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testgroup
pytensor
Commits
b9c51f28
提交
b9c51f28
authored
12月 14, 2015
作者:
Pascal Lamblin
浏览文件
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差异文件
Add infer_shape to abstract convolutions
上级
6d4633be
隐藏空白字符变更
内嵌
并排
正在显示
1 个修改的文件
包含
42 行增加
和
0 行删除
+42
-0
abstract_conv.py
theano/tensor/nnet/abstract_conv.py
+42
-0
没有找到文件。
theano/tensor/nnet/abstract_conv.py
浏览文件 @
b9c51f28
...
...
@@ -322,6 +322,21 @@ class AbstractConv2d(BaseAbstractConv2d):
d_weights
=
patternbroadcast
(
d_weights
,
weights
.
broadcastable
)
return
d_bottom
,
d_weights
def
infer_shape
(
self
,
node
,
input_shapes
):
imshp
=
input_shapes
[
0
]
kshp
=
input_shapes
[
1
]
# replace symbolic shapes with known constant shapes
if
self
.
imshp
is
not
None
:
imshp
=
[
imshp
[
i
]
if
self
.
imshp
[
i
]
is
None
else
self
.
imshp
[
i
]
for
i
in
range
(
4
)]
if
self
.
kshp
is
not
None
:
kshp
=
[
kshp
[
i
]
if
self
.
kshp
[
i
]
is
None
else
self
.
kshp
[
i
]
for
i
in
range
(
4
)]
res
=
get_conv_output_shape
(
imshp
,
kshp
,
self
.
border_mode
,
self
.
subsample
)
return
[
res
]
class
AbstractConv2d_gradWeights
(
BaseAbstractConv2d
):
"""Gradient wrt. filters for `AbstractConv2d`.
...
...
@@ -387,6 +402,19 @@ class AbstractConv2d_gradWeights(BaseAbstractConv2d):
def
connection_pattern
(
self
,
node
):
return
[[
1
],
[
1
],
[
0
]]
# no connection to height, width
def
infer_shape
(
self
,
node
,
input_shapes
):
# We use self.kshp (that was passed when creating the Op) if possible,
# or fall back to the `shape` input of the node.
# TODO: when there is no subsampling, try to infer the kernel shape
# from the shapes of inputs.
imshp
=
input_shapes
[
0
]
topshp
=
input_shapes
[
1
]
kshp
=
self
.
kshp
[:]
if
self
.
kshp
is
not
None
else
[
None
]
*
4
fallback_kshp
=
[
topshp
[
1
],
imshp
[
1
],
node
.
inputs
[
2
][
0
],
node
.
inputs
[
2
][
1
]]
kshp
=
[
fallback_kshp
[
i
]
if
kshp
[
i
]
is
None
else
kshp
[
i
]
for
i
in
range
(
4
)]
return
[
kshp
]
class
AbstractConv2d_gradInputs
(
BaseAbstractConv2d
):
"""Gradient wrt. inputs for `AbstractConv2d`.
...
...
@@ -448,3 +476,17 @@ class AbstractConv2d_gradInputs(BaseAbstractConv2d):
def
connection_pattern
(
self
,
node
):
return
[[
1
],
[
1
],
[
0
]]
# no connection to height, width
def
infer_shape
(
self
,
node
,
input_shapes
):
# We use self.imshp (that was passed when creating the Op) if possible,
# or fall back to the `shape` input of the node.
# TODO: when there is no subsampling, try to infer the image shape
# from the shapes of inputs.
kshp
=
input_shapes
[
0
]
topshp
=
input_shapes
[
1
]
imshp
=
self
.
imshp
[:]
if
self
.
imshp
is
not
None
else
[
None
]
*
4
fallback_imshp
=
[
topshp
[
0
],
kshp
[
1
],
node
.
inputs
[
2
][
0
],
node
.
inputs
[
2
][
1
]]
imshp
=
[
fallback_imshp
[
i
]
if
imshp
[
i
]
is
None
else
imshp
[
i
]
for
i
in
range
(
4
)]
return
[
imshp
]
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