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f2efef7a
编写于
3月 14, 2022
作者:
K
KP
提交者:
GitHub
3月 14, 2022
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Merge pull request #1717 from rainyfly/face_parse
add face_parse module
上级
66576c22
853d5434
变更
5
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Showing
5 changed file
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329 addition
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+329
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modules/image/Image_gan/style_transfer/face_parse/README.md
modules/image/Image_gan/style_transfer/face_parse/README.md
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-0
modules/image/Image_gan/style_transfer/face_parse/model.py
modules/image/Image_gan/style_transfer/face_parse/model.py
+51
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modules/image/Image_gan/style_transfer/face_parse/module.py
modules/image/Image_gan/style_transfer/face_parse/module.py
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modules/image/Image_gan/style_transfer/face_parse/requirements.txt
...mage/Image_gan/style_transfer/face_parse/requirements.txt
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modules/image/Image_gan/style_transfer/face_parse/util.py
modules/image/Image_gan/style_transfer/face_parse/util.py
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未找到文件。
modules/image/Image_gan/style_transfer/face_parse/README.md
0 → 100644
浏览文件 @
f2efef7a
# face_parse
|模型名称|face_parse|
| :--- | :---: |
|类别|图像 - 人脸解析|
|网络|BiSeNet|
|数据集|COCO-Stuff|
|是否支持Fine-tuning|否|
|模型大小|77MB|
|最新更新日期|2021-12-07|
|数据指标|-|
## 一、模型基本信息
-
### 应用效果展示
-
样例结果示例:
<p
align=
"center"
>
<img
src=
"https://user-images.githubusercontent.com/22424850/157190651-595b6964-97c5-4b0b-ac0a-c30c8520a972.png"
width =
"40%"
hspace=
'10'
/>
<br
/>
输入图像
<br
/>
<img
src=
"https://user-images.githubusercontent.com/22424850/157192693-b3f737ed-1a24-4ef9-8454-bfd9d51755af.png"
width =
"40%"
hspace=
'10'
/>
<br
/>
输出图像
<br
/>
</p>
-
### 模型介绍
-
人脸解析是语义图像分割的一种特殊情况,人脸解析是计算人脸图像中不同语义成分(如头发、嘴唇、鼻子、眼睛等)的像素级标签映射。给定一个输入的人脸图像,人脸解析将为每个语义成分分配一个像素级标签。
## 二、安装
-
### 1、环境依赖
-
ppgan
-
dlib
-
### 2、安装
-
```shell
$ hub install face_parse
```
-
如您安装时遇到问题,可参考:
[
零基础windows安装
](
../../../../docs/docs_ch/get_start/windows_quickstart.md
)
|
[
零基础Linux安装
](
../../../../docs/docs_ch/get_start/linux_quickstart.md
)
|
[
零基础MacOS安装
](
../../../../docs/docs_ch/get_start/mac_quickstart.md
)
## 三、模型API预测
-
### 1、命令行预测
-
```shell
# Read from a file
$ hub run face_parse --input_path "/PATH/TO/IMAGE"
```
-
通过命令行方式实现人脸解析模型的调用,更多请见
[
PaddleHub命令行指令
](
../../../../docs/docs_ch/tutorial/cmd_usage.rst
)
-
### 2、预测代码示例
-
```python
import paddlehub as hub
module = hub.Module(name="face_parse")
input_path = ["/PATH/TO/IMAGE"]
# Read from a file
module.style_transfer(paths=input_path, output_dir='./transfer_result/', use_gpu=True)
```
-
### 3、API
-
```python
style_transfer(images=None, paths=None, output_dir='./transfer_result/', use_gpu=False, visualization=True):
```
-
人脸解析转换API。
- **参数**
- images (list\[numpy.ndarray\]): 图片数据,ndarray.shape 为 \[H, W, C\];<br/>
- paths (list\[str\]): 图片的路径;<br/>
- output\_dir (str): 结果保存的路径; <br/>
- use\_gpu (bool): 是否使用 GPU;<br/>
- visualization(bool): 是否保存结果到本地文件夹
## 四、服务部署
-
PaddleHub Serving可以部署一个在线人脸解析转换服务。
-
