基于Paddle框架的PSENet复现

Overview

PSENet-Paddle

基于Paddle框架的PSENet复现

本项目基于paddlepaddle框架复现PSENet,并参加百度第三届论文复现赛,将在2021年5月15日比赛完后提供AIStudio链接~敬请期待

AIStudio链接

参考项目:

whai362-PSENet

环境配置

本项目利用AIstudio平台,采用paddlepaddle: 2.0.2-gpu Version,除此之外你需要通过pip install mmcv editdistance Polygon3 pyclipper或者pip install -r requirement.txt来安装依赖包

数据集

本项目已搭载PSENet比赛指定数据集,你可以在此找到搭载的数据集,包含ICDAR2015 Task4以及Total-Text

工程目录

注意到你需要将submitPSENet重命名为PSENet

/home/aistudio/PSENet
|───data(解压的data.zip)
└───config
└───models
└───dataset
└───eval
└───utils
└───compile.sh
└───__init__.py
└───test.py
└───train.py
└───requirement.txt
└───logo.gif

项目配置**

注意:由于aistudio的docker环境并不适配本项目的编译,所以你需要在本地计算机编译完成后上传编译文件,在本地计算机我才用如下配置,你可以使用gcc --versiong++ --version查看配置

AIStudio Local PC
gcc (Ubuntu 7.5.0-3ubuntu1~16.04) 7.5.0
Copyright (C) 2017 Free Software Foundation, Inc.
This is free software; see the source for copying conditions. There is NO
warranty; not even for MERCHANTABILITY or FITNESS FOR A PARTICULAR PURPOSE.
gcc (Ubuntu 7.5.0-3ubuntu1~18.04) 7.5.0
Copyright (C) 2017 Free Software Foundation, Inc.
This is free software; see the source for copying conditions. There is NO
warranty; not even for MERCHANTABILITY or FITNESS FOR A PARTICULAR PURPOSE.
g++ (Ubuntu 5.4.0-6ubuntu1~16.04.12) 5.4.0 20160609
Copyright (C) 2015 Free Software Foundation, Inc.
This is free software; see the source for copying conditions. There is NO
warranty; not even for MERCHANTABILITY or FITNESS FOR A PARTICULAR PURPOSE.
g++ (Ubuntu 7.5.0-3ubuntu1~18.04) 7.5.0
Copyright (C) 2017 Free Software Foundation, Inc.
This is free software; see the source for copying conditions. There is NO
warranty; not even for MERCHANTABILITY or FITNESS FOR A PARTICULAR PURPOSE.

可以发现AIStudio的g++版本不适配,注意:你需要相同的架构,系统以及python版本,(Ubuntu)linux-x86_64&python3.7

`./compile.sh` or `bash compile.sh` if come out bash: ./compile.sh: Permission denied

或者直接进入指定目录,手动编译

cd /home/aistudio/PSENet/models/post_processing/pse
python setup.py build_ext --inplace

编译完成后你会在/home/aistudio/PSENet/models/post_processing/pse得到build/temp.linux-x86_64-3.7/pse.o文件和pse.cpython-37m-x86_64-linux-gnu.so文件

注意:本项目已经全部配置完成,这一步无需操作

训练

需要注意的是,在paddlepaddle-2.0.2中并不支持字典数据读取,因此我在/home/aistudio/PSENet/utils/data_loader.py利用迭代器重写了DataLoader这拉慢了数据读取的速度,会导致训练速度略慢,例如在使用psenet_r50_ic15_1024_finetune.py训练一个epoch需要512.4秒,另外paddlepaddle2.0.2暂不支持Identity方法,因此我在/home/aistudio/PSENet/models/utils/fuse_conv_bn.py通过继承Paddle.nn.Layer写了Identity

cd /home/aistudio/PSENet/
python train.py ${CONFIG_FILE}

例如:

cd /home/aistudio/PSENet/
python train.py config/psenet/psenet_r50_ic15_736.py

训练开启时,会生成一个类似/home/aistudio/PSENet/checkpoints/psenet_r50_ic15_1024_finetune的文件夹,里面将保存权重和优化器参数

测试

cd /home/aistudio/PSENet/
python test.py ${CONFIG_FILE} ${CHECKPOINT_FILE}

例如:

cd /home/aistudio/PSENet/
python test.py config/psenet/psenet_r50_ic15_736.py PSENet/PretrainedModel/checkpoint_ic15_736.pdparams

