Skip to content
体验新版
项目
组织
正在加载...
登录
切换导航
打开侧边栏
weixin_41840029
PaddleOCR
提交
0825841f
P
PaddleOCR
项目概览
weixin_41840029
/
PaddleOCR
与 Fork 源项目一致
Fork自
PaddlePaddle / PaddleOCR
通知
1
Star
1
Fork
0
代码
文件
提交
分支
Tags
贡献者
分支图
Diff
Issue
0
列表
看板
标记
里程碑
合并请求
0
Wiki
0
Wiki
分析
仓库
DevOps
项目成员
Pages
P
PaddleOCR
项目概览
项目概览
详情
发布
仓库
仓库
文件
提交
分支
标签
贡献者
分支图
比较
Issue
0
Issue
0
列表
看板
标记
里程碑
合并请求
0
合并请求
0
Pages
分析
分析
仓库分析
DevOps
Wiki
0
Wiki
成员
成员
收起侧边栏
关闭侧边栏
动态
分支图
创建新Issue
提交
Issue看板
未验证
提交
0825841f
编写于
11月 30, 2021
作者:
Z
zhoujun
提交者:
GitHub
11月 30, 2021
浏览文件
操作
浏览文件
下载
电子邮件补丁
差异文件
del table backbone (#4802)
上级
0271adae
变更
3
隐藏空白更改
内联
并排
Showing
3 changed file
with
1 addition
and
572 deletion
+1
-572
ppocr/modeling/backbones/__init__.py
ppocr/modeling/backbones/__init__.py
+1
-5
ppocr/modeling/backbones/table_mobilenet_v3.py
ppocr/modeling/backbones/table_mobilenet_v3.py
+0
-287
ppocr/modeling/backbones/table_resnet_vd.py
ppocr/modeling/backbones/table_resnet_vd.py
+0
-280
未找到文件。
ppocr/modeling/backbones/__init__.py
浏览文件 @
0825841f
...
...
@@ -16,7 +16,7 @@ __all__ = ["build_backbone"]
def
build_backbone
(
config
,
model_type
):
if
model_type
==
"det"
:
if
model_type
==
"det"
or
model_type
==
"table"
:
from
.det_mobilenet_v3
import
MobileNetV3
from
.det_resnet_vd
import
ResNet
from
.det_resnet_vd_sast
import
ResNet_SAST
...
...
@@ -36,10 +36,6 @@ def build_backbone(config, model_type):
elif
model_type
==
"e2e"
:
from
.e2e_resnet_vd_pg
import
ResNet
support_dict
=
[
"ResNet"
]
elif
model_type
==
"table"
:
from
.table_resnet_vd
import
ResNet
from
.table_mobilenet_v3
import
MobileNetV3
support_dict
=
[
"ResNet"
,
"MobileNetV3"
]
else
:
raise
NotImplementedError
...
...
ppocr/modeling/backbones/table_mobilenet_v3.py
已删除
100644 → 0
浏览文件 @
0271adae
# copyright (c) 2020 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.
from
__future__
import
absolute_import
from
__future__
import
division
from
__future__
import
print_function
import
paddle
from
paddle
import
nn
import
paddle.nn.functional
as
F
from
paddle
import
ParamAttr
__all__
=
[
'MobileNetV3'
]
def
make_divisible
(
v
,
divisor
=
8
,
min_value
=
None
):
if
min_value
is
None
:
min_value
=
divisor
new_v
=
max
(
min_value
,
int
(
v
+
divisor
/
2
)
//
divisor
*
divisor
)
if
new_v
<
0.9
*
v
:
new_v
+=
divisor
return
new_v
class
MobileNetV3
(
nn
.
Layer
):
def
__init__
(
self
,
in_channels
=
3
,
model_name
=
'large'
,
scale
=
0.5
,
disable_se
=
False
,
**
kwargs
):
"""
the MobilenetV3 backbone network for detection module.
Args:
params(dict): the super parameters for build network
"""
super
(
MobileNetV3
,
self
).
