
const
framework
::
Tensor
&
input
,
framework
::
Tensor
&
output
,
framework
::
Tensor
&
mask
,
std
::
vector
<
int
>&
ksize
,
std
::
vector
<
int
>&
strides
,
std
::
vector
<
int
>&
paddings
)
{
const
int
batch_size
=
input
.
dims
()[
0
];
const
int
input_height
=
input
.
dims
()[
2
];
const
int
input_width
=
input
.
dims
()[
3
];
const
int
output_channels
=
output
.
dims
()[
1
];
const
int
output_height
=
output
.
dims
()[
2
];
const
int
output_width
=
output
.
dims
()[
3
];
const
int
ksize_height
=
ksize
[
0
];
const
int
ksize_width
=
ksize
[
1
];
const
int
stride_height
=
strides
[
0
];
const
int
stride_width
=
strides
[
1
];
const
int
padding_height
=
paddings
[
0
];
const
int
padding_width
=
paddings
[
1
];
const
int
input_stride
=
input_height
*
input_width
;
const
int
output_stride
=
output_height
*
output_width
;
const
T
*
input_data
=
input
.
data
<
T
>
();
T
*
output_data
=
output
.
mutable_data
<
T
>
(
context
.
GetPlace
());
T
*
mask_data
=
mask
.
mutable_data
<
T
>
(
context
.
GetPlace
());
for
(
int
i
=
0
;
i
<
batch_size
;
i
++
)
{
for
(
int
c
=
0
;
c
<
output_channels
;
++
c
)
{
for
(
int
ph
=
0
;
ph
<
output_height
;
++
ph
)
{
int
hstart
=
ph
*
stride_height
-
padding_height
;
int
hend
=
std
::
min
(
hstart
+
ksize_height
,
input_height
);
hstart
=
std
::
max
(
hstart
,
0
);
for
(
int
pw
=
0
;
pw
<
output_width
;
++
pw
)
{
int
wstart
=
pw
*
stride_width
-
padding_width
;
int
wend
=
std
::
min
(
wstart
+
ksize_width
,
input_width
);
wstart
=
std
::
max
(
wstart
,
0
);
T
ele
=
static_cast
<
T
>
(
-
FLT_MAX
);
int
index
=
-
1
;
for
(
int
h
=
hstart
;
h
<
hend
;
++
h
)
{
for
(
int
w
=
wstart
;
w
<
wend
;
++
w
)
{
if
(
ele
<
input_data
[
h
*
input_width
+
w
])
{
ele
=
input_data
[
h
*
input_width
+
w
];
index
=
h
*
input_width
+
w
;
}
}
}
output_data
[
ph
*
output_width
+
pw
]
=
ele
;
mask_data
[
ph
*
output_width
+
pw
]
=
index
;
}
}
// offset
input_data
+=
input_stride
;
output_data
+=
output_stride
;
mask_data
+=
output_stride
;
}
}
}
};
/*
* All tensors are in NCHW format.
* Ksize, strides, paddings are two elements. These two elements represent
* height and width, respectively.
*/
template
<
typename
T
>
class
MaxPool2dWithIndexGradFunctor
<
platform
::
CPUPlace
,
T
>
{
public:
void
operator
()(
const
platform
::
DeviceContext
&
context
,
framework
::
Tensor
&
input_grad
,
const
framework
::
Tensor
&
output_grad
,
const
framework
::
Tensor
&
mask
,
std
::
vector
<
int
>&
ksize
,
std
::
vector
<
int
>&
strides
,
std
::
vector
<
int
>&
paddings
)
{
const
int
batch_size
=
input_grad
.
dims
()[
0
];
const
int
input_height
=
input_grad
.
dims
()[
2
];
const
int
input_width
=
input_grad
.
dims
()[
3
];
const
int
output_channels
=
output_grad
.
dims
()[
1
];
const
int
output_height
=
output_grad
.
dims
()[
2
];
const
int
output_width
=
output_grad
.
dims
()[
3
];
const
int
input_stride
=
input_height
*
input_width
;
const
int
output_stride
=
output_height
*
output_width
;
const
T
*
mask_data
=
mask
.
data
<
T
>
();
const
T
*
output_grad_data
=
output_grad
.
data
<
T
>
();
T
*
input_grad_data
=
input_grad
.
mutable_data
<
T
>
(
context
.
GetPlace
());
for
(
int
n
=
0
;
n
<
batch_size
;
++
n
)
{
for
(
int
c
=
0
;
c
<
output_channels
;
++
c
)
{
for
(
int
ph
=
0
;
ph
<
output_height
;
++
ph
)
{
for
(
int
pw
=
0
;
pw
<
output_width
;
++
pw
)
{
const
int
output_idx
=
ph
*
output_width
+
pw
;
const
int
input_idx
=
static_cast
<
int
>
(
mask_data
[
output_idx
]);
input_grad_data
[
input_idx
]
+=
output_grad_data
[
output_idx
];
}
}
// offset
input_grad_data
+=
input_stride
;
output_grad_data
+=
output_stride
;
mask_data
+=
output_stride
;
}
}
}
};
template
class
MaxPool2dWithIndexFunctor
<
platform
::
CPUPlace
,
float
>;
template
class
MaxPool2dWithIndexGradFunctor
<
platform
::
CPUPlace
,
float
>;
template
class
MaxPool2dWithIndexFunctor
<
platform
::
CPUPlace
,
double
>;
template
class
MaxPool2dWithIndexGradFunctor
<
platform
::
CPUPlace
,
double
>;
/*
* All tensors are in NCDHW format.
* Ksize, strides, paddings are three elements. These three elements represent
* depth, height and width, respectively.
