aistudio: https://aistudio.baidu.com/aistudio/projectdetail/2557831?contributionType=1
github: https://github.com/livingbody/paddlehub_cat
- 从Oxford-IIIT Pet宠物数据集提取cat据集
- 重新制作label,背景设置为0,图像设置为1
- 最终iter 2100时, mIoU =0.7874,仍有上升空间,只是耗时较长,不再训练
- 通过paddlehub部署导出的静态模型
模型文件见当前目录 model.gz , paddlehub部署见 catseg_mobile.zip 。
最后就可以完美抠图了,可以制作猫猫证件照了。
PaddleSeg是基于飞桨PaddlePaddle开发的端到端图像分割开发套件,涵盖了高精度和轻量级等不同方向的大量高质量分割模型。通过模块化的设计,提供了配置化驱动和API调用两种应用方式,帮助开发者更便捷地完成从训练到部署的全流程图像分割应用。
特性
- 高精度模型: 基于百度自研的半监督标签知识蒸馏方案(SSLD)训练得到高精度骨干网络,结合前沿的分割技术,提供了50+的高质量预训练模型,效果优于其他开源实现。
- 模块化设计: 支持15+主流 分割网络 ,结合模块化设计的 数据增强策略 、骨干网络、损失函数 等不同组件,开发者可以基于实际应用场景出发,组装多样化的训练配置,满足不同性能和精度的要求。
- 高性能: 支持多进程异步I/O、多卡并行训练、评估等加速策略,结合飞桨核心框架的显存优化功能,可大幅度减少分割模型的训练开销,让开发者更低成本、更高效地完成图像分割训练。
! git clone https://gitee.com/paddlepaddle/PaddleSeg.git --depth=1
Cloning into 'PaddleSeg'...
remote: Enumerating objects: 1589, done.�[K
remote: Counting objects: 100% (1589/1589), done.�[K
remote: Compressing objects: 100% (1354/1354), done.�[K
remote: Total 1589 (delta 309), reused 1117 (delta 142), pack-reused 0�[K
Receiving objects: 100% (1589/1589), 88.49 MiB | 5.57 MiB/s, done.
Resolving deltas: 100% (309/309), done.
Checking connectivity... done.
需要手动删除dataset/annotations/list.txt文件头,便于pandas读取,如麻烦,可以直接使用已制作好的数据集二,cat数据集。
# 解压缩数据集
!mkdir dataset
!tar -xvf data/data50154/images.tar.gz -C dataset/
!tar -xvf data/data50154/annotations.tar.gz -C dataset/
# 查看list文件
!head -n 10 dataset/annotations/list.txt
#Image CLASS-ID SPECIES BREED ID
#ID: 1:37 Class ids
#SPECIES: 1:Cat 2:Dog
#BREED ID: 1-25:Cat 1:12:Dog
#All images with 1st letter as captial are cat images
#images with small first letter are dog images
Abyssinian_100 1 1 1
Abyssinian_101 1 1 1
Abyssinian_102 1 1 1
Abyssinian_103 1 1 1
# 删除文件前6行描述头,方便pandas读取
!sed -i '1,6d' dataset/annotations/list.txt
!head dataset/annotations/list.txt
Abyssinian_100 1 1 1
Abyssinian_101 1 1 1
Abyssinian_102 1 1 1
Abyssinian_103 1 1 1
Abyssinian_104 1 1 1
Abyssinian_105 1 1 1
Abyssinian_106 1 1 1
Abyssinian_107 1 1 1
Abyssinian_108 1 1 1
Abyssinian_109 1 1 1
import pandas as pd
import shutil
import os
# Image CLASS-ID SPECIES BREED ID
# ID: 1:37 Class ids
# SPECIES: 1:Cat 2:Dog
# BREED ID: 1-25:Cat 1:12:Dog
# All images with 1st letter as captial are cat images
# images with small first letter are dog images
# ._Abyssinian_100.png
def copyfile(animal, filename):
# image\label列表
file_list = []
image_file = filename + '.jpg'
label_file = filename + '.png'
if os.path.exists(os.path.join('dataset/images', image_file)):
shutil.copy(os.path.join('dataset/images', image_file), os.path.join(f'{animal}/images', image_file))
shutil.copy(os.path.join('dataset/annotations/trimaps', label_file),
os.path.join(f'{animal}/labels', label_file))
temp = os.path.join('images/', image_file) + ' ' + os.path.join('labels/',label_file) + '\n'
file_list.append(temp)
with open(os.path.join(animal, animal + '.txt'), 'a') as f:
f.writelines(file_list)
if __name__ == "__main__":
data = pd.read_csv('dataset/annotations/list.txt', header=None, sep=' ')
data.head()
cat = data[data[2] == 1]
dog = data[data[2] == 2]
for item in cat[0]:
copyfile('cat', item)
for item in dog[0]:
copyfile('dog', item)
# 删除无用数据
!rm dataset/ -rf
├── cat.txt
├── images
│ ├── Abyssinian_100.jpg
│ ├── Abyssinian_101.jpg
│ ├── ...