__init__
()
self
.
disable_se
=
disable_se
if
model_name
==
"large"
:
cfg
=
[
# k, exp, c, se, nl, s,
[
3
,
16
,
16
,
False
,
'relu'
,
1
],
[
3
,
64
,
24
,
False
,
'relu'
,
2
],
[
3
,
72
,
24
,
False
,
'relu'
,
1
],
[
5
,
72
,
40
,
True
,
'relu'
,
2
],
[
5
,
120
,
40
,
True
,
'relu'
,
1
],
[
5
,
120
,
40
,
True
,
'relu'
,
1
],
[
3
,
240
,
80
,
False
,
'hardswish'
,
2
],
[
3
,
200
,
80
,
False
,
'hardswish'
,
1
],
[
3
,
184
,
80
,
False
,
'hardswish'
,
1
],
[
3
,
184
,
80
,
False
,
'hardswish'
,
1
],
[
3
,
480
,
112
,
True
,
'hardswish'
,
1
],
[
3
,
672
,
112
,
True
,
'hardswish'
,
1
],
[
5
,
672
,
160
,
True
,
'hardswish'
,
2
],
[
5
,
960
,
160
,
True
,
'hardswish'
,
1
],
[
5
,
960
,
160
,
True
,
'hardswish'
,
1
],
]
cls_ch_squeeze
=
960
elif
model_name
==
"small"
:
cfg
=
[
# k, exp, c, se, nl, s,
[
3
,
16
,
16
,
True
,
'relu'
,
2
],
[
3
,
72
,
24
,
False
,
'relu'
,
2
],
[
3
,
88
,
24
,
False
,
'relu'
,
1
],
[
5
,
96
,
40
,
True
,
'hardswish'
,
2
],
[
5
,
240
,
40
,
True
,
'hardswish'
,
1
],
[
5
,
240
,
40
,
True
,
'hardswish'
,
1
],
[
5
,
120
,
48
,
True
,
'hardswish'
,
1
],
[
5
,
144
,
48
,
True
,
'hardswish'
,
1
],
[
5
,
288
,
96
,
True
,
'hardswish'
,
2
],
[
5
,
576
,
96
,
True
,
'hardswish'
,
1
],
[
5
,
576
,
96
,
True
,
'hardswish'
,
1
],
]
cls_ch_squeeze
=
576
else
:
raise
NotImplementedError
(
"mode["
+
model_name
+
"_model] is not implemented!"
)
supported_scale
=
[
0.35
,
0.5
,
0.75
,
1.0
,
1.25
]
assert
scale
in
supported_scale
,
\
"supported scale are {} but input scale is {}"
.
format
(
supported_scale
,
scale
)
inplanes
=
16
# conv1
self
.
conv
=
ConvBNLayer
(
in_channels
=
in_channels
,
out_channels
=
make_divisible
(
inplanes
*
scale
),
kernel_size
=
3
,
stride
=
2
,
padding
=
1
,
groups
=
1
,
if_act
=
True
,
act
=
'hardswish'
,
name
=
'conv1'
)
self
.
stages
=
[]
self
.
out_channels
=
[]
block_list
=
[]
i
=
0
inplanes
=
make_divisible
(
inplanes
*
scale
)
for
(
k
,
exp
,
c
,
se
,
nl
,
s
)
in
cfg
:
se
=
se
and
not
self
.
disable_se
start_idx
=
2
if
model_name
==
'large'
else
0
if
s
==
2
and
i
>
start_idx
:
self
.
out_channels
.
append
(
inplanes
)
self
.
stages
.
append
(
nn
.
Sequential
(
*
block_list
))
block_list
=
[]
block_list
.
append
(
ResidualUnit
(
in_channels
=
inplanes
,
mid_channels
=
make_divisible
(
scale
*
exp
),
out_channels
=
make_divisible
(
scale
*
c
),
kernel_size
=
k
,
stride
=
s
,
use_se
=
se
,
act
=
nl
,
name
=
"conv"
+
str
(
i
+
2
)))
inplanes
=
make_divisible
(
scale
*
c
)
i
+=
1
block_list
.
append
(
ConvBNLayer
(
in_channels
=
inplanes
,
out_channels
=
make_divisible
(
scale
*
cls_ch_squeeze
),
kernel_size
=
1
,
stride
=
1
,
padding
=
0
,
groups
=
1
,
if_act
=
True
,
act
=
'hardswish'
,
name
=
'conv_last'
))
self
.
stages
.
append
(
nn
.