*/
template
<
typename
T
>
class
MaxPool3dWithIndexFunctor
<
platform
::
CPUPlace
,
T
>
{
public:
void
operator
()(
const
platform
::
DeviceContext
&
context
,
const
framework
::
Tensor
&
input
,
framework
::
Tensor
&
output
,
framework
::
Tensor
&
mask
,
std
::
vector
<
int
>&
ksize
,
std
::
vector
<
int
>&
strides
,
std
::
vector
<
int
>&
paddings
)
{
const
int
batch_size
=
input
.
dims
()[
0
];
const
int
input_depth
=
input
.
dims
()[
2
];
const
int
input_height
=
input
.
dims
()[
3
];
const
int
input_width
=
input
.
dims
()[
4
];
const
int
output_channels
=
output
.
dims
()[
1
];
const
int
output_depth
=
output
.
dims
()[
2
];
const
int
output_height
=
output
.
dims
()[
3
];
const
int
output_width
=
output
.
dims
()[
4
];
const
int
ksize_depth
=
ksize
[
0
];
const
int
ksize_height
=
ksize
[
1
];
const
int
ksize_width
=
ksize
[
2
];
const
int
stride_depth
=
strides
[
0
];
const
int
stride_height
=
strides
[
1
];
const
int
stride_width
=
strides
[
2
];
const
int
padding_depth
=
paddings
[
0
];
const
int
padding_height
=
paddings
[
1
];
const
int
padding_width
=
paddings
[
2
];
const
int
input_stride
=
input_depth
*
input_height
*
input_width
;
const
int
output_stride
=
output_depth
*
output_height
*
output_width
;
const
T
*
input_data
=
input
.
data
<
T
>
();
T
*
output_data
=
output
.
mutable_data
<
T
>
(
context
.
GetPlace
());
T
*
mask_data
=
mask
.
mutable_data
<
T
>
(
context
.
GetPlace
());
for
(
int
i
=
0
;
i
<
batch_size
;
i
++
)
{
for
(
int
c
=
0
;
c
<
output_channels
;
++
c
)
{
for
(
int
pd
=
0
;
pd
<
output_depth
;
++
pd
)
{
int
dstart
=
pd
*
stride_depth
-
padding_depth
;
int
dend
=
std
::
min
(
dstart
+
ksize_depth
,
input_depth
);
dstart
=
std
::
max
(
dstart
,
0
);
for
(
int
ph
=
0
;
ph
<
output_height
;
++
ph
)
{
int
hstart
=
ph
*
stride_height
-
padding_height
;
int
hend
=
std
::
min
(
hstart
+
ksize_height
,
input_height
);
hstart
=
std
::
max
(
hstart
,
0
);
for
(
int
pw
=
0
;
pw
<
output_width
;
++
pw
)
{
int
wstart
=
pw
*
stride_width
-
padding_width
;
int
wend
=
std
::
min
(
wstart
+
ksize_width
,
input_width
);
wstart
=
std
::
max
(
wstart
,
0
);
int
output_idx
=
(
pd
*
output_height
+
ph
)
*
output_width
+
pw
;
T
ele
=
static_cast
<
T
>
(
-
FLT_MAX
);
int
index
=
-
1
;
for
(
int
d
=
dstart
;
d
<
dend
;
++
d
)
{
for
(
int
h
=
hstart
;
h
<
hend
;
++
h
)
{
for
(
int
w
=
wstart
;
w
<
wend
;
++
w
)
{
int
input_idx
=
(
d
*
input_height
+
h
)
*
input_width
+
w
;
if
(
ele
<
input_data
[
input_idx
])
{
index
=
input_idx
;
ele
=
input_data
[
input_idx
];
}
}
}
}
output_data
[
output_idx
]
=
ele
;
mask_data
[
output_idx
]
=
index
;
}
}
}
// offset
input_data
+=
input_stride
;
output_data
+=
output_stride
;
mask_data
+=
output_stride
;
}
}
}
};
/*
* All tensors are in NCDHW format.
* Ksize, strides, paddings are three elements. These three elements represent
* depth, height and width, respectively.
*/
template
<
typename
T
>
class
MaxPool3dWithIndexGradFunctor
<
platform
::
CPUPlace
,
T
>
{
public:
void
operator
()(
const
platform
::
DeviceContext
&
context
,
framework
::
Tensor
&
input_grad
,
const
framework
::
Tensor
&
output_grad
,
const
framework
::
Tensor
&
mask
,
std
::
vector
<
int
>&
ksize
,
std
::
vector
<
int
>&
strides
,
std
::
vector
<
int
>&
paddings
)
{
const
int
batch_size
=
input_grad
.
dims
()[
0
];
const
int
input_depth
=
input_grad
.
dims
()[
2
];
const
int
input_height
=
input_grad
.
dims
()[
3
];
const
int
input_width
=
input_grad
.
dims
()[
4
];
const
int
output_channels
=
output_grad
.
dims
()[
1
];
const
int
output_depth
=
output_grad
.
dims
()[
2
];
const
int
output_height
=
output_grad
.
dims
()[
3
];
const
int
output_width
=
output_grad
.
dims
()[
4
];
const
int
input_stride
=
input_depth
*
input_height
*
input_width
;
const
int
output_stride
=
output_depth
*
output_height
*
output_width
;
const
T
*
mask_data
=
mask
.
data
<
T
>
();
const
T
*
output_grad_data
=
output_grad
.
data
<
T
>
();
T
*
input_grad_data
=
input_grad
.
mutable_data
<
T
>
(
context
.