### 第一步:启动PaddleHub Serving
-
运行启动命令:
-
```shell
$ hub serving start -m face_parse
```
-
这样就完成了一个人脸解析转换的在线服务API的部署,默认端口号为8866。
-
**NOTE:**
如使用GPU预测,则需要在启动服务之前,请设置CUDA
\_
VISIBLE
\_
DEVICES环境变量,否则不用设置。
-
### 第二步:发送预测请求
-
配置好服务端,以下数行代码即可实现发送预测请求,获取预测结果
-
```python
import requests
import json
import cv2
import base64
def cv2_to_base64(image):
data = cv2.imencode('.jpg', image)[1]
return base64.b64encode(data.tostring()).decode('utf8')
# 发送HTTP请求
data = {'images':[cv2_to_base64(cv2.imread("/PATH/TO/IMAGE"))]}
headers = {"Content-type": "application/json"}
url = "http://127.0.0.1:8866/predict/face_parse"
r = requests.post(url=url, headers=headers, data=json.dumps(data))
# 打印预测结果
print(r.json()["results"])
## 五、更新历史
* 1.0.0
初始发布
- ```
shell
$ hub install face_parse==1.0.0
```
modules/image/Image_gan/style_transfer/face_parse/model.py
0 → 100644
浏览文件 @
f2efef7a
# 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.
import
os
import
sys
import
argparse
from
PIL
import
Image
import
numpy
as
np
import
cv2
import
ppgan.faceutils
as
futils
from
ppgan.utils.preprocess
import
*
from
ppgan.utils.visual
import
mask2image
class
FaceParsePredictor
:
def
__init__
(
self
):
self
.
input_size
=
(
512
,
512
)
self
.
up_ratio
=
0.6
/
0.85
self
.
down_ratio
=
0.2
/
0.85
self
.
width_ratio
=
0.2
/
0.85
self
.
face_parser
=
futils
.
mask
.
FaceParser
()
def
run
(
self
,
image
):
image
=
Image
.
fromarray
(
image
)
face
=
futils
.
dlib
.
detect
(
image
)
if
not
face
:
return
face_on_image
=
face
[
0
]
image
,
face
,
crop_face
=
futils
.
dlib
.
crop
(
image
,
face_on_image
,
self
.
up_ratio
,
self
.
down_ratio
,
self
.
width_ratio
)
np_image
=
np
.
array
(
image
)
mask
=
self
.
face_parser
.
parse
(
np
.
float32
(
cv2
.
resize
(
np_image
,
self
.
input_size
)))
mask
=
cv2
.
resize
(
mask
.
numpy
(),
(
256
,
256
))
mask
=
mask
.
astype
(
np
.
uint8
)
mask
=
mask2image
(
mask
)
return
mask
modules/image/Image_gan/style_transfer/face_parse/module.py
0 → 100644
浏览文件 @
f2efef7a
# Copyright (c) 2021 PaddlePaddle Authors. All Rights Reserved.
#
# 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.
import
argparse
import
copy
import
os
import
cv2
import
numpy
as
np
import
paddle
from
skimage.io
import
imread
from
skimage.transform
import
rescale
from
skimage.transform
import
resize
import
paddlehub
as
hub
from
.model
import
FaceParsePredictor
from
.util
import
base64_to_cv2
from
paddlehub.module.module
import
moduleinfo
from
paddlehub.module.module
import
runnable
from
paddlehub.module.module
import
serving
@
moduleinfo
(
name
=
"face_parse"
,
type
=
"CV/style_transfer"
,
author
=
"paddlepaddle"
,
author_email
=
""
,
summary
=
""
,
version
=
"1.0.0"
)
class
Face_parse
:
def
__init__
(
self
):
self
.
pretrained_model
=
os
.
path
.
join
(
self
.
directory
,
"bisenet.pdparams"
)
self
.
network
=
FaceParsePredictor
()
def
style_transfer
(
self
,
images
:
list
=
None
,
paths
:
list
=
None
,
output_dir
:
str
=
'./transfer_result/'
,
use_gpu
:
bool
=
False
,
visualization
:
bool
=
True
):
'''
images (list[numpy.ndarray]): data of images, shape of each is [H, W, C], color space must be BGR(read by cv2).
paths (list[str]): paths to images
output_dir (str): the dir to save the results
use_gpu (bool): if True, use gpu to perform the computation, otherwise cpu.
visualization (bool): if True, save results in output_dir.
