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testgroup
pytensor
Commits
c45d0df4
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c45d0df4
authored
1月 21, 2010
作者:
gdesjardins
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电子邮件补丁
差异文件
renamed conv.py to conv2d and changed interface slightly
上级
7f17dde5
隐藏空白字符变更
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1 个修改的文件
包含
30 行增加
和
14 行删除
+30
-14
conv.py
theano/sandbox/conv.py
+30
-14
没有找到文件。
theano/sandbox/conv.py
浏览文件 @
c45d0df4
...
...
@@ -14,33 +14,49 @@ def getFilterOutShp(inshp, kshp, (dx,dy)=(1,1), mode='valid'):
N
.
array
([
dx
,
dy
],
dtype
=
'float'
)))
def
conv
(
border_mode
,
subsample
=
(
1
,
1
),
imshp
=
None
,
kshp
=
None
,
**
kargs
):
def
conv2d
(
input
,
filters
,
border_mode
=
'valid'
,
subsample
=
(
1
,
1
),
image_shape
=
None
,
filter_shape
=
None
,
**
kargs
):
"""
This fct return an instanciated ConvOp but give better name for some param.
We do this instead of changing the ConvOp interface to don't change all code
used up to now.
:type input: symbolic 4D tensor
:param input: tensor containing mini-batch of input feature maps
:type filters: symbolic 4D tensor
:param filters: tensor containing filters for convolutional neural net
:type border_mode: string
:param border_mode:'valid'(only apply kernel over complete patch of the image)
or 'full'(padd the image with 0 and apply the kernel over all full patch and partial patch of the image
:type subsample: tuple of len 2
:param subsample: how many pixel we move in the (row,col) direction of the image when we change of patch
:type im
shp
: tuple of len 4
:param im
shp
: (batch size, stack size, nb row, nb col)
:type
kshp
: tuple of len 4
:param
kshp
: (nb kernel, stack size, nb row, nb col)
:type im
age_shape
: tuple of len 4
:param im
age_shape
: (batch size, stack size, nb row, nb col)
:type
filter_shape
: tuple of len 4
:param
filter_shape
: (nb kernel, stack size, nb row, nb col)
"""
if
imshp
is
not
None
and
kshp
is
not
None
:
assert
imshp
[
1
]
==
kshp
[
1
]
nkern
=
kshp
[
0
]
bsize
=
imshp
[
0
]
kshp
=
kshp
[:
2
]
if
image_shape
and
filter_shape
:
assert
image_shape
[
1
]
==
filter_shape
[
1
]
if
filter_shape
is
not
None
:
nkern
=
filter_shape
[
0
]
kshp
=
filter_shape
[
2
:]
else
:
nkern
,
kshp
=
None
,
None
if
image_shape
is
not
None
:
bsize
=
image_shape
[
0
]
imshp
=
imshp
[
1
:]
else
:
nkern
,
bsize
=
None
,
None
return
ConvOp
(
output_mode
=
border_mode
,
dx
=
subsample
[
0
],
dy
=
subsample
[
1
],
imshp
=
imshp
,
kshp
=
kshp
,
nkern
=
nkern
,
bsize
=
bsize
,
**
kargs
)
bsize
,
imshp
=
None
,
None
op
=
ConvOp
(
output_mode
=
border_mode
,
dx
=
subsample
[
0
],
dy
=
subsample
[
1
],
imshp
=
imshp
,
kshp
=
kshp
,
nkern
=
nkern
,
bsize
=
bsize
,
**
kargs
)
return
op
(
input
,
filters
)
class
ConvOp
(
Op
):
"""
...
...
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