GetPlace
());
for
(
int
n
=
0
;
n
<
batch_size
;
++
n
)
{
for
(
int
c
=
0
;
c
<
output_channels
;
++
c
)
{
for
(
int
pd
=
0
;
pd
<
output_depth
;
++
pd
)
{
for
(
int
ph
=
0
;
ph
<
output_height
;
++
ph
)
{
for
(
int
pw
=
0
;
pw
<
output_width
;
++
pw
)
{
const
int
output_idx
=
(
pd
*
output_height
+
ph
)
*
output_width
+
pw
;
const
int
input_idx
=
static_cast
<
int
>
(
mask_data
[
output_idx
]);
input_grad_data
[
input_idx
]
+=
output_grad_data
[
output_idx
];
}
}
}
// offset
input_grad_data
+=
input_stride
;
output_grad_data
+=
output_stride
;
mask_data
+=
output_stride
;
}
}
}
};
template
class
MaxPool3dWithIndexFunctor
<
platform
::
CPUPlace
,
float
>;
template
class
MaxPool3dWithIndexGradFunctor
<
platform
::
CPUPlace
,
float
>;
template
class
MaxPool3dWithIndexFunctor
<
platform
::
CPUPlace
,
double
>;
template
class
MaxPool3dWithIndexGradFunctor
<
platform
::
CPUPlace
,
double
>;
}
// namespace math
}
// namespace operators
}
// namespace paddle
paddle/operators/math/pooling.cu
浏览文件 @
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此差异已折叠。
点击以展开。
paddle/operators/math/pooling.h
浏览文件 @
0f1d3af4
...
...
@@ -21,15 +21,27 @@ limitations under the License. */
namespace
paddle
{
namespace
operators
{
namespace
math
{
//////////////////////
#define FLT_MAX __FLT_MAX__ //
#define FLT_MAX \
__FLT_MAX__ // It might need to be placed in another file, but I'm still
// wondering where to put it.
/*
* \brief Extracting simple operations from pooling.
* Both MaxPool and AvgPool need "initial", "compute" and "finalize"
* operation.
* MaxPool initializes temp variable to the negative maximum to find the
* maximum value in the pooling field.
* AvgPool initializes temp variable to the zero to accumulate all values
* in pool pooling, and finally takes the average.
* MaxPoolGrad and AvgPoolGrad are gradient operations respectively.
*/
template
<
class
T
>
class
MaxPool
{
public:
DEVICE
inline
T
initial
()
{
return
static_cast
<
T
>
(
-
FLT_MAX
);
}
DEVICE
inline
void
compute
(
T
&
y
,
const
T
&
x
)
{
y
=
y
>
x
?
y
:
x
;
}
DEVICE
inline
void
finalize
(
T
&
y
,
const
T
&
poo
_size
)
{}
DEVICE
inline
void
finalize
(
T
&
y
,
const
T
&
poo
l_field
)
{}
};
template
<
class
T
>
...
...
@@ -37,8 +49,9 @@ class AvgPool {
public:
DEVICE
inline
T
initial
()
{
return
static_cast
<
T
>
(
0
);
}
DEVICE
inline
void
compute
(
T
&
y
,
const
T
&
x
)
{
y
+=
x
;
}
DEVICE
inline
void
finalize
(
T
&
y
,
const
T
&
poo
_size
)
{
y
/=
poo_size
;
}
DEVICE
inline
void
finalize
(
T
&
y
,
const
T
&
poo
l_field
)
{
y
/=
pool_field
;
}
};
template
<
class
T
>
class
MaxPoolGrad
{
public:
...
...
@@ -57,6 +70,20 @@ class AvgPoolGrad {
}
};
/*
* \brief Getting pooling results, and calculating gradient.
*
* In pool2d, all tensors are in NCHW format. Where N is batch size, C is the
* number of channels, H and W is the height and width of feature.
* In pool3d, all tensors are in NCDHW format. Where N is batch size, C is the
* number of channels, D, H and W is the depth, height and width of feature.
*
* In max pooling, it is possible that the pooling region has multiple maximum
* elements. In this case, we should compute the gradient of the first maximum
* element.
* This is different from average pooling. So we rewrite the max_pool_grad:
* MaxPool2dGradFunctor, MaxPool3dGradFunctor.
*/
template
<
typename
Place
,
typename
PoolProcess
,
typename
T
>
class
Pool2dFunctor
{
public:
...
...
@@ -117,6 +144,51 @@ class MaxPool3dGradFunctor {
std
::
vector
<
int
>&
strides
,
std
::
vector
<
int
>&
paddings
);
};
/*
* \brief Getting max pooling results and corresponding max index, and
* calculating gradient.
* In up-sampling-pooling, it is necessary to know max element index.
* In pool2d, all tensors are in NCHW format. In pool3d, all tensors are in
* NCDHW format.