评估

你需要注意的是:测试和评估是递进的,通过测试生成文件后,进行评估

ICDAR 2015

cd /home/aistudio/PSENet/eval
`./eval_ic15.sh` or `bash ./eval_ic15.sh`

你会得到如下类似信息:

Calculated!{"precision": 0.8620689655172413, "recall": 0.7944150216658642, "hmean": 0.826860435980957, "AP": 0}

以下是paddlepaddle预训练模型测试指标

Method Backbone Fine-tuning Scale Config Precision (%) Recall (%) F-measure (%) Model
PSENet ResNet50 N Shorter Side: 736 psenet_r50_ic15_736.py 83.6 74.0 78.5 checkpoint_ic15_736
PSENet ResNet50 N Shorter Side: 1024 psenet_r50_ic15_1024.py 84.4 76.3 80.2 checkpoint_ic15_1024
PSENet ResNet50 Y Shorter Side: 736 psenet_r50_ic15_736_finetune.py 85.3 76.8 80.9 checkpoint_ic15_736_finetune
PSENet ResNet50 Y Shorter Side: 1024 psenet_r50_ic15_1024_finetune.py 86.2 79.4 82.7 checkpoint_ic15_1024_finetune

Total-Text

Text detection

cd /home/aistudio/PSENet/eval
./eval_tt.sh or `bash ./eval_tt.sh`

你会得到如下类似信息:

Precision:_0.8727937336814604_______/Recall:_0.7786751361161512/Hmean:_0.8230524859472805

pb

以下是paddlepaddle预训练模型测试指标

Method Backbone Fine-tuning Config Precision (%) Recall (%) F-measure (%) Model
PSENet ResNet50 N psenet_r50_tt.py 87.3 77.9 82.3 checkpoint_tt
PSENet ResNet50 Y psenet_r50_tt_finetune.py 89.3 79.6 84.2 checkpoint_tt_finetune

速度测试

python test.py ${CONFIG_FILE} ${CHECKPOINT_FILE} --report_speed

例如:

cd /home/aistudio/PSENet/
python test.py config/psenet/psenet_r50_ic15_736.py PSENet/PretrainedModel/checkpoint_ic15_736.pdparams --report_speed

你会得到如下类似信息

Testing 283/3000
backbone_time: 0.0152
neck_time: 0.0029
det_head_time: 0.0005
det_pse_time: 0.0660
FPS: 11.8
Testing 284/3000
backbone_time: 0.0152
neck_time: 0.0029
det_head_time: 0.0005
det_pse_time: 0.0660
FPS: 11.8
Testing 285/3000
backbone_time: 0.0152
neck_time: 0.0029
det_head_time: 0.0005
det_pse_time: 0.0660
FPS: 11.8
Testing 286/3000
backbone_time: 0.0152
neck_time: 0.0029
det_head_time: 0.0005
det_pse_time: 0.0660
FPS: 11.8

Citation

@inproceedings{wang2019shape,
  title={Shape robust text detection with progressive scale expansion network},
  author={Wang, Wenhai and Xie, Enze and Li, Xiang and Hou, Wenbo and Lu, Tong and Yu, Gang and Shao, Shuai},
  booktitle={Proceedings of the IEEE Conference on Computer Vision and Pattern Recognition},
  pages={9336--9345},
  year={2019}
}
Owner
QuanHao Guo
master at UESTC
QuanHao Guo
Dirty, ugly, and hopefully useful OCR of Facebook Papers docs released by Gizmodo

Quick and Dirty OCR of Facebook Papers Gizmodo has been working through the Facebook Papers and releasing the docs that they process and review. As lu

Bill Fitzgerald 2 Oct 28, 2021
A machine learning software for extracting information from scholarly documents

GROBID GROBID documentation Visit the GROBID documentation for more detailed information. Summary GROBID (or Grobid, but not GroBid nor GroBiD) means

Patrice Lopez 1.9k Jan 08, 2023
Convert PDF/Image to TXT using EasyOcr - the best OCR engine available!

PDFImage2TXT - DOWNLOAD INSTALLER HERE What can you do with it? Convert scanned PDFs to TXT. Convert scanned Documents to TXT. No coding required!! In

Hans Alemão 2 Feb 22, 2022
The open source extract transaction infomation by using OCR.

