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be35b7cc
编写于
6月 28, 2020
作者:
L
littletomatodonkey
提交者:
GitHub
6月 28, 2020
浏览文件
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差异文件
Merge pull request #182 from littletomatodonkey/dyg_model
add dpn, densenet and hrnet dygraph model
上级
3b93ffa0
b857342a
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3
展开全部
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Showing
3 changed file
with
1100 addition
and
669 deletion
+1100
-669
ppcls/modeling/architectures/densenet.py
ppcls/modeling/architectures/densenet.py
+231
-142
ppcls/modeling/architectures/dpn.py
ppcls/modeling/architectures/dpn.py
+268
-194
ppcls/modeling/architectures/hrnet.py
ppcls/modeling/architectures/hrnet.py
+601
-333
未找到文件。
ppcls/modeling/architectures/densenet.py
浏览文件 @
be35b7cc
#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
math
import
numpy
as
np
import
paddle
import
paddle.fluid
as
fluid
from
paddle.fluid.param_attr
import
ParamAttr
from
paddle.fluid.layer_helper
import
LayerHelper
from
paddle.fluid.dygraph.nn
import
Conv2D
,
Pool2D
,
BatchNorm
,
Linear
,
Dropout
import
math
__all__
=
[
"DenseNet"
,
"DenseNet121"
,
"DenseNet161"
,
"DenseNet169"
,
"DenseNet201"
,
"DenseNet264"
"DenseNet121"
,
"DenseNet161"
,
"DenseNet169"
,
"DenseNet201"
,
"DenseNet264"
]
class
DenseNet
():
def
__init__
(
self
,
layers
=
121
):
self
.
layers
=
layers
class
BNACConvLayer
(
fluid
.
dygraph
.
Layer
):
def
__init__
(
self
,
num_channels
,
num_filters
,
filter_size
,
stride
=
1
,
pad
=
0
,
groups
=
1
,
act
=
"relu"
,
name
=
None
):
super
(
BNACConvLayer
,
self
).
__init__
()
self
.
_batch_norm
=
BatchNorm
(
num_channels
,
act
=
act
,
param_attr
=
ParamAttr
(
name
=
name
+
'_bn_scale'
),
bias_attr
=
ParamAttr
(
name
+
'_bn_offset'
),
moving_mean_name
=
name
+
'_bn_mean'
,
moving_variance_name
=
name
+
'_bn_variance'
)
self
.
_conv
=
Conv2D
(
num_channels
=
num_channels
,
num_filters
=
num_filters
,
filter_size
=
filter_size
,
stride
=
stride
,
padding
=
pad
,
groups
=
groups
,
act
=
None
,
param_attr
=
ParamAttr
(
name
=
name
+
"_weights"
),
bias_attr
=
False
)
def
forward
(
self
,
input
):
y
=
self
.
_batch_norm
(
input
)
y
=
self
.
_conv
(
y
)
return
y
class
DenseLayer
(
fluid
.
dygraph
.
Layer
):
def
__init__
(
self
,
num_channels
,
growth_rate
,
bn_size
,
dropout
,
name
=
None
):
super
(
DenseLayer
,
self
).
__init__
()
self
.
dropout
=
dropout
self
.
bn_ac_func1
=
BNACConvLayer
(
num_channels
=
num_channels
,
num_filters
=
bn_size
*
growth_rate
,
filter_size
=
1
,
pad
=
0
,
stride
=
1
,
name
=
name
+
"_x1"
)
self
.
bn_ac_func2
=
BNACConvLayer
(
num_channels
=
bn_size
*
growth_rate
,
num_filters
=
growth_rate
,
filter_size
=
3
,
pad
=
1
,
stride
=
1
,
name
=
name
+
"_x2"
)
if
dropout
:
self
.
dropout_func
=
Dropout
(
p
=
dropout
)
def
forward
(
self
,
input
):
conv
=
self
.
bn_ac_func1
(
input
)
conv
=
self
.
bn_ac_func2
(
conv
)
if
self
.
dropout
:
conv
=
self
.
dropout_func
(
conv
)
conv
=
fluid
.
layers
.
concat
([
input
,
conv
],
axis
=
1
)
return
conv
class
DenseBlock
(
fluid
.
dygraph
.
Layer
):
def
__init__
(
self
,
num_channels
,
num_layers
,
bn_size
,
growth_rate
,
dropout
,
name
=
None
):
super
(
DenseBlock
,
self
).