'''
results
=
[]
paddle
.
disable_static
()
place
=
'gpu:0'
if
use_gpu
else
'cpu'
place
=
paddle
.
set_device
(
place
)
if
images
==
None
and
paths
==
None
:
print
(
'No image provided. Please input an image or a image path.'
)
return
if
images
!=
None
:
for
image
in
images
:
image
=
image
[:,
:,
::
-
1
]
out
=
self
.
network
.
run
(
image
)
results
.
append
(
out
)
if
paths
!=
None
:
for
path
in
paths
:
image
=
cv2
.
imread
(
path
)[:,
:,
::
-
1
]
out
=
self
.
network
.
run
(
image
)
results
.
append
(
out
)
if
visualization
==
True
:
if
not
os
.
path
.
exists
(
output_dir
):
os
.
makedirs
(
output_dir
,
exist_ok
=
True
)
for
i
,
out
in
enumerate
(
results
):
if
out
is
not
None
:
cv2
.
imwrite
(
os
.
path
.
join
(
output_dir
,
'output_{}.png'
.
format
(
i
)),
out
[:,
:,
::
-
1
])
return
results
@
runnable
def
run_cmd
(
self
,
argvs
:
list
):
"""
Run as a command.
"""
self
.
parser
=
argparse
.
ArgumentParser
(
description
=
"Run the {} module."
.
format
(
self
.
name
),
prog
=
'hub run {}'
.
format
(
self
.
name
),
usage
=
'%(prog)s'
,
add_help
=
True
)
self
.
arg_input_group
=
self
.
parser
.
add_argument_group
(
title
=
"Input options"
,
description
=
"Input data. Required"
)
self
.
arg_config_group
=
self
.
parser
.
add_argument_group
(
title
=
"Config options"
,
description
=
"Run configuration for controlling module behavior, not required."
)
self
.
add_module_config_arg
()
self
.
add_module_input_arg
()
self
.
args
=
self
.
parser
.
parse_args
(
argvs
)
results
=
self
.
style_transfer
(
paths
=
[
self
.
args
.
input_path
],
output_dir
=
self
.
args
.
output_dir
,
use_gpu
=
self
.
args
.
use_gpu
,
visualization
=
self
.
args
.
visualization
)
return
results
@
serving
def
serving_method
(
self
,
images
,
**
kwargs
):
"""
Run as a service.
"""
images_decode
=
[
base64_to_cv2
(
image
)
for
image
in
images
]
results
=
self
.
style_transfer
(
images
=
images_decode
,
**
kwargs
)
tolist
=
[
result
.
tolist
()
for
result
in
results
]
return
tolist
def
add_module_config_arg
(
self
):
"""
Add the command config options.
"""
self
.
arg_config_group
.
add_argument
(
'--use_gpu'
,
action
=
'store_true'
,
help
=
"use GPU or not"
)
self
.
arg_config_group
.
add_argument
(
'--output_dir'
,
type
=
str
,
default
=
'transfer_result'
,
help
=
'output directory for saving result.'
)
self
.
arg_config_group
.
add_argument
(
'--visualization'
,
type
=
bool
,
default
=
False
,
help
=
'save results or not.'
)
def
add_module_input_arg
(
self
):
"""
Add the command input options.
"""
self
.
arg_input_group
.
add_argument
(
'--input_path'
,
type
=
str
,
help
=
"path to input image."
)
modules/image/Image_gan/style_transfer/face_parse/requirements.txt
0 → 100644
浏览文件 @
f2efef7a
ppgan
dlib
modules/image/Image_gan/style_transfer/face_parse/util.py
0 → 100644
浏览文件 @
f2efef7a
import
base64
import
cv2
import
numpy
as
np
def
base64_to_cv2
(
b64str
):
data
=
base64
.
b64decode
(
b64str
.
encode
(
'utf8'
))
data
=
np
.
fromstring
(
data
,
np
.
uint8
)
data
=
cv2
.
imdecode
(
data
,
cv2
.
IMREAD_COLOR
)
return
data
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