*/
template
<
typename
Place
,
typename
T
>
class
MaxPool2dWithIndexFunctor
{
public:
void
operator
()(
const
platform
::
DeviceContext
&
context
,
const
framework
::
Tensor
&
input
,
framework
::
Tensor
&
output
,
framework
::
Tensor
&
mask
,
std
::
vector
<
int
>&
ksize
,
std
::
vector
<
int
>&
strides
,
std
::
vector
<
int
>&
paddings
);
};
template
<
typename
Place
,
typename
T
>
class
MaxPool2dWithIndexGradFunctor
{
public:
void
operator
()(
const
platform
::
DeviceContext
&
context
,
framework
::
Tensor
&
input_grad
,
const
framework
::
Tensor
&
output_grad
,
const
framework
::
Tensor
&
mask
,
std
::
vector
<
int
>&
ksize
,
std
::
vector
<
int
>&
strides
,
std
::
vector
<
int
>&
paddings
);
};
template
<
typename
Place
,
typename
T
>
class
MaxPool3dWithIndexFunctor
{
public:
void
operator
()(
const
platform
::
DeviceContext
&
context
,
const
framework
::
Tensor
&
input
,
framework
::
Tensor
&
output
,
framework
::
Tensor
&
mask
,
std
::
vector
<
int
>&
ksize
,
std
::
vector
<
int
>&
strides
,
std
::
vector
<
int
>&
paddings
);
};
template
<
typename
Place
,
typename
T
>
class
MaxPool3dWithIndexGradFunctor
{
public:
void
operator
()(
const
platform
::
DeviceContext
&
context
,
framework
::
Tensor
&
input_grad
,
const
framework
::
Tensor
&
output_grad
,
const
framework
::
Tensor
&
mask
,
std
::
vector
<
int
>&
ksize
,
std
::
vector
<
int
>&
strides
,
std
::
vector
<
int
>&
paddings
);
};
}
// namespace math
}
// namespace operators
}
// namespace paddle
paddle/operators/pool_with_index_op.cc
0 → 100644
浏览文件 @
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/* Copyright (c) 2016 PaddlePaddle Authors. 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/operators/pool_with_index_op.h"
namespace
paddle
{
namespace
operators
{
inline
int
OutputSizeMaxPool
(
int
input_size
,
int
filter_size
,
int
padding
,
int
stride
)
{
int
output_size
=
(
input_size
-
filter_size
+
2
*
padding
)
/
stride
+
1
;
return
output_size
;
}
class
MaxPoolWithIndexOp
:
public
framework
::
OperatorWithKernel
{
public:
using
framework
::
OperatorWithKernel
::
OperatorWithKernel
;
protected:
void
InferShape
(
framework
::
InferShapeContextBase
*
ctx
)
const
override
{
PADDLE_ENFORCE
(
ctx
->
HasInput
(
"X"
),
"X(Input) of Pooling should not be null."
);
PADDLE_ENFORCE
(
ctx
->
HasOutput
(
"Out"
),
"Out(Output) of Pooling should not be null."
);
PADDLE_ENFORCE
(
ctx
->
HasOutput
(
"Mask"
),
"Mask(Output) of Pooling should not be null."
);
auto
in_x_dims
=
ctx
->
GetInputDim
(
"X"
);
std
::
vector
<
int
>
ksize
=
ctx
->
Attrs
().
Get
<
std
::
vector
<
int
>>
(
"ksize"
);
std
::
vector
<
int
>
strides
=
ctx
->
Attrs
().
Get
<
std
::
vector
<
int
>>
(
"strides"
);
std
::
vector
<
int
>
paddings
=
ctx
->
Attrs
().
Get
<
std
::
vector
<
int
>>
(
"paddings"
);
PADDLE_ENFORCE
(
in_x_dims
.
size
()
==
4
||
in_x_dims
.
size
()
==
5
,
"Pooling intput should be 4-D or 5-D"
);
if
(
ctx
->
Attrs
().
Get
<
bool
>
(
"globalPooling"
))
{
ksize
.
resize
(
static_cast
<
size_t
>
(
in_x_dims
.
size
())
-
2
);
for
(
size_t
i
=
0
;
i
<
ksize
.
size
();
++
i
)
ksize
[
i
]
=
static_cast
<
int
>
(
in_x_dims
[
i
+
2
]);
}
PADDLE_ENFORCE
(
in_x_dims
.
size
()
-
ksize
.
size
()
==
2U
,
"Intput size and pooling size should be consistent."
);
PADDLE_ENFORCE_EQ
(
ksize
.
size
(),
strides
.
size
(),
"Strides size and pooling size should be the same."
);
PADDLE_ENFORCE_EQ
(
ksize
.
size
(),
paddings
.
size
(),
"Paddings size and pooling size should be the same."
);
std
::
vector
<
int64_t
>
output_shape
({
in_x_dims
[
0
],
in_x_dims
[
1
]});
for
(
size_t
i
=
0
;
i
<
ksize
.
size
();
++
i
)
{
output_shape
.
push_back
(
OutputSizeMaxPool
(
in_x_dims
[
i
+
2
],
ksize
[
i
],
paddings
[
i
],
strides
[
i
]));
}
ctx
->
SetOutputDim
(
"Out"
,
framework
::
make_ddim
(
output_shape
));
ctx
->
SetOutputDim
(
"Mask"
,
framework
::
make_ddim
(
output_shape
));
}
};
class
MaxPoolWithIndexOpGrad
:
public
framework
::
OperatorWithKernel
{
public:
using
framework
::
OperatorWithKernel
::
OperatorWithKernel
;
protected:
void
InferShape
(
framework
::
InferShapeContextBase
*
ctx
)
const
override
{
PADDLE_ENFORCE
(
ctx
->
HasInput
(
"X"
),
"Input(X) must not be null."
);
PADDLE_ENFORCE
(
ctx
->
HasOutput
(
framework
::
GradVarName
(
"X"
)),
"Input(X@GRAD) should not be null."
);
ctx
->
SetOutputDim
(
framework
::
GradVarName
(
"X"
),
ctx
->
GetInputDim
(
"X"
));
}
};
class
MaxPool2dWithIndexOpMaker
:
public
framework
::
OpProtoAndCheckerMaker
{
public:
MaxPool2dWithIndexOpMaker
(
framework
::
OpProto
*
proto
,
framework
::
OpAttrChecker
*
op_checker
)
:
OpProtoAndCheckerMaker
(
proto
,
op_checker
)
{
AddInput
(
"X"
,
"The input tensor of pooling operator. "
"The format of input tensor is NCHW. Where N is batch size, C is the "
"number of channels, H and W is the height and width of image."
);
AddOutput
(
"Out"
,
"The output tensor of pooling operator."
"The format of output tensor is also NCHW."
"Where N is batch size, C is "
"the number of channels, H and W is the height and "
"width of image."