__init__
()
self
.
dropout
=
dropout
self
.
dense_layer_func
=
[]
pre_channel
=
num_channels
for
layer
in
range
(
num_layers
):
self
.
dense_layer_func
.
append
(
self
.
add_sublayer
(
"{}_{}"
.
format
(
name
,
layer
+
1
),
DenseLayer
(
num_channels
=
pre_channel
,
growth_rate
=
growth_rate
,
bn_size
=
bn_size
,
dropout
=
dropout
,
name
=
name
+
'_'
+
str
(
layer
+
1
))))
pre_channel
=
pre_channel
+
growth_rate
def
forward
(
self
,
input
):
conv
=
input
for
func
in
self
.
dense_layer_func
:
conv
=
func
(
conv
)
return
conv
class
TransitionLayer
(
fluid
.
dygraph
.
Layer
):
def
__init__
(
self
,
num_channels
,
num_output_features
,
name
=
None
):
super
(
TransitionLayer
,
self
).
__init__
()
self
.
conv_ac_func
=
BNACConvLayer
(
num_channels
=
num_channels
,
num_filters
=
num_output_features
,
filter_size
=
1
,
pad
=
0
,
stride
=
1
,
name
=
name
)
self
.
pool2d_avg
=
Pool2D
(
pool_size
=
2
,
pool_stride
=
2
,
pool_type
=
'avg'
)
def
forward
(
self
,
input
):
y
=
self
.
conv_ac_func
(
input
)
y
=
self
.
pool2d_avg
(
y
)
return
y
class
ConvBNLayer
(
fluid
.
dygraph
.
Layer
):
def
__init__
(
self
,
num_channels
,
num_filters
,
filter_size
,
stride
=
1
,
pad
=
0
,
groups
=
1
,
act
=
"relu"
,
name
=
None
):
super
(
ConvBNLayer
,
self
).
__init__
()
self
.
_conv
=
Conv2D
(
num_channels
=
num_channels
,
num_filters
=
num_filters
,
filter_size
=
filter_size
,
stride
=
stride
,
padding
=
pad
,
groups
=
groups
,
act
=
None
,
param_attr
=
ParamAttr
(
name
=
name
+
"_weights"
),
bias_attr
=
False
)
self
.
_batch_norm
=
BatchNorm
(
num_filters
,
act
=
act
,
param_attr
=
ParamAttr
(
name
=
name
+
'_bn_scale'
),
bias_attr
=
ParamAttr
(
name
+
'_bn_offset'
),
moving_mean_name
=
name
+
'_bn_mean'
,
moving_variance_name
=
name
+
'_bn_variance'
)
def
forward
(
self
,
input
):
y
=
self
.
_conv
(
input
)
y
=
self
.
_batch_norm
(
y
)
return
y
class
DenseNet
(
fluid
.
dygraph
.
Layer
):
def
__init__
(
self
,
layers
=
60
,
bn_size
=
4
,
dropout
=
0
,
class_dim
=
1000
):
super
(
DenseNet
,
self
).
__init__
()
def
net
(
self
,
input
,
bn_size
=
4
,
dropout
=
0
,
class_dim
=
1000
):
layers
=
self
.
layers
supported_layers
=
[
121
,
161
,
169
,
201
,
264
]
assert
layers
in
supported_layers
,
\
"supported layers are {} but input layer is {}"
.
format
(
supported_layers
,
layers
)
"supported layers are {} but input layer is {}"
.
format
(
supported_layers
,
layers
)
densenet_spec
=
{
121
:
(
64
,
32
,
[
6
,
12
,
24
,
16
]),
161
:
(
96
,
48
,
[
6
,
12
,
36
,
24
]),
...
...
@@ -44,139 +186,86 @@ class DenseNet():
201
:
(
64
,
32
,
[
6
,
12
,
48
,
32
]),
264
:
(
64
,
32
,
[
6
,
12
,
64
,
48
])
}
num_init_features
,
growth_rate
,
block_config
=
densenet_spec
[
layers
]
conv
=
fluid
.
layers
.
conv2d
(
input
=
input
,
self
.
conv1_func
=
ConvBNLayer
(
num_channels
=
3
,
num_filters
=
num_init_features
,
filter_size
=
7
,
stride
=
2
,
padding
=
3
,
act
=
None
,
param_attr
=
ParamAttr
(
name
=
"conv1_weights"
),
bias_attr
=
False
)
conv
=
fluid
.
layers
.