Sequential
(
*
block_list
))
self
.
out_channels
.
append
(
make_divisible
(
scale
*
cls_ch_squeeze
))
for
i
,
stage
in
enumerate
(
self
.
stages
):
self
.
add_sublayer
(
sublayer
=
stage
,
name
=
"stage{}"
.
format
(
i
))
def
forward
(
self
,
x
):
x
=
self
.
conv
(
x
)
out_list
=
[]
for
stage
in
self
.
stages
:
x
=
stage
(
x
)
out_list
.
append
(
x
)
return
out_list
class
ConvBNLayer
(
nn
.
Layer
):
def
__init__
(
self
,
in_channels
,
out_channels
,
kernel_size
,
stride
,
padding
,
groups
=
1
,
if_act
=
True
,
act
=
None
,
name
=
None
):
super
(
ConvBNLayer
,
self
).
__init__
()
self
.
if_act
=
if_act
self
.
act
=
act
self
.
conv
=
nn
.
Conv2D
(
in_channels
=
in_channels
,
out_channels
=
out_channels
,
kernel_size
=
kernel_size
,
stride
=
stride
,
padding
=
padding
,
groups
=
groups
,
weight_attr
=
ParamAttr
(
name
=
name
+
'_weights'
),
bias_attr
=
False
)
self
.
bn
=
nn
.
BatchNorm
(
num_channels
=
out_channels
,
act
=
None
,
param_attr
=
ParamAttr
(
name
=
name
+
"_bn_scale"
),
bias_attr
=
ParamAttr
(
name
=
name
+
"_bn_offset"
),
moving_mean_name
=
name
+
"_bn_mean"
,
moving_variance_name
=
name
+
"_bn_variance"
)
def
forward
(
self
,
x
):
x
=
self
.
conv
(
x
)
x
=
self
.
bn
(
x
)
if
self
.
if_act
:
if
self
.
act
==
"relu"
:
x
=
F
.
relu
(
x
)
elif
self
.
act
==
"hardswish"
:
x
=
F
.
hardswish
(
x
)
else
:
print
(
"The activation function({}) is selected incorrectly."
.
format
(
self
.
act
))
exit
()
return
x
class
ResidualUnit
(
nn
.
Layer
):
def
__init__
(
self
,
in_channels
,
mid_channels
,
out_channels
,
kernel_size
,
stride
,
use_se
,
act
=
None
,
name
=
''
):
super
(
ResidualUnit
,
self
).
__init__
()
self
.
if_shortcut
=
stride
==
1
and
in_channels
==
out_channels
self
.
if_se
=
use_se
self
.
expand_conv
=
ConvBNLayer
(
in_channels
=
in_channels
,
out_channels
=
mid_channels
,
kernel_size
=
1
,
stride
=
1
,
padding
=
0
,
if_act
=
True
,
act
=
act
,
name
=
name
+
"_expand"
)
self
.
bottleneck_conv
=
ConvBNLayer
(
in_channels
=
mid_channels
,
out_channels
=
mid_channels
,
kernel_size
=
kernel_size
,
stride
=
stride
,
padding
=
int
((
kernel_size
-
1
)
//
2
),
groups
=
mid_channels
,
if_act
=
True
,
act
=
act
,
name
=
name
+
"_depthwise"
)
if
self
.
if_se
:
self
.
mid_se
=
SEModule
(
mid_channels
,
name
=
name
+
"_se"
)
self
.
linear_conv
=
ConvBNLayer
(
in_channels
=
mid_channels
,
out_channels
=
out_channels
,
kernel_size
=
1
,
stride
=
1
,
padding
=
0
,
if_act
=
False
,
act
=
None
,
name
=
name
+
"_linear"
)
def
forward
(
self
,
inputs
):
x
=
self
.
expand_conv
(
inputs
)
x
=
self
.
bottleneck_conv
(
x
)
if
self
.
if_se
:
x
=
self
.
mid_se
(
x
)
x
=
self
.
linear_conv
(
x
)
if
self
.
if_shortcut
:
x
=
paddle
.
add
(
inputs
,
x
)
return
x
class
SEModule
(
nn
.