);
AddOutput
(
"Mask"
,
"The Mask tensor of pooling operator."
"The format of output tensor is also NCHW."
"Where N is batch size, C is the number of channels, H and W "
"is the height and width of image."
"The value in it is the index in current feature map"
);
AddAttr
<
std
::
vector
<
int
>>
(
"ksize"
,
"The pooling size(height, width) of pooling operator."
"If globalPooling = true, ksize is ignored and need not be "
"specified."
);
// TODO(Chengduo): Add checker. (Currently,
// TypedAttrChecker don't support vector type.)
AddAttr
<
bool
>
(
"globalPooling"
,
"Whether to use the globalPooling."
"Bool constant equal to false or true."
"Default false."
"If globalPooling = true, ksize is ignored and need not be specified."
)
.
SetDefault
(
false
);
AddAttr
<
std
::
vector
<
int
>>
(
"strides"
,
"Strides(height, width) of pooling operator."
"Default {1,1}."
)
.
SetDefault
({
1
,
1
});
// TODO(Chengduo): Add checker. (Currently,
// TypedAttrChecker don't support vector type.)
AddAttr
<
std
::
vector
<
int
>>
(
"paddings"
,
"Paddings(height, width) of pooling operator."
"Default {0,0}."
)
.
SetDefault
({
0
,
0
});
// TODO(Chengduo): Add checker. (Currently,
// TypedAttrChecker don't support vector type.)
AddComment
(
R"DOC(
The maxPooling2d with index operation calculates the output and the mask
based on the input and ksize, strides, paddings parameters. Input(X) and
output(Out, Mask) are in NCHW format. Where N is batch size, C is the
number of channels, H and W is the height and width of feature.
Parameters(ksize, strides, paddings) are two elements.
These two elements represent height and width, respectively.
)DOC"
);
}
};
class
MaxPool3dWithIndexOpMaker
:
public
framework
::
OpProtoAndCheckerMaker
{
public:
MaxPool3dWithIndexOpMaker
(
framework
::
OpProto
*
proto
,
framework
::
OpAttrChecker
*
op_checker
)
:
OpProtoAndCheckerMaker
(
proto
,
op_checker
)
{
AddInput
(
"X"
,
"The input tensor of pooling operator. "
"The format of input tensor is NCDHW. Where N is batch size, C is "
"the number of channels, D, H and W is the depth, height and width of "
"image."
);
AddOutput
(
"Out"
,
"The output tensor of pooling operator."
"The format of output tensor is also NCDHW."
"Where N is batch size, C is "
"the number of channels, D, H and W is the depth, height and "
"width of image."
);
AddOutput
(
"Mask"
,
"The Mask tensor of pooling operator."
"The format of output tensor is also NCDHW."
"Where N is batch size, C is the number of channels, D, H and W "
"is the depth, height and width of image."
"The value in it is the index in current feature map"
);
AddAttr
<
std
::
vector
<
int
>>
(
"ksize"
,
"The pooling size(depth, height, width) of pooling operator."
"If globalPooling = true, ksize is ignored and need not be "
"specified."
);
// TODO(Chengduo): Add checker. (Currently,
// TypedAttrChecker don't support vector type.)
AddAttr
<
bool
>
(
"globalPooling"
,
"Whether to use the globalPooling."
"Bool constant equal to false or true."
"Default false."
"If globalPooling = true, ksize is ignored and need not be specified."
)
.
SetDefault
(
false
);
AddAttr
<
std
::
vector
<
int
>>
(
"strides"
,
"Strides(depth, height, width) of pooling operator."
"Default {1,1,1}."
)
.
SetDefault
({
1
,
1
,
1
});
// TODO(Chengduo): Add checker. (Currently,
// TypedAttrChecker don't support vector type.)
AddAttr
<
std
::
vector
<
int
>>
(
"paddings"
,
"Paddings(depth, height, width) of pooling operator."
"Default {0,0,0}."
)
.
SetDefault
({
0
,
0
,
0
});
// TODO(Chengduo): Add checker. (Currently,
// TypedAttrChecker don't support vector type.)
AddComment
(
R"DOC(
The maxpooling3d with index operation calculates the output and the mask
based on the input and ksize, strides, paddings parameters.
Input(X) and output(Out, Mask) are in NCDHW format. Where N is batch
size, C is the number of channels, D, H and W is the depth, height and
width of feature. Parameters(ksize, strides, paddings) are three elements.
These three elements represent depth, height and width, respectively.