batch_norm
(
input
=
conv
,
pad
=
3
,
act
=
'relu'
,
param_attr
=
ParamAttr
(
name
=
'conv1_bn_scale'
),
bias_attr
=
ParamAttr
(
name
=
'conv1_bn_offset'
),
moving_mean_name
=
'conv1_bn_mean'
,
moving_variance_name
=
'conv1_bn_variance
'
)
conv
=
fluid
.
layers
.
pool2d
(
input
=
conv
,
pool_size
=
3
,
pool_stride
=
2
,
pool_padding
=
1
,
pool_type
=
'max'
)
name
=
"conv1"
)
self
.
pool2d_max
=
Pool2D
(
pool_size
=
3
,
pool_stride
=
2
,
pool_padding
=
1
,
pool_type
=
'max
'
)
self
.
block_config
=
block_config
self
.
dense_block_func_list
=
[]
self
.
transition_func_list
=
[]
pre_num_channels
=
num_init_features
num_features
=
num_init_features
for
i
,
num_layers
in
enumerate
(
block_config
):
conv
=
self
.
make_dense_block
(
conv
,
num_layers
,
bn_size
,
growth_rate
,
dropout
,
name
=
'conv'
+
str
(
i
+
2
))
self
.
dense_block_func_list
.
append
(
self
.
add_sublayer
(
"db_conv_{}"
.
format
(
i
+
2
),
DenseBlock
(
num_channels
=
pre_num_channels
,
num_layers
=
num_layers
,
bn_size
=
bn_size
,
growth_rate
=
growth_rate
,
dropout
=
dropout
,
name
=
'conv'
+
str
(
i
+
2
))))
num_features
=
num_features
+
num_layers
*
growth_rate
pre_num_channels
=
num_features
if
i
!=
len
(
block_config
)
-
1
:
conv
=
self
.
make_transition
(
conv
,
num_features
//
2
,
name
=
'conv'
+
str
(
i
+
2
)
+
'_blk'
)
self
.
transition_func_list
.
append
(
self
.
add_sublayer
(
"tr_conv{}_blk"
.
format
(
i
+
2
),
TransitionLayer
(
num_channels
=
pre_num_channels
,
num_output_features
=
num_features
//
2
,
name
=
'conv'
+
str
(
i
+
2
)
+
"_blk"
)))
pre_num_channels
=
num_features
//
2
num_features
=
num_features
//
2
conv
=
fluid
.
layers
.
batch_norm
(
input
=
conv
,
act
=
'relu'
,
self
.
batch_norm
=
BatchNorm
(
num_features
,
act
=
"relu"
,
param_attr
=
ParamAttr
(
name
=
'conv5_blk_bn_scale'
),
bias_attr
=
ParamAttr
(
name
=
'conv5_blk_bn_offset'
),
moving_mean_name
=
'conv5_blk_bn_mean'
,
moving_variance_name
=
'conv5_blk_bn_variance'
)
conv
=
fluid
.
layers
.
pool2d
(
input
=
conv
,
pool_type
=
'avg'
,
global_pooling
=
True
)
stdv
=
1.0
/
math
.
sqrt
(
conv
.
shape
[
1
]
*
1.0
)
out
=
fluid
.
layers
.
fc
(
input
=
conv
,
size
=
class_dim
,
param_attr
=
fluid
.
param_attr
.
ParamAttr
(
self
.
pool2d_avg
=
Pool2D
(
pool_type
=
'avg'
,
global_pooling
=
True
)
stdv
=
1.0
/
math
.
sqrt
(
num_features
*
1.0
)
self
.
out
=
Linear
(
num_features
,
class_dim
,
param_attr
=
ParamAttr
(
initializer
=
fluid
.
initializer
.
Uniform
(
-
stdv
,
stdv
),
name
=
"fc_weights"
),
bias_attr
=
ParamAttr
(
name
=
'fc_offset'
))
return
out
bias_attr
=
ParamAttr
(
name
=
"fc_offset"
))
def
make_transition
(
self
,
input
,
num_output_features
,
name
=
None
):
bn_ac
=
fluid
.
layers
.
batch_norm
(
input
,
act
=
'relu'
,
param_attr
=
ParamAttr
(
name
=
name
+
'_bn_scale'
),
bias_attr
=
ParamAttr
(
name
+
'_bn_offset'
),
moving_mean_name
=
name
+
'_bn_mean'
,
moving_variance_name
=
name
+
'_bn_variance'
)
def
forward
(
self
,
input
):
conv
=
self
.
conv1_func
(
input
)
conv
=
self
.