Layer
):
def
__init__
(
self
,
in_channels
,
reduction
=
4
,
name
=
""
):
super
(
SEModule
,
self
).
__init__
()
self
.
avg_pool
=
nn
.
AdaptiveAvgPool2D
(
1
)
self
.
conv1
=
nn
.
Conv2D
(
in_channels
=
in_channels
,
out_channels
=
in_channels
//
reduction
,
kernel_size
=
1
,
stride
=
1
,
padding
=
0
,
weight_attr
=
ParamAttr
(
name
=
name
+
"_1_weights"
),
bias_attr
=
ParamAttr
(
name
=
name
+
"_1_offset"
))
self
.
conv2
=
nn
.
Conv2D
(
in_channels
=
in_channels
//
reduction
,
out_channels
=
in_channels
,
kernel_size
=
1
,
stride
=
1
,
padding
=
0
,
weight_attr
=
ParamAttr
(
name
+
"_2_weights"
),
bias_attr
=
ParamAttr
(
name
=
name
+
"_2_offset"
))
def
forward
(
self
,
inputs
):
outputs
=
self
.
avg_pool
(
inputs
)
outputs
=
self
.
conv1
(
outputs
)
outputs
=
F
.
relu
(
outputs
)
outputs
=
self
.
conv2
(
outputs
)
outputs
=
F
.
hardsigmoid
(
outputs
,
slope
=
0.2
,
offset
=
0.5
)
return
inputs
*
outputs
\ No newline at end of file
ppocr/modeling/backbones/table_resnet_vd.py
已删除
100644 → 0
浏览文件 @
0271adae
# copyright (c) 2020 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.
from
__future__
import
absolute_import
from
__future__
import
division
from
__future__
import
print_function
import
paddle
from
paddle
import
ParamAttr
import
paddle.nn
as
nn
import
paddle.nn.functional
as
F
__all__
=
[
"ResNet"
]
class
ConvBNLayer
(
nn
.
Layer
):
def
__init__
(
self
,
in_channels
,
out_channels
,
kernel_size
,
stride
=
1
,
groups
=
1
,
is_vd_mode
=
False
,
act
=
None
,
name
=
None
,
):
super
(
ConvBNLayer
,
self
).
__init__
()
self
.
is_vd_mode
=
is_vd_mode
self
.
_pool2d_avg
=
nn
.
AvgPool2D
(
kernel_size
=
2
,
stride
=
2
,
padding
=
0
,
ceil_mode
=
True
)
self
.
_conv
=
nn
.
Conv2D
(
in_channels
=
in_channels
,
out_channels
=
out_channels
,
kernel_size
=
kernel_size
,
stride
=
stride
,
padding
=
(
kernel_size
-
1
)
//
2
,
groups
=
groups
,
weight_attr
=
ParamAttr
(
name
=
name
+
"_weights"
),
bias_attr
=
False
)
if
name
==
"conv1"
:
bn_name
=
"bn_"
+
name
else
:
bn_name
=
"bn"
+
name
[
3
:]
self
.
_batch_norm
=
nn
.
BatchNorm
(
out_channels
,
act
=
act
,
param_attr
=
ParamAttr
(
name
=
bn_name
+
'_scale'
),
bias_attr
=
ParamAttr
(
bn_name
+
'_offset'
),
moving_mean_name
=
bn_name
+
'_mean'
,
moving_variance_name
=
bn_name
+
'_variance'
)
def
forward
(
self
,
inputs
):
if
self
.
is_vd_mode
:
inputs
=
self
.
_pool2d_avg
(
inputs
)
y
=
self
.
_conv
(
inputs
)
y
=
self
.