Transaction OCR Mã nguồn trích xuất thông tin transaction từ file scaned pdf, ở đây tôi lựa chọn tài liệu sao kê công khai của Thuy Tien. Mã nguồn có

Nguyen Xuan Hung 18 Jun 02, 2022
YOLOv5 in DOTA with CSL_label.(Oriented Object Detection)(Rotation Detection)(Rotated BBox)

YOLOv5_DOTA_OBB YOLOv5 in DOTA_OBB dataset with CSL_label.(Oriented Object Detection) Datasets and pretrained checkpoint Datasets : DOTA Pretrained Ch

1.1k Dec 30, 2022
Papers, Datasets, Algorithms, SOTA for STR. Long-time Maintaining

Scene Text Recognition Recommendations Everythin about Scene Text Recognition SOTA • Papers • Datasets • Code Contents 1. Papers 2. Datasets 2.1 Synth

Deep Learning and Vision Computing Lab, SCUT 197 Jan 05, 2023
Can We Find Neurons that Cause Unrealistic Images in Deep Generative Networks?

Can We Find Neurons that Cause Unrealistic Images in Deep Generative Networks? Artifact Detection/Correction - Offcial PyTorch Implementation This rep

CHOI HWAN IL 23 Dec 20, 2022
A list of hyperspectral image super-solution resources collected by Junjun Jiang

A list of hyperspectral image super-resolution resources collected by Junjun Jiang. If you find that important resources are not included, please feel free to contact me.

Junjun Jiang 301 Jan 05, 2023
huoyijie 1.2k Dec 29, 2022
Packaged, Pytorch-based, easy to use, cross-platform version of the CRAFT text detector

CRAFT: Character-Region Awareness For Text detection Packaged, Pytorch-based, easy to use, cross-platform version of the CRAFT text detector | Paper |

188 Dec 28, 2022
Omdena-abuja-anpd - Automatic Number Plate Detection for the security of lives and properties using Computer Vision.

Omdena-abuja-anpd - Automatic Number Plate Detection for the security of lives and properties using Computer Vision.

Abdulazeez Jimoh 1 Jan 01, 2022
FOTS Pytorch Implementation

News!!! Recognition branch now is added into model. The whole project has beed optimized and refactored. ICDAR Dataset SynthText 800K Dataset detectio

Ning Lu 599 Dec 19, 2022
Code for CVPR'2022 paper ✨ "Predict, Prevent, and Evaluate: Disentangled Text-Driven Image Manipulation Empowered by Pre-Trained Vision-Language Model"

PPE ✨ Repository for our CVPR'2022 paper: Predict, Prevent, and Evaluate: Disentangled Text-Driven Image Manipulation Empowered by Pre-Trained Vision-

Zipeng Xu 34 Nov 28, 2022
PSENet - Shape Robust Text Detection with Progressive Scale Expansion Network.

News Python3 implementations of PSENet [1], PAN [2] and PAN++ [3] are released at https://github.com/whai362/pan_pp.pytorch. [1] W. Wang, E. Xie, X. L

1.1k Dec 24, 2022
Handwritten Number Recognition using CNN and Character Segmentation

Handwritten-Number-Recognition-With-Image-Segmentation Info About this repository This Repository is aimed at reading handwritten images of numbers an

Sparsha Saha 17 Aug 25, 2022
A python script based on opencv and paddleocr, which can automatically pick up tasks, make cookies, and receive rewards in the Destiny 2 Dawning Oven

A python script based on opencv and paddleocr, which can automatically pick up tasks, make cookies, and receive rewards in the Destiny 2 Dawning Oven

1 Dec 22, 2021
Code for the head detector (HeadHunter) proposed in our CVPR 2021 paper Tracking Pedestrian Heads in Dense Crowd.

Head Detector Code for the head detector (HeadHunter) proposed in our CVPR 2021 paper Tracking Pedestrian Heads in Dense Crowd. The head_detection mod

Ramana Subramanyam 76 Dec 06, 2022
This is a tensorflow re-implementation of PSENet: Shape Robust Text Detection with Progressive Scale Expansion Network.My blog:

PSENet: Shape Robust Text Detection with Progressive Scale Expansion Network Introduction This is a tensorflow re-implementation of PSENet: Shape Robu

Michael liu 498 Dec 30, 2022
Ddddocr - 通用验证码识别OCR pypi版

带带弟弟OCR通用验证码识别SDK免费开源版 今天ddddocr又更新啦! 当前版本为1.3.1 想必很多做验证码的新手,一定头疼碰到点选类型的图像,做样本费时

Sml2h3 4.4k Dec 31, 2022
A simple component to display annotated text in Streamlit apps.

Annotated Text Component for Streamlit A simple component to display annotated text in Streamlit apps. For example: Installation First install Streaml

Thiago Teixeira 312 Dec 30, 2022