pool2d_max
(
conv
)
bn_ac_conv
=
fluid
.
layers
.
conv2d
(
input
=
bn_ac
,
num_filters
=
num_output_features
,
filter_size
=
1
,
stride
=
1
,
act
=
None
,
bias_attr
=
False
,
param_attr
=
ParamAttr
(
name
=
name
+
"_weights"
))
pool
=
fluid
.
layers
.
pool2d
(
input
=
bn_ac_conv
,
pool_size
=
2
,
pool_stride
=
2
,
pool_type
=
'avg'
)
return
pool
def
make_dense_block
(
self
,
input
,
num_layers
,
bn_size
,
growth_rate
,
dropout
,
name
=
None
):
conv
=
input
for
layer
in
range
(
num_layers
):
conv
=
self
.
make_dense_layer
(
conv
,
growth_rate
,
bn_size
,
dropout
,
name
=
name
+
'_'
+
str
(
layer
+
1
))
return
conv
for
i
,
num_layers
in
enumerate
(
self
.
block_config
):
conv
=
self
.
dense_block_func_list
[
i
](
conv
)
if
i
!=
len
(
self
.
block_config
)
-
1
:
conv
=
self
.
transition_func_list
[
i
](
conv
)
def
make_dense_layer
(
self
,
input
,
growth_rate
,
bn_size
,
dropout
,
name
=
None
):
bn_ac
=
fluid
.
layers
.
batch_norm
(
input
,
act
=
'relu'
,
param_attr
=
ParamAttr
(
name
=
name
+
'_x1_bn_scale'
),
bias_attr
=
ParamAttr
(
name
+
'_x1_bn_offset'
),
moving_mean_name
=
name
+
'_x1_bn_mean'
,
moving_variance_name
=
name
+
'_x1_bn_variance'
)
bn_ac_conv
=
fluid
.
layers
.
conv2d
(
input
=
bn_ac
,
num_filters
=
bn_size
*
growth_rate
,
filter_size
=
1
,
stride
=
1
,
act
=
None
,
bias_attr
=
False
,
param_attr
=
ParamAttr
(
name
=
name
+
"_x1_weights"
))
bn_ac
=
fluid
.
layers
.
batch_norm
(
bn_ac_conv
,
act
=
'relu'
,
param_attr
=
ParamAttr
(
name
=
name
+
'_x2_bn_scale'
),
bias_attr
=
ParamAttr
(
name
+
'_x2_bn_offset'
),
moving_mean_name
=
name
+
'_x2_bn_mean'
,
moving_variance_name
=
name
+
'_x2_bn_variance'
)
bn_ac_conv
=
fluid
.
layers
.
conv2d
(
input
=
bn_ac
,
num_filters
=
growth_rate
,
filter_size
=
3
,
stride
=
1
,
padding
=
1
,
act
=
None
,
bias_attr
=
False
,
param_attr
=
ParamAttr
(
name
=
name
+
"_x2_weights"
))
if
dropout
:
bn_ac_conv
=
fluid
.
layers
.
dropout
(
x
=
bn_ac_conv
,
dropout_prob
=
dropout
)
bn_ac_conv
=
fluid
.
layers
.
concat
([
input
,
bn_ac_conv
],
axis
=
1
)
return
bn_ac_conv
conv
=
self
.
batch_norm
(
conv
)
y
=
self
.
pool2d_avg
(
conv
)
y
=
fluid
.
layers
.
reshape
(
y
,
shape
=
[
0
,
-
1
])
y
=
self
.
out
(
y
)
return
y
def
DenseNet121
():
...
...
ppcls/modeling/architectures/dpn.py
浏览文件 @
be35b7cc
#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
os
import
numpy
as
np
import
time
import
sys
import
math
import
paddle
import
paddle.fluid
as
fluid
from
paddle.fluid.param_attr
import
ParamAttr
from
paddle.fluid.layer_helper
import
LayerHelper
from
paddle.fluid.dygraph.nn
import
Conv2D
,
Pool2D
,
BatchNorm
,
Linear
import
math
__all__
=
[
"DPN"
,
"DPN68"
,
"DPN92"
,
"DPN98"
,
"DPN107"
,
"DPN131"
,
]
class
ConvBNLayer
(
fluid
.
dygraph
.
Layer
):
def
__init__
(
self
,
num_channels
,
num_filters
,
filter_size
,
stride
=
1
,
pad
=
0
,
groups
=
1
,
act
=
"relu"
,
name
=
None
):
super
(
ConvBNLayer
,
self
).