)DOC"
);
}
};
}
// namespace operators
}
// namespace paddle
namespace
ops
=
paddle
::
operators
;
REGISTER_OP
(
max_pool2d_with_index
,
ops
::
MaxPoolWithIndexOp
,
ops
::
MaxPool2dWithIndexOpMaker
,
max_pool2d_with_index_grad
,
ops
::
MaxPoolWithIndexOpGrad
);
REGISTER_OP_CPU_KERNEL
(
max_pool2d_with_index
,
ops
::
MaxPoolWithIndexKernel
<
paddle
::
platform
::
CPUPlace
,
float
>
);
REGISTER_OP_CPU_KERNEL
(
max_pool2d_with_index_grad
,
ops
::
MaxPoolWithIndexGradKernel
<
paddle
::
platform
::
CPUPlace
,
float
>
)
REGISTER_OP
(
max_pool3d_with_index
,
ops
::
MaxPoolWithIndexOp
,
ops
::
MaxPool3dWithIndexOpMaker
,
max_pool3d_with_index_grad
,
ops
::
MaxPoolWithIndexOpGrad
);
REGISTER_OP_CPU_KERNEL
(
max_pool3d_with_index
,
ops
::
MaxPoolWithIndexKernel
<
paddle
::
platform
::
CPUPlace
,
float
>
);
REGISTER_OP_CPU_KERNEL
(
max_pool3d_with_index_grad
,
ops
::
MaxPoolWithIndexGradKernel
<
paddle
::
platform
::
CPUPlace
,
float
>
)
paddle/operators/pool_with_index_op.cu
0 → 100644
浏览文件 @
0f1d3af4
/* Copyright (c) 2016 PaddlePaddle Authors. 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/operators/pool_with_index_op.h"
namespace
ops
=
paddle
::
operators
;
REGISTER_OP_GPU_KERNEL
(
max_pool2d_with_index
,
ops
::
MaxPoolWithIndexKernel
<
paddle
::
platform
::
GPUPlace
,
float
>
);
REGISTER_OP_GPU_KERNEL
(
max_pool2d_with_index_grad
,
ops
::
MaxPoolWithIndexGradKernel
<
paddle
::
platform
::
GPUPlace
,
float
>
)
REGISTER_OP_GPU_KERNEL
(
max_pool3d_with_index
,
ops
::
MaxPoolWithIndexKernel
<
paddle
::
platform
::
GPUPlace
,
float
>
);
REGISTER_OP_GPU_KERNEL
(
max_pool3d_with_index_grad
,
ops
::
MaxPoolWithIndexGradKernel
<
paddle
::
platform
::
GPUPlace
,
float
>
)
paddle/operators/pool_with_index_op.h
0 → 100644
浏览文件 @
0f1d3af4
/* Copyright (c) 2016 PaddlePaddle Authors. 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 "paddle/framework/eigen.h"
#include "paddle/framework/op_registry.h"
#include "paddle/operators/math/math_function.h"
#include "paddle/operators/math/pooling.h"
namespace
paddle
{
namespace
operators
{
using
Tensor
=
framework
::
Tensor
;
template
<
typename
Place
,
typename
T
>
class
MaxPoolWithIndexKernel
:
public
framework
::
OpKernel
<
T
>
{
public:
void
Compute
(
const
framework
::
ExecutionContext
&
context
)
const
override
{
const
Tensor
*
in_x
=
context
.
Input
<
Tensor
>
(
"X"
);
Tensor
*
out
=
context
.
Output
<
Tensor
>
(
"Out"
);
Tensor
*
mask
=
context
.
Output
<
Tensor
>
(
"Mask"
);
std
::
vector
<
int
>
ksize
=
context
.
Attr
<
std
::
vector
<
int
>>
(
"ksize"
);
std
::
vector
<
int
>
strides
=
context
.
Attr
<
std
::
vector
<
int
>>
(
"strides"
);
std
::
vector
<
int
>
paddings
=
context
.
Attr
<
std
::
vector
<
int
>>
(
"paddings"
);
if
(
context
.
Attr
<
bool
>
(
"globalPooling"
))
{
for
(
size_t
i
=
0
;
i
<
ksize
.
size
();
++
i
)
{
ksize
[
i
]
=
static_cast
<
int
>
(
in_x
->
dims
()[
i
+
2
]);
}
}
switch
(
ksize
.
size
())
{
case
2
:
{
paddle
::
operators
::
math
::
MaxPool2dWithIndexFunctor
<
Place
,
T
>
pool2d_forward
;
pool2d_forward
(
context
.
device_context
(),
*
in_x
,
*
out
,
*
mask
,
ksize
,
strides
,
paddings
);
}
break
;
case
3
:
{
paddle
::
operators
::
math
::
MaxPool3dWithIndexFunctor
<
Place
,
T
>
pool3d_forward
;
pool3d_forward
(
context
.
device_context
(),
*
in_x
,
*
out
,
*
mask
,
ksize
,
strides
,
paddings
);
}
break
;
}
}
};
template
<
typename
Place
,
typename
T
>
class
MaxPoolWithIndexGradKernel
:
public
framework
::
OpKernel
<
T
>
{
public:
void
Compute
(
const
framework
::
ExecutionContext
&
context
)
const
override
{
const
Tensor
*
mask
=
context
.
Input
<
Tensor
>
(
"Mask"
);
const
Tensor
*
out_grad
=
context
.
Input
<
Tensor
>
(
framework
::
GradVarName
(
"Out"
));
Tensor
*
in_x_grad
=
context
.
Output
<
Tensor
>
(
framework
::
GradVarName
(
"X"
));
std
::
vector
<
int
>
ksize
=
context
.
Attr
<
std
::
vector
<
int
>>
(
"ksize"
);
std
::
vector
<
int
>
strides
=
context
.
Attr
<
std
::
vector
<
int
>>
(
"strides"
);
std
::
vector
<
int
>
paddings
=
context
.
Attr
<
std
::
vector
<
int
>>
(
"paddings"
);
if
(
context
.
Attr
<
bool
>
(
"globalPooling"
))
{
for
(
size_t
i
=
0
;
i
<
ksize
.
size
();
++
i
)
{
ksize
[
i
]
=
static_cast
<
int
>
(
in_x_grad
->
dims
()[
i
+
2
]);
}
}
if
(
in_x_grad
)
{
in_x_grad
->
mutable_data
<
T
>
(
context
.
GetPlace
());
auto
temp
=
framework
::
EigenVector
<
T
>::
Flatten
(
*
in_x_grad
);
temp
.
device
(
context
.