├── labels
│ ├── Abyssinian_100.png
│ ├── Abyssinian_101.png
│ ├── ...
images/Abyssinian_1.jpg labels/Abyssinian_1.png
images/Abyssinian_10.jpg labels/Abyssinian_10.png
images/Abyssinian_100.jpg labels/Abyssinian_100.png
...
%cd ~
from PIL import Image
img=Image.open('cat/images/Abyssinian_123.jpg')
print(img)
img
/home/aistudio
<PIL.JpegImagePlugin.JpegImageFile image mode=RGB size=500x333 at 0x7F203C05FBD0>
img=Image.open('data:image/png;base64,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')
print(img)
img
<PIL.PngImagePlugin.PngImageFile image mode=L size=500x333 at 0x7F203C0574D0>
标签是从0开始排序,本项目的数据提取自Oxford-IIIT Pet https://www.robots.ox.ac.uk/~vgg/data/pets 宠物数据集,该数据集是从1开始编码,所以需要重新编码。背景设置为0,图像设置为1.
# 执行一次即可
import pandas as pd
import os
import matplotlib.pyplot as plt
import numpy as np
from PIL import Image
def re_label(filename):
img = plt.imread(filename) * 255.0
img_label = np.zeros((img.shape[0], img.shape[1]), np.uint8)
for i in range(img.shape[0]):
for j in range(img.shape[1]):
value = img[i, j]
if value == 2:
img_label[i, j] = 1
label0 = Image.fromarray(np.uint8(img_label))
label0.save( filename)
data=pd.read_csv("cat/cat.txt", header=None, sep=' ')
for item in data[1]:
re_label(os.path.join('cat', item))
print('处理完毕!')
处理完毕!
import os
from sklearn.model_selection import train_test_split
import pandas as pd
def break_data(target, rate=0.2):
origin_dataset = pd.read_csv("cat/cat.txt", header=None, sep=' ') # 加入参数
train_data, test_data = train_test_split(origin_dataset, test_size=rate)
train_data,eval_data=train_test_split(train_data, test_size=rate)
train_filename = os.path.join(target, 'train.txt')
test_filename = os.path.join(target, 'test.txt')
eval_filename = os.path.join(target, 'eval.txt')
train_data.to_csv(train_filename, index=False, sep=' ', header=None)
test_data.to_csv(test_filename, index=False, sep=' ', header=None)
eval_data.to_csv(eval_filename, index=False, sep=' ', header=None)
print('train_data:',len(train_data))
print('test_data:',len(test_data))
print('eval_data:',len(eval_data))
if __name__ == '__main__':
break_data(target='cat', rate=0.2)
train_data: 1516
test_data: 475
eval_data: 380
# 查看
!head cat/train.txt
images/Bengal_173.jpg labels/Bengal_173.png
images/Siamese_179.jpg labels/Siamese_179.png
images/British_Shorthair_201.jpg labels/British_Shorthair_201.png
images/Russian_Blue_60.jpg labels/Russian_Blue_60.png
images/British_Shorthair_93.jpg labels/British_Shorthair_93.png
images/British_Shorthair_26.jpg labels/British_Shorthair_26.png
images/British_Shorthair_209.jpg labels/British_Shorthair_209.png
images/British_Shorthair_101.jpg labels/British_Shorthair_101.png
images/British_Shorthair_269.jpg labels/British_Shorthair_269.png
images/Ragdoll_59.jpg labels/Ragdoll_59.png
# 已配置好,可以不用复制了
# !cp PaddleSeg/configs/quick_start/bisenet_optic_disc_512x512_1k.yml ~/bisenet_optic_disc_512x512_1k.yml
修改 bisenet_optic_disc_512x512_1k.yml,要注意一下几点:
- 1.数据集路径配置
- 2.num_classes设置,背景不算
- 3.transforms设置
- 4.loss设置
batch_size: 600
iters: 5000
train_dataset:
type: Dataset
dataset_root: /home/aistudio/cat/
train_path: /home/aistudio/cat/train.txt
num_classes: 2