__init__
()
self
.
_conv
=
Conv2D
(
num_channels
=
num_channels
,
num_filters
=
num_filters
,
filter_size
=
filter_size
,
stride
=
stride
,
padding
=
pad
,
groups
=
groups
,
act
=
None
,
param_attr
=
ParamAttr
(
name
=
name
+
"_weights"
),
bias_attr
=
False
)
self
.
_batch_norm
=
BatchNorm
(
num_filters
,
act
=
act
,
param_attr
=
ParamAttr
(
name
=
name
+
'_bn_scale'
),
bias_attr
=
ParamAttr
(
name
+
'_bn_offset'
),
moving_mean_name
=
name
+
'_bn_mean'
,
moving_variance_name
=
name
+
'_bn_variance'
)
def
forward
(
self
,
input
):
y
=
self
.
_conv
(
input
)
y
=
self
.
_batch_norm
(
y
)
return
y
class
BNACConvLayer
(
fluid
.
dygraph
.
Layer
):
def
__init__
(
self
,
num_channels
,
num_filters
,
filter_size
,
stride
=
1
,
pad
=
0
,
groups
=
1
,
act
=
"relu"
,
name
=
None
):
super
(
BNACConvLayer
,
self
).
__init__
()
self
.
num_channels
=
num_channels
self
.
name
=
name
self
.
_batch_norm
=
BatchNorm
(
num_channels
,
act
=
act
,
param_attr
=
ParamAttr
(
name
=
name
+
'_bn_scale'
),
bias_attr
=
ParamAttr
(
name
+
'_bn_offset'
),
moving_mean_name
=
name
+
'_bn_mean'
,
moving_variance_name
=
name
+
'_bn_variance'
)
self
.
_conv
=
Conv2D
(
num_channels
=
num_channels
,
num_filters
=
num_filters
,
filter_size
=
filter_size
,
stride
=
stride
,
padding
=
pad
,
groups
=
groups
,
act
=
None
,
param_attr
=
ParamAttr
(
name
=
name
+
"_weights"
),
bias_attr
=
False
)
def
forward
(
self
,
input
):
y
=
self
.
_batch_norm
(
input
)
y
=
self
.
_conv
(
y
)
return
y
class
DualPathFactory
(
fluid
.
dygraph
.
Layer
):
def
__init__
(
self
,
num_channels
,
num_1x1_a
,
num_3x3_b
,
num_1x1_c
,
inc
,
G
,
_type
=
'normal'
,
name
=
None
):
super
(
DualPathFactory
,
self
).
__init__
()
self
.
num_1x1_c
=
num_1x1_c
self
.
inc
=
inc
self
.
name
=
name
kw
=
3
kh
=
3
pw
=
(
kw
-
1
)
//
2
ph
=
(
kh
-
1
)
//
2
# type
if
_type
==
'proj'
:
key_stride
=
1
self
.
has_proj
=
True
elif
_type
==
'down'
:
key_stride
=
2
self
.
has_proj
=
True
elif
_type
==
'normal'
:
key_stride
=
1
self
.
has_proj
=
False
else
:
print
(
"not implemented now!!!"
)
sys
.
exit
(
1
)
data_in_ch
=
sum
(
num_channels
)
if
isinstance
(
num_channels
,
list
)
else
num_channels
if
self
.
has_proj
:
self
.
c1x1_w_func
=
BNACConvLayer
(
num_channels
=
data_in_ch
,
num_filters
=
num_1x1_c
+
2
*
inc
,
filter_size
=
(
1
,
1
),
pad
=
(
0
,
0
),
stride
=
(
key_stride
,
key_stride
),
name
=
name
+
"_match"
)
self
.
c1x1_a_func
=
BNACConvLayer
(
num_channels
=
data_in_ch
,
num_filters
=
num_1x1_a
,
filter_size
=
(
1
,
1
),
pad
=
(
0
,
0
),
name
=
name
+
"_conv1"
)
self
.
c3x3_b_func
=
BNACConvLayer
(
num_channels
=
num_1x1_a
,
num_filters
=
num_3x3_b
,
filter_size
=
(
kw
,
kh
),
pad
=
(
pw
,
ph
),
stride
=
(
key_stride
,
key_stride
),
groups
=
G
,
name
=
name
+
"_conv2"
)
self
.