_batch_norm
(
y
)
return
y
class
BottleneckBlock
(
nn
.
Layer
):
def
__init__
(
self
,
in_channels
,
out_channels
,
stride
,
shortcut
=
True
,
if_first
=
False
,
name
=
None
):
super
(
BottleneckBlock
,
self
).
__init__
()
self
.
conv0
=
ConvBNLayer
(
in_channels
=
in_channels
,
out_channels
=
out_channels
,
kernel_size
=
1
,
act
=
'relu'
,
name
=
name
+
"_branch2a"
)
self
.
conv1
=
ConvBNLayer
(
in_channels
=
out_channels
,
out_channels
=
out_channels
,
kernel_size
=
3
,
stride
=
stride
,
act
=
'relu'
,
name
=
name
+
"_branch2b"
)
self
.
conv2
=
ConvBNLayer
(
in_channels
=
out_channels
,
out_channels
=
out_channels
*
4
,
kernel_size
=
1
,
act
=
None
,
name
=
name
+
"_branch2c"
)
if
not
shortcut
:
self
.
short
=
ConvBNLayer
(
in_channels
=
in_channels
,
out_channels
=
out_channels
*
4
,
kernel_size
=
1
,
stride
=
1
,
is_vd_mode
=
False
if
if_first
else
True
,
name
=
name
+
"_branch1"
)
self
.
shortcut
=
shortcut
def
forward
(
self
,
inputs
):
y
=
self
.
conv0
(
inputs
)
conv1
=
self
.
conv1
(
y
)
conv2
=
self
.
conv2
(
conv1
)
if
self
.
shortcut
:
short
=
inputs
else
:
short
=
self
.
short
(
inputs
)
y
=
paddle
.
add
(
x
=
short
,
y
=
conv2
)
y
=
F
.
relu
(
y
)
return
y
class
BasicBlock
(
nn
.
Layer
):
def
__init__
(
self
,
in_channels
,
out_channels
,
stride
,
shortcut
=
True
,
if_first
=
False
,
name
=
None
):
super
(
BasicBlock
,
self
).
__init__
()
self
.
stride
=
stride
self
.
conv0
=
ConvBNLayer
(
in_channels
=
in_channels
,
out_channels
=
out_channels
,
kernel_size
=
3
,
stride
=
stride
,
act
=
'relu'
,
name
=
name
+
"_branch2a"
)
self
.
conv1
=
ConvBNLayer
(
in_channels
=
out_channels
,
out_channels
=
out_channels
,
kernel_size
=
3
,
act
=
None
,
name
=
name
+
"_branch2b"
)
if
not
shortcut
:
self
.
short
=
ConvBNLayer
(
in_channels
=
in_channels
,
out_channels
=
out_channels
,
kernel_size
=
1
,
stride
=
1
,
is_vd_mode
=
False
if
if_first
else
True
,
name
=
name
+
"_branch1"
)
self
.
shortcut
=
shortcut
def
forward
(
self
,
inputs
):
y
=
self
.
conv0
(
inputs
)
conv1
=
self
.
conv1
(
y
)
if
self
.
shortcut
:
short
=
inputs
else
:
short
=
self
.
short
(
inputs
)
y
=
paddle
.
add
(
x
=
short
,
y
=
conv1
)
y
=
F
.
relu
(
y
)
return
y
class
ResNet
(
nn
.
Layer
):
def
__init__
(
self
,
in_channels
=
3
,
layers
=
50
,
**
kwargs
):
super
(
ResNet
,
self
).