transforms:
- type: ResizeStepScaling
min_scale_factor: 0.5
max_scale_factor: 2.0
scale_step_size: 0.25
- type: RandomPaddingCrop
crop_size: [224, 224]
- type: RandomHorizontalFlip
- type: RandomDistort
brightness_range: 0.4
contrast_range: 0.4
saturation_range: 0.4
- type: Normalize
mode: train
val_dataset:
type: Dataset
dataset_root: /home/aistudio/cat/
val_path: /home/aistudio/cat/eval.txt
num_classes: 2
transforms:
- type: Normalize
mode: val
optimizer:
type: sgd
momentum: 0.9
weight_decay: 0.0005
lr_scheduler:
type: PolynomialDecay
learning_rate: 0.05
end_lr: 0
power: 0.9
loss:
types:
- type: CrossEntropyLoss
coef: [1]
model:
type: FCN
backbone:
type: HRNet_W18_Small_V1
align_corners: False
num_classes: 2
pretrained: Null
%cd ~/PaddleSeg/
! python train.py --config ../bisenet_optic_disc_512x512_1k.yml\
--do_eval \
--use_vdl \
--save_interval 100 \
--save_dir output
2021-11-13 19:30:52 [INFO] [TRAIN] epoch: 1105, iter: 2210/5000, loss: 0.1849, lr: 0.029586, batch_cost: 8.8180, reader_cost: 7.73956, ips: 68.0427 samples/sec | ETA 06:50:02
2021-11-13 19:32:18 [INFO] [TRAIN] epoch: 1110, iter: 2220/5000, loss: 0.1768, lr: 0.029490, batch_cost: 8.6004, reader_cost: 7.52235, ips: 69.7641 samples/sec | ETA 06:38:29
2021-11-13 19:33:47 [INFO] [TRAIN] epoch: 1115, iter: 2230/5000, loss: 0.1791, lr: 0.029395, batch_cost: 8.8851, reader_cost: 7.80702, ips: 67.5288 samples/sec | ETA 06:50:11
2021-11-13 19:35:14 [INFO] [TRAIN] epoch: 1120, iter: 2240/5000, loss: 0.1835, lr: 0.029299, batch_cost: 8.6699, reader_cost: 7.59314, ips: 69.2053 samples/sec | ETA 06:38:48
2021-11-13 19:36:41 [INFO] [TRAIN] epoch: 1125, iter: 2250/5000, loss: 0.1815, lr: 0.029204, batch_cost: 8.7713, reader_cost: 7.68169, ips: 68.4051 samples/sec | ETA 06:42:00
2021-11-13 19:38:08 [INFO] [TRAIN] epoch: 1130, iter: 2260/5000, loss: 0.1833, lr: 0.029108, batch_cost: 8.7045, reader_cost: 7.62504, ips: 68.9299 samples/sec | ETA 06:37:30
2021-11-13 19:39:35 [INFO] [TRAIN] epoch: 1135, iter: 2270/5000, loss: 0.1741, lr: 0.029013, batch_cost: 8.7032, reader_cost: 7.61708, ips: 68.9401 samples/sec | ETA 06:35:59
2021-11-13 19:41:03 [INFO] [TRAIN] epoch: 1140, iter: 2280/5000, loss: 0.1810, lr: 0.028917, batch_cost: 8.8020, reader_cost: 7.72264, ips: 68.1664 samples/sec | ETA 06:39:01
2021-11-13 19:42:33 [INFO] [TRAIN] epoch: 1145, iter: 2290/5000, loss: 0.1799, lr: 0.028821, batch_cost: 8.9336, reader_cost: 7.84692, ips: 67.1623 samples/sec | ETA 06:43:30
2021-11-13 19:44:02 [INFO] [TRAIN] epoch: 1150, iter: 2300/5000, loss: 0.1756, lr: 0.028726, batch_cost: 8.9216, reader_cost: 7.84517, ips: 67.2524 samples/sec | ETA 06:41:28
2021-11-13 19:44:02 [INFO] Start evaluating (total_samples: 380, total_iters: 380)...
380/380 [==============================] - 15s 40ms/step - batch_cost: 0.0394 - reader cost: 0.001
2021-11-13 19:44:17 [INFO] [EVAL] #Images: 380 mIoU: 0.7640 Acc: 0.8681 Kappa: 0.7330
2021-11-13 19:44:17 [INFO] [EVAL] Class IoU:
[0.7378 0.7902]
2021-11-13 19:44:17 [INFO] [EVAL] Class Acc:
[0.7925 0.9347]
2021-11-13 19:44:17 [INFO] [EVAL] The model with the best validation mIoU (0.7874) was saved at iter 2100.