c1x1_c_func
=
BNACConvLayer
(
num_channels
=
num_3x3_b
,
num_filters
=
num_1x1_c
+
inc
,
filter_size
=
(
1
,
1
),
pad
=
(
0
,
0
),
name
=
name
+
"_conv3"
)
def
forward
(
self
,
input
):
# PROJ
if
isinstance
(
input
,
list
):
data_in
=
fluid
.
layers
.
concat
([
input
[
0
],
input
[
1
]],
axis
=
1
)
else
:
data_in
=
input
if
self
.
has_proj
:
c1x1_w
=
self
.
c1x1_w_func
(
data_in
)
data_o1
,
data_o2
=
fluid
.
layers
.
split
(
c1x1_w
,
num_or_sections
=
[
self
.
num_1x1_c
,
2
*
self
.
inc
],
dim
=
1
)
else
:
data_o1
=
input
[
0
]
data_o2
=
input
[
1
]
c1x1_a
=
self
.
c1x1_a_func
(
data_in
)
c3x3_b
=
self
.
c3x3_b_func
(
c1x1_a
)
c1x1_c
=
self
.
c1x1_c_func
(
c3x3_b
)
c1x1_c1
,
c1x1_c2
=
fluid
.
layers
.
split
(
c1x1_c
,
num_or_sections
=
[
self
.
num_1x1_c
,
self
.
inc
],
dim
=
1
)
# OUTPUTS
summ
=
fluid
.
layers
.
elementwise_add
(
x
=
data_o1
,
y
=
c1x1_c1
)
dense
=
fluid
.
layers
.
concat
([
data_o2
,
c1x1_c2
],
axis
=
1
)
# tensor, channels
return
[
summ
,
dense
]
__all__
=
[
"DPN"
,
"DPN68"
,
"DPN92"
,
"DPN98"
,
"DPN107"
,
"DPN131"
]
class
DPN
(
fluid
.
dygraph
.
Layer
):
def
__init__
(
self
,
layers
=
60
,
class_dim
=
1000
):
super
(
DPN
,
self
).
__init__
()
class
DPN
(
object
):
def
__init__
(
self
,
layers
=
68
):
self
.
layers
=
layers
self
.
_class_dim
=
class_dim
def
net
(
self
,
input
,
class_dim
=
1000
):
# get network args
args
=
self
.
get_net_args
(
self
.
layers
)
args
=
self
.
get_net_args
(
layers
)
bws
=
args
[
'bw'
]
inc_sec
=
args
[
'inc_sec'
]
rs
=
args
[
'r'
]
...
...
@@ -45,39 +209,23 @@ class DPN(object):
init_filter_size
=
args
[
'init_filter_size'
]
init_padding
=
args
[
'init_padding'
]
## define Dual Path Network
self
.
k_sec
=
k_sec
# conv1
conv1_x_1
=
fluid
.
layers
.
conv2d
(
input
=
input
,
self
.
conv1_x_1_func
=
ConvBNLayer
(
num_channels
=
3
,
num_filters
=
init_num_filter
,
filter_size
=
init_filter_size
,
filter_size
=
3
,
stride
=
2
,
padding
=
init_padding
,
groups
=
1
,
act
=
None
,
bias_attr
=
False
,
name
=
"conv1"
,
param_attr
=
ParamAttr
(
name
=
"conv1_weights"
),
)
conv1_x_1
=
fluid
.
layers
.
batch_norm
(
input
=
conv1_x_1
,
pad
=
1
,
act
=
'relu'
,
is_test
=
False
,
name
=
"conv1_bn"
,
param_attr
=
ParamAttr
(
name
=
'conv1_bn_scale'
),
bias_attr
=
ParamAttr
(
'conv1_bn_offset'
),
moving_mean_name
=
'conv1_bn_mean'
,
moving_variance_name
=
'conv1_bn_variance'
,
)
convX_x_x
=
fluid
.
layers
.
pool2d
(
input
=
conv1_x_1
,
pool_size
=
3
,
pool_stride
=
2
,
pool_padding
=
1
,
pool_type
=
'max'
,
name
=
"pool1"
)
name
=
"conv1"
)
self
.
pool2d_max
=
Pool2D
(
pool_size
=
3
,
pool_stride
=
2
,
pool_padding
=
1
,
pool_type
=
'max'
)
num_channel_dpn
=
init_num_filter
self
.
dpn_func_list
=
[]
#conv2 - conv5
match_list
,
num
=
[],
0
for
gc
in
range
(
4
):
...
...