GetEigenDevice
<
Place
>
())
=
temp
.
constant
(
static_cast
<
T
>
(
0
));
switch
(
ksize
.
size
())
{
case
2
:
{
paddle
::
operators
::
math
::
MaxPool2dWithIndexGradFunctor
<
Place
,
T
>
pool2d_backward
;
pool2d_backward
(
context
.
device_context
(),
*
in_x_grad
,
*
out_grad
,
*
mask
,
ksize
,
strides
,
paddings
);
}
break
;
case
3
:
{
paddle
::
operators
::
math
::
MaxPool3dWithIndexGradFunctor
<
Place
,
T
>
pool3d_backward
;
pool3d_backward
(
context
.
device_context
(),
*
in_x_grad
,
*
out_grad
,
*
mask
,
ksize
,
strides
,
paddings
);
}
break
;
}
}
}
};
}
// namespace operators
}
// namespace paddle
python/paddle/v2/framework/tests/test_pool_max_op.py
0 → 100644
浏览文件 @
0f1d3af4
import
unittest
import
numpy
as
np
from
op_test
import
OpTest
def
max_pool3D_forward_naive
(
x
,
ksize
,
strides
,
paddings
=
[
0
,
0
,
0
],
global_pool
=
0
):
N
,
C
,
D
,
H
,
W
=
x
.
shape
if
global_pool
==
1
:
ksize
=
[
D
,
H
,
W
]
D_out
=
(
D
-
ksize
[
0
]
+
2
*
paddings
[
0
])
/
strides
[
0
]
+
1
H_out
=
(
H
-
ksize
[
1
]
+
2
*
paddings
[
1
])
/
strides
[
1
]
+
1
W_out
=
(
W
-
ksize
[
2
]
+
2
*
paddings
[
2
])
/
strides
[
2
]
+
1
out
=
np
.
zeros
((
N
,
C
,
D_out
,
H_out
,
W_out
))
mask
=
np
.
zeros
((
N
,
C
,
D_out
,
H_out
,
W_out
))
for
k
in
xrange
(
D_out
):
d_start
=
np
.
max
((
k
*
strides
[
0
]
-
paddings
[
0
],
0
))
d_end
=
np
.
min
((
k
*
strides
[
0
]
+
ksize
[
0
]
-
paddings
[
0
],
D
))
for
i
in
xrange
(
H_out
):
h_start
=
np
.
max
((
i
*
strides
[
0
]
-
paddings
[
0
],
0
))
h_end
=
np
.
min
((
i
*
strides
[
0
]
+
ksize
[
0
]
-
paddings
[
0
],
H
))
for
j
in
xrange
(
W_out
):
w_start
=
np
.
max
((
j
*
strides
[
1
]
-
paddings
[
1
],
0
))
w_end
=
np
.
min
((
j
*
strides
[
1
]
+
ksize
[
1
]
-
paddings
[
1
],
W
))
x_masked
=
x
[:,
:,
d_start
:
d_end
,
h_start
:
h_end
,
w_start
:
w_end
]
out
[:,
:,
k
,
i
,
j
]
=
np
.
max
(
x_masked
,
axis
=
(
2
,
3
,
4
))
for
n
in
xrange
(
N
):
for
c
in
xrange
(
C
):
arr
=
x_masked
[
n
,
c
,
:,
:,
:]
index
=
np
.
where
(
arr
==
np
.
max
(
arr
))
sub_deep
=
index
[
0
][
0
]
sub_row
=
index
[
1
][
0
]
sub_col
=
index
[
2
][
0
]
index
=
((
d_start
+
sub_deep
)
*
H
+
(
h_start
+
sub_row
))
*
W
+
w_start
+
sub_col
mask
[
n
,
c
,
k
,
i
,
j
]
=
index
return
out
,
mask
def
max_pool2D_forward_naive
(
x
,
ksize
,
strides
,
paddings
=
[
0
,
0
],
global_pool
=
0
):
N
,
C
,
H
,
W
=
x
.
shape
if
global_pool
==
1
:
ksize
=
[
H
,
W
]
H_out
=
(
H
-
ksize
[
0
]
+
2
*
paddings
[
0
])
/
strides
[
0
]
+
1
W_out
=
(
W
-
ksize
[
1
]
+
2
*
paddings
[
1
])
/
strides
[
1
]
+
1
out
=
np
.
zeros
((
N
,
C
,
H_out
,
W_out
))
mask
=
np
.
zeros
((
N
,
C
,
H_out
,
W_out
))
for
i
in
xrange
(
H_out
):
for
j
in
xrange
(
W_out
):
r_start
=
np
.
max
((
i
*
strides
[
0
]
-
paddings
[
0
],
0
))
r_end
=
np
.
min
((
i
*
strides
[
0
]
+
ksize
[
0
]
-
paddings
[
0
],
H
))
c_start
=
np
.
max
((
j
*
strides
[
1
]
-
paddings
[
1
],
0
))
c_end
=
np
.
min
((
j
*
strides
[
1
]
+
ksize
[
1
]
-
paddings
[
1
],
W
))
x_masked
=
x
[:,
:,
r_start
:
r_end
,
c_start
:
c_end
]
out
[:,
:,
i
,
j
]
=
np
.
max
(
x_masked
,
axis
=
(
2
,
3
))
for
n
in
xrange
(
N
):
for
c
in
xrange
(
C
):
arr
=
x_masked
[
n
,
c
,
:,
:]
index
=
np
.
where
(
arr
==
np
.
max
(
arr
))
sub_row
=
index
[
0
][
0
]
sub_col
=
index
[
1
][
0
]
index
=
(
r_start
+
sub_row
)
*
W
+
c_start
+
sub_col
mask
[
n
,
c
,
i
,
j
]
=
index
return
out
,
mask
class
TestMaxPoolWithIndex_Op
(
OpTest
):
def
setUp
(
self
):
self
.
initTestCase
()
input
=
np
.
random
.
random
(
self
.
shape
).
astype
(
"float32"
)
output
,
mask
=
self
.
pool_forward_naive
(
input
,
self
.
ksize
,
self
.
