PSENet Save

Official Pytorch implementations of PSENet.

Project README

News

  • PSENet is included in MMOCR.
  • We have upgraded PSENet from python2 to python3. You can find the old version here.
  • We have implemented PSENet using Paddle. Visit it here.
  • You can find code of PAN here.
  • Another group also implemented PSENet using Paddle. You can visit it here. You can also have a try online with all the environment ready here.

Introduction

Official Pytorch implementations of PSENet [1].

[1] W. Wang, E. Xie, X. Li, W. Hou, T. Lu, G. Yu, and S. Shao. Shape robust text detection with progressive scale expansion network. In Proc. IEEE Conf. Comp. Vis. Patt. Recogn., pages 9336–9345, 2019.

Python 3.6+
Pytorch 1.1.0
torchvision 0.3
mmcv 0.2.12
editdistance
Polygon3
pyclipper
opencv-python 3.4.2.17
Cython

Install

pip install -r requirement.txt
./compile.sh

Training

CUDA_VISIBLE_DEVICES=0,1,2,3 python train.py ${CONFIG_FILE}

For example:

CUDA_VISIBLE_DEVICES=0,1,2,3 python train.py config/psenet/psenet_r50_ic15_736.py

Test

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

For example:

python test.py config/psenet/psenet_r50_ic15_736.py checkpoints/psenet_r50_ic15_736/checkpoint.pth.tar

Speed

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

For example:

python test.py config/psenet/psenet_r50_ic15_736.py checkpoints/psenet_r50_ic15_736/checkpoint.pth.tar --report_speed

Evaluation

Introduction

The evaluation scripts of ICDAR 2015 (IC15), Total-Text (TT) and CTW1500 (CTW) datasets.

ICDAR 2015

Text detection

./eval_ic15.sh

Total-Text

Text detection

./eval_tt.sh

CTW1500

Text detection

./eval_ctw.sh

Benchmark

Results

ICDAR 2015

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 Releases
PSENet ResNet50 N Shorter Side: 1024 psenet_r50_ic15_1024.py 84.4 76.3 80.2 Releases
PSENet (paper) ResNet50 N Longer Side: 2240 - 81.5 79.7 80.6 -
PSENet ResNet50 Y Shorter Side: 736 psenet_r50_ic15_736_finetune.py 85.3 76.8 80.9 Releases
PSENet ResNet50 Y Shorter Side: 1024 psenet_r50_ic15_1024_finetune.py 86.2 79.4 82.7 Releases
PSENet (paper) ResNet50 Y Longer Side: 2240 - 86.9 84.5 85.7 -

CTW1500

Method Backbone Fine-tuning Config Precision (%) Recall (%) F-measure (%) Model
PSENet ResNet50 N psenet_r50_ctw.py 82.6 76.4 79.4 Releases
PSENet (paper) ResNet50 N - 80.6 75.6 78 -
PSENet ResNet50 Y psenet_r50_ctw_finetune.py 84.5 79.2 81.8 Releases
PSENet (paper) ResNet50 Y - 84.8 79.7 82.2 -

Total-Text

Method Backbone Fine-tuning Config Precision (%) Recall (%) F-measure (%) Model
PSENet ResNet50 N psenet_r50_tt.py 87.3 77.9 82.3 Releases
PSENet (paper) ResNet50 N - 81.8 75.1 78.3 -
PSENet ResNet50 Y psenet_r50_tt_finetune.py 89.3 79.6 84.2 Releases
PSENet (paper) ResNet50 Y - 84.0 78.0 80.9 -

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}
}

License

This project is developed and maintained by IMAGINE Lab@National Key Laboratory for Novel Software Technology, Nanjing University.

IMAGINE Lab

This project is released under the Apache 2.0 license.

Open Source Agenda is not affiliated with "PSENet" Project. README Source: whai362/PSENet
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