@@ -93,43 +241,82 @@ class DPN(object):
_type2
=
'normal'
match
=
match
+
k_sec
[
gc
-
1
]
match_list
.
append
(
match
)
self
.
dpn_func_list
.
append
(
self
.
add_sublayer
(
"dpn{}"
.
format
(
match
),
DualPathFactory
(
num_channels
=
num_channel_dpn
,
num_1x1_a
=
R
,
num_3x3_b
=
R
,
num_1x1_c
=
bw
,
inc
=
inc
,
G
=
G
,
_type
=
_type1
,
name
=
"dpn"
+
str
(
match
))))
num_channel_dpn
=
[
bw
,
3
*
inc
]
convX_x_x
=
self
.
dual_path_factory
(
convX_x_x
,
R
,
R
,
bw
,
inc
,
G
,
_type1
,
name
=
"dpn"
+
str
(
match
))
for
i_ly
in
range
(
2
,
k_sec
[
gc
]
+
1
):
num
+=
1
if
num
in
match_list
:
num
+=
1
convX_x_x
=
self
.
dual_path_factory
(
convX_x_x
,
R
,
R
,
bw
,
inc
,
G
,
_type2
,
name
=
"dpn"
+
str
(
num
))
conv5_x_x
=
fluid
.
layers
.
concat
(
convX_x_x
,
axis
=
1
)
conv5_x_x
=
fluid
.
layers
.
batch_norm
(
input
=
conv5_x_x
,
act
=
'relu'
,
is_test
=
False
,
name
=
"final_concat_bn"
,
self
.
dpn_func_list
.
append
(
self
.
add_sublayer
(
"dpn{}"
.
format
(
num
),
DualPathFactory
(
num_channels
=
num_channel_dpn
,
num_1x1_a
=
R
,
num_3x3_b
=
R
,
num_1x1_c
=
bw
,
inc
=
inc
,
G
=
G
,
_type
=
_type2
,
name
=
"dpn"
+
str
(
num
))))
num_channel_dpn
=
[
num_channel_dpn
[
0
],
num_channel_dpn
[
1
]
+
inc
]
out_channel
=
sum
(
num_channel_dpn
)
self
.
conv5_x_x_bn
=
BatchNorm
(
num_channels
=
sum
(
num_channel_dpn
),
act
=
"relu"
,
param_attr
=
ParamAttr
(
name
=
'final_concat_bn_scale'
),
bias_attr
=
ParamAttr
(
'final_concat_bn_offset'
),
moving_mean_name
=
'final_concat_bn_mean'
,
moving_variance_name
=
'final_concat_bn_variance'
,
)
pool5
=
fluid
.
layers
.
pool2d
(
input
=
conv5_x_x
,
pool_size
=
7
,
pool_stride
=
1
,
pool_padding
=
0
,
pool_type
=
'avg'
,
)
moving_variance_name
=
'final_concat_bn_variance'
)
self
.
pool2d_avg
=
Pool2D
(
pool_type
=
'avg'
,
global_pooling
=
True
)
stdv
=
0.01
fc6
=
fluid
.
layers
.
fc
(
input
=
pool5
,
size
=
class_dim
,
self
.
out
=
Linear
(
out_channel
,
class_dim
,
param_attr
=
ParamAttr
(
initializer
=
fluid
.
initializer
.
Uniform
(
-
stdv
,
stdv
),
name
=
'fc_weights'
),
bias_attr
=
ParamAttr
(
name
=
'fc_offset'
))
name
=
"fc_weights"
),
bias_attr
=
ParamAttr
(
name
=
"fc_offset"
))
def
forward
(
self
,
input
):
conv1_x_1
=
self
.
conv1_x_1_func
(
input
)
convX_x_x
=
self
.
pool2d_max
(
conv1_x_1
)
dpn_idx
=
0
for
gc
in
range
(
4
):
convX_x_x
=
self
.
dpn_func_list
[
dpn_idx
](
convX_x_x
)
dpn_idx
+=
1
for
i_ly
in
range
(
2
,
self
.
k_sec
[
gc
]
+
1
):
convX_x_x
=
self
.
dpn_func_list
[
dpn_idx
](
convX_x_x
)
dpn_idx
+=
1
conv5_x_x
=
fluid
.
layers
.
concat
(
convX_x_x
,
axis
=
1
)
conv5_x_x
=
self
.
conv5_x_x_bn
(
conv5_x_x
)
return
fc6
y
=
self
.
pool2d_avg
(
conv5_x_x
)
y
=
fluid
.
layers
.
reshape
(
y
,
shape
=
[
0
,
-
1
])
y
=
self
.
out
(
y
)
return
y
def
get_net_args
(
self
,
layers
):
if
layers
==
68
:
...