strides
,
self
.
paddings
,
self
.
global_pool
)
self
.
attrs
=
{
'strides'
:
self
.
strides
,
'paddings'
:
self
.
paddings
,
'ksize'
:
self
.
ksize
,
'globalPooling'
:
self
.
global_pool
,
}
self
.
inputs
=
{
'X'
:
input
}
self
.
outputs
=
{
'Out'
:
output
,
"Mask"
:
mask
}
def
test_check_output
(
self
):
self
.
check_output
()
# def test_check_grad(self):
# self.check_grad(set(['X']), ['Out'], max_relative_error=0.07)
def
initTestCase
(
self
):
self
.
global_pool
=
True
self
.
index
=
"max_pool3d_with_index"
self
.
op_type
=
"%s"
%
self
.
index
self
.
pool_forward_naive
=
max_pool3D_forward_naive
self
.
shape
=
[
2
,
3
,
5
,
5
,
5
]
self
.
ksize
=
[
3
,
3
,
3
]
self
.
strides
=
[
1
,
1
,
1
]
self
.
paddings
=
[
1
,
1
,
1
]
class
TestCase1
(
TestMaxPoolWithIndex_Op
):
def
initTestCase
(
self
):
self
.
global_pool
=
True
self
.
op_type
=
"max_pool3d_with_index"
self
.
pool_forward_naive
=
max_pool3D_forward_naive
self
.
shape
=
[
2
,
3
,
5
,
5
,
5
]
self
.
ksize
=
[
3
,
3
,
3
]
self
.
strides
=
[
1
,
1
,
1
]
self
.
paddings
=
[
1
,
1
,
1
]
class
TestCase2
(
TestMaxPoolWithIndex_Op
):
def
initTestCase
(
self
):
self
.
global_pool
=
False
self
.
op_type
=
"max_pool3d_with_index"
self
.
pool_forward_naive
=
max_pool3D_forward_naive
self
.
shape
=
[
2
,
3
,
7
,
7
,
7
]
self
.
ksize
=
[
3
,
3
,
3
]
self
.
strides
=
[
1
,
1
,
1
]
self
.
paddings
=
[
1
,
1
,
1
]
class
TestCase3
(
TestMaxPoolWithIndex_Op
):
def
initTestCase
(
self
):
self
.
global_pool
=
False
self
.
op_type
=
"max_pool3d_with_index"
self
.
pool_forward_naive
=
max_pool3D_forward_naive
self
.
shape
=
[
2
,
3
,
7
,
7
,
7
]
self
.
ksize
=
[
3
,
3
,
3
]
self
.
strides
=
[
2
,
2
,
2
]
self
.
paddings
=
[
0
,
0
,
0
]
class
TestCase4
(
TestMaxPoolWithIndex_Op
):
def
initTestCase
(
self
):
self
.
global_pool
=
True
self
.
op_type
=
"max_pool3d_with_index"
self
.
pool_forward_naive
=
max_pool3D_forward_naive
self
.
shape
=
[
2
,
3
,
5
,
5
,
5
]
self
.
ksize
=
[
3
,
3
,
3
]
self
.
strides
=
[
1
,
1
,
1
]
self
.
paddings
=
[
1
,
1
,
1
]
class
TestCase5
(
TestMaxPoolWithIndex_Op
):
def
initTestCase
(
self
):
self
.
global_pool
=
True
self
.
op_type
=
"max_pool3d_with_index"
self
.
pool_forward_naive
=
max_pool3D_forward_naive
self
.
shape
=
[
2
,
3
,
5
,
5
,
5
]
self
.
ksize
=
[
3
,
3
,
3
]
self
.
strides
=
[
2
,
2
,
2
]
self
.
paddings
=
[
0
,
0
,
0
]
class
TestCase6
(
TestMaxPoolWithIndex_Op
):
def
initTestCase
(
self
):
self
.
global_pool
=
False
self
.
op_type
=
"max_pool2d_with_index"
self
.
pool_forward_naive
=
max_pool2D_forward_naive
self
.
shape
=
[
2
,
3
,
7
,
7
]
self
.
ksize
=
[
3
,
3
]
self
.
strides
=
[
1
,
1
]
self
.
paddings
=
[
1
,
1
]
class
TestCase7
(
TestMaxPoolWithIndex_Op
):
def
initTestCase
(
self
):
self
.
global_pool
=
False
self
.
op_type
=
"max_pool2d_with_index"
self
.
pool_forward_naive
=
max_pool2D_forward_naive
self
.
shape
=
[
2
,
3
,
7
,
7
]
self
.
ksize
=
[
3
,
3
]
self
.
strides
=
[
2
,
2
]
self
.
paddings
=
[
0
,
0
]
class
TestCase8
(
TestMaxPoolWithIndex_Op
):
def
initTestCase
(
self
):
self
.
global_pool
=
True
self
.
op_type
=
"max_pool2d_with_index"
self
.
pool_forward_naive
=
max_pool2D_forward_naive
self
.
shape
=
[
2
,
3
,
5
,
5
]
self
.
ksize
=
[
3
,
3
]
self
.
strides
=
[
1
,
1
]
self
.
paddings
=
[
1
,
1
]
class
TestCase9
(
TestMaxPoolWithIndex_Op
):
def
initTestCase
(
self
):
self
.
global_pool
=
True
self
.
op_type
=
"max_pool2d_with_index"
self
.
pool_forward_naive
=
max_pool2D_forward_naive
self
.
shape
=
[
2
,
3
,
5
,
5
]
self
.
ksize
=
[
3
,
3
]
self
.
strides
=
[
2
,
2
]
self
.
paddings
=
[
0
,
0
]
if
__name__
==
'__main__'
:
unittest
.
main
()
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