__init__
()
self
.
layers
=
layers
supported_layers
=
[
18
,
34
,
50
,
101
,
152
,
200
]
assert
layers
in
supported_layers
,
\
"supported layers are {} but input layer is {}"
.
format
(
supported_layers
,
layers
)
if
layers
==
18
:
depth
=
[
2
,
2
,
2
,
2
]
elif
layers
==
34
or
layers
==
50
:
depth
=
[
3
,
4
,
6
,
3
]
elif
layers
==
101
:
depth
=
[
3
,
4
,
23
,
3
]
elif
layers
==
152
:
depth
=
[
3
,
8
,
36
,
3
]
elif
layers
==
200
:
depth
=
[
3
,
12
,
48
,
3
]
num_channels
=
[
64
,
256
,
512
,
1024
]
if
layers
>=
50
else
[
64
,
64
,
128
,
256
]
num_filters
=
[
64
,
128
,
256
,
512
]
self
.
conv1_1
=
ConvBNLayer
(
in_channels
=
in_channels
,
out_channels
=
32
,
kernel_size
=
3
,
stride
=
2
,
act
=
'relu'
,
name
=
"conv1_1"
)
self
.
conv1_2
=
ConvBNLayer
(
in_channels
=
32
,
out_channels
=
32
,
kernel_size
=
3
,
stride
=
1
,
act
=
'relu'
,
name
=
"conv1_2"
)
self
.
conv1_3
=
ConvBNLayer
(
in_channels
=
32
,
out_channels
=
64
,
kernel_size
=
3
,
stride
=
1
,
act
=
'relu'
,
name
=
"conv1_3"
)
self
.
pool2d_max
=
nn
.
MaxPool2D
(
kernel_size
=
3
,
stride
=
2
,
padding
=
1
)
self
.
stages
=
[]
self
.
out_channels
=
[]
if
layers
>=
50
:
for
block
in
range
(
len
(
depth
)):
block_list
=
[]
shortcut
=
False
for
i
in
range
(
depth
[
block
]):
if
layers
in
[
101
,
152
]
and
block
==
2
:
if
i
==
0
:
conv_name
=
"res"
+
str
(
block
+
2
)
+
"a"
else
:
conv_name
=
"res"
+
str
(
block
+
2
)
+
"b"
+
str
(
i
)
else
:
conv_name
=
"res"
+
str
(
block
+
2
)
+
chr
(
97
+
i
)
bottleneck_block
=
self
.
add_sublayer
(
'bb_%d_%d'
%
(
block
,
i
),
BottleneckBlock
(
in_channels
=
num_channels
[
block
]
if
i
==
0
else
num_filters
[
block
]
*
4
,
out_channels
=
num_filters
[
block
],
stride
=
2
if
i
==
0
and
block
!=
0
else
1
,
shortcut
=
shortcut
,
if_first
=
block
==
i
==
0
,
name
=
conv_name
))
shortcut
=
True
block_list
.
append
(
bottleneck_block
)
self
.
out_channels
.
append
(
num_filters
[
block
]
*
4
)
self
.
stages
.
append
(
nn
.
Sequential
(
*
block_list
))
else
:
for
block
in
range
(
len
(
depth
)):
block_list
=
[]
shortcut
=
False
for
i
in
range
(
depth
[
block
]):
conv_name
=
"res"
+
str
(
block
+
2
)
+
chr
(
97
+
i
)
basic_block
=
self
.
add_sublayer
(
'bb_%d_%d'
%
(
block
,
i
),
BasicBlock
(
in_channels
=
num_channels
[
block
]
if
i
==
0
else
num_filters
[
block
],
out_channels
=
num_filters
[
block
],
stride
=
2
if
i
==
0
and
block
!=
0
else
1
,
shortcut
=
shortcut
,
if_first
=
block
==
i
==
0
,
name
=
conv_name
))
shortcut
=
True
block_list
.
append
(
basic_block
)
self
.
out_channels
.
append
(
num_filters
[
block
])
self
.
stages
.
append
(
nn
.
Sequential
(
*
block_list
))
def
forward
(
self
,
inputs
):
y
=
self
.
conv1_1
(
inputs
)
y
=
self
.
conv1_2
(
y
)
y
=
self
.
conv1_3
(
y
)
y
=
self
.
pool2d_max
(
y
)
out
=
[]
for
block
in
self
.
stages
:
y
=
block
(
y
)
out
.
append
(
y
)
return
out
编辑
预览
Markdown
is supported
0%
请重试
或
添加新附件
.
添加附件
取消
You are about to add
0
people
to the discussion. Proceed with caution.
先完成此消息的编辑!
取消
想要评论请
注册
或
登录