...
@@ -198,119 +385,6 @@ class DPN(object):
return
net_arg
def
dual_path_factory
(
self
,
data
,
num_1x1_a
,
num_3x3_b
,
num_1x1_c
,
inc
,
G
,
_type
=
'normal'
,
name
=
None
):
kw
=
3
kh
=
3
pw
=
(
kw
-
1
)
//
2
ph
=
(
kh
-
1
)
//
2
# type
if
_type
is
'proj'
:
key_stride
=
1
has_proj
=
True
if
_type
is
'down'
:
key_stride
=
2
has_proj
=
True
if
_type
is
'normal'
:
key_stride
=
1
has_proj
=
False
# PROJ
if
type
(
data
)
is
list
:
data_in
=
fluid
.
layers
.
concat
([
data
[
0
],
data
[
1
]],
axis
=
1
)
else
:
data_in
=
data
if
has_proj
:
c1x1_w
=
self
.
bn_ac_conv
(
data
=
data_in
,
num_filter
=
(
num_1x1_c
+
2
*
inc
),
kernel
=
(
1
,
1
),
pad
=
(
0
,
0
),
stride
=
(
key_stride
,
key_stride
),
name
=
name
+
"_match"
)
data_o1
,
data_o2
=
fluid
.
layers
.
split
(
c1x1_w
,
num_or_sections
=
[
num_1x1_c
,
2
*
inc
],
dim
=
1
,
name
=
name
+
"_match_conv_Slice"
)
else
:
data_o1
=
data
[
0
]
data_o2
=
data
[
1
]
# MAIN
c1x1_a
=
self
.
bn_ac_conv
(
data
=
data_in
,
num_filter
=
num_1x1_a
,
kernel
=
(
1
,
1
),
pad
=
(
0
,
0
),
name
=
name
+
"_conv1"
)
c3x3_b
=
self
.
bn_ac_conv
(
data
=
c1x1_a
,
num_filter
=
num_3x3_b
,
kernel
=
(
kw
,
kh
),
pad
=
(
pw
,
ph
),
stride
=
(
key_stride
,
key_stride
),
num_group
=
G
,
name
=
name
+
"_conv2"
)
c1x1_c
=
self
.
bn_ac_conv
(
data
=
c3x3_b
,
num_filter
=
(
num_1x1_c
+
inc
),
kernel
=
(
1
,
1
),
pad
=
(
0
,
0
),
name
=
name
+
"_conv3"
)
c1x1_c1
,
c1x1_c2
=
fluid
.
layers
.
split
(
c1x1_c
,
num_or_sections
=
[
num_1x1_c
,
inc
],
dim
=
1
,
name
=
name
+
"_conv3_Slice"
)
# OUTPUTS
summ
=
fluid
.
layers
.
elementwise_add
(
x
=
data_o1
,
y
=
c1x1_c1
,
name
=
name
+
"_elewise"
)
dense
=
fluid
.
layers
.
concat
(
[
data_o2
,
c1x1_c2
],
axis
=
1
,
name
=
name
+
"_concat"
)
return
[
summ
,
dense
]
def
bn_ac_conv
(
self
,
data
,
num_filter
,
kernel
,
pad
,
stride
=
(
1
,
1
),
num_group
=
1
,
name
=
None
):
bn_ac
=
fluid
.
layers
.
batch_norm
(
input
=
data
,
act
=
'relu'
,
is_test
=
False
,
name
=
name
+
'.output.1'
,
param_attr
=
ParamAttr
(
name
=
name
+
'_bn_scale'
),
bias_attr
=
ParamAttr
(
name
+
'_bn_offset'
),
moving_mean_name
=
name
+
'_bn_mean'
,
moving_variance_name
=
name
+
'_bn_variance'
,
)
bn_ac_conv
=
fluid
.
layers
.
conv2d
(
input
=
bn_ac
,
num_filters
=
num_filter
,
filter_size
=
kernel
,
stride
=
stride
,
padding
=
pad
,
groups
=
num_group
,
act
=
None
,
bias_attr
=
False
,
param_attr
=
ParamAttr
(
name
=
name
+
"_weights"
))
return
bn_ac_conv
def
DPN68
():
model
=
DPN
(
layers
=
68
)
...
...
ppcls/modeling/architectures/hrnet.py
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