!python val.py \
--config /home/aistudio/bisenet_optic_disc_512x512_1k.yml\
--model_path output/best_model/model.pdparams
2021-11-13 19:48:13 [INFO]
---------------Config Information---------------
batch_size: 600
iters: 5000
loss:
coef:
- 1
types:
- type: CrossEntropyLoss
lr_scheduler:
end_lr: 0
learning_rate: 0.05
power: 0.9
type: PolynomialDecay
model:
backbone:
align_corners: false
type: HRNet_W18_Small_V1
num_classes: 2
pretrained: null
type: FCN
optimizer:
momentum: 0.9
type: sgd
weight_decay: 0.0005
train_dataset:
dataset_root: /home/aistudio/cat/
mode: train
num_classes: 2
train_path: /home/aistudio/cat/train.txt
transforms:
- max_scale_factor: 2.0
min_scale_factor: 0.5
scale_step_size: 0.25
type: ResizeStepScaling
- crop_size:
- 224
- 224
type: RandomPaddingCrop
- type: RandomHorizontalFlip
- brightness_range: 0.4
contrast_range: 0.4
saturation_range: 0.4
type: RandomDistort
- type: Normalize
type: Dataset
val_dataset:
dataset_root: /home/aistudio/cat/
mode: val
num_classes: 2
transforms:
- type: Normalize
type: Dataset
val_path: /home/aistudio/cat/eval.txt
------------------------------------------------
W1113 19:48:13.707370 4265 device_context.cc:404] Please NOTE: device: 0, GPU Compute Capability: 7.0, Driver API Version: 10.1, Runtime API Version: 10.1
W1113 19:48:13.707428 4265 device_context.cc:422] device: 0, cuDNN Version: 7.6.
2021-11-13 19:48:19 [INFO] Loading pretrained model from output/best_model/model.pdparams
2021-11-13 19:48:19 [INFO] There are 363/363 variables loaded into FCN.
2021-11-13 19:48:19 [INFO] Loaded trained params of model successfully
2021-11-13 19:48:19 [INFO] Start evaluating (total_samples: 380, total_iters: 380)...
/opt/conda/envs/python35-paddle120-env/lib/python3.7/site-packages/paddle/fluid/dygraph/math_op_patch.py:239: UserWarning: The dtype of left and right variables are not the same, left dtype is paddle.int32, but right dtype is paddle.bool, the right dtype will convert to paddle.int32
format(lhs_dtype, rhs_dtype, lhs_dtype))
/opt/conda/envs/python35-paddle120-env/lib/python3.7/site-packages/paddle/fluid/dygraph/math_op_patch.py:239: UserWarning: The dtype of left and right variables are not the same, left dtype is paddle.int64, but right dtype is paddle.bool, the right dtype will convert to paddle.int64
format(lhs_dtype, rhs_dtype, lhs_dtype))
380/380 [==============================] - 15s 41ms/step - batch_cost: 0.0405 - reader cost: 0.00
2021-11-13 19:48:35 [INFO] [EVAL] #Images: 380 mIoU: 0.7874 Acc: 0.8838 Kappa: 0.7616
2021-11-13 19:48:35 [INFO] [EVAL] Class IoU:
[0.7566 0.8181]
2021-11-13 19:48:35 [INFO] [EVAL] Class Acc:
[0.8349 0.9211]
380/380 [==============================] - 15s 41ms/step - batch_cost: 0.0405 - reader cost: 0.00
2021-11-13 19:48:35 [INFO] [EVAL] #Images: 380 mIoU: 0.7874 Acc: 0.8838 Kappa: 0.7616
2021-11-13 19:48:35 [INFO] [EVAL] Class IoU:
[0.7566 0.8181]
2021-11-13 19:48:35 [INFO] [EVAL] Class Acc:
[0.8349 0.9211]
!python export.py \
--config /home/aistudio/bisenet_optic_disc_512x512_1k.yml\
--model_path output/best_model/model.pdparams
op_type, op_type, EXPRESSION_MAP[method_name]))
/opt/conda/envs/python35-paddle120-env/lib/python3.7/site-packages/paddle/fluid/layers/math_op_patch.py:322: UserWarning: /tmp/tmp_l3u6xjv.py:58
The behavior of expression A + B has been unified with elementwise_add(X, Y, axis=-1) from Paddle 2.0. If your code works well in the older versions but crashes in this version, try to use elementwise_add(X, Y, axis=0) instead of A + B. This transitional warning will be dropped in the future.
op_type, op_type, EXPRESSION_MAP[method_name]))
2021-11-03 01:01:11 [INFO] Model is saved in ./output.
deploy.yaml
Deploy:
model: model.pdmodel
params: model.pdiparams
transforms:
- type: Normalize
# 安装paddleseg
!pip install -e .
# 预测
%cd ~/PaddleSeg/
!python deploy/python/infer.py --config output/deploy.yaml --image_path /home/aistudio/cat/images/Bombay_130.jpg
/home/aistudio/PaddleSeg
# 打印原图
from PIL import Image
img=Image.open('/home/aistudio/cat/images/Bombay_130.jpg')
img
# 打印输出图,颜色可调
from PIL import Image
img=Image.open('/home/aistudio/PaddleSeg/output/Bombay_130.png')
img
hub部署可参考:PaddleHub Module转换
已用hub部署,可通过命令行或者python来抠图啦!,具体hub文件见目录压缩包catseg_mobile.zip
hub run catseg_mobile --input_path .\cat1.jpg