ASTER is an accurate scene text recognizer with flexible rectification mechanism. The research paper can be found here.
The implementation of ASTER reuses code from Tensorflow Object Detection API.
[07/13/2019] A PyTorch port has been made by @ayumiymk.
We have identified a bug we accidentally made in the code that causes only part of SVT images being tested and results in higher results. The bug has been fixed in commit a7e8613. Below are the corrected numbers on SVT. The results are still state-of-the-art, so the conclusions are not affected.
- SVT (50) ASTER: 97.4%; ASTER-A: 96.3%; ASTER-B: 96.1%;
- SVT (None): ASTER: 89.5%; ASTER-A: 80.2%; ASTER-B: 81.6%
ASTER was developed and tested with TensorFlow r1.4. Higher versions may not work.
ASTER requires Protocol Buffers (version>=2.6). Besides, in Ubuntu 16.04:
sudo apt install cmake libcupti-dev
pip3 install --user protobuf tqdm numpy editdistance
- Go to
c_ops/
and runbuild.sh
to build the custom operators - Execute
protoc aster/protos/*.proto --python_out=.
to build the protobuf files - Add
/path/to/aster
toPYTHONPATH
, or set this variable for every run
A demo program is located at aster/demo.py
, accompanied with pretrained model files available on our release page. Download model-demo.zip
and extract it under aster/experiments/demo/
before running the demo.
To run the demo, simply execute:
python3 aster/demo.py
This will output the recognition result of the demo image and the rectified image.
Data preparation scripts for several popular scene text datasets are located under aster/tools
. See their source code for usage.
To run the example training, execute
python3 aster/train.py \
--exp_dir experiments/demo \
--num_clones 2
Change the configuration in experiments/aster/trainval.prototxt
to configure your own training process.
During the training, you can run a separate program to repeatedly evaluates the produced checkpoints.
python3 aster/eval.py \
--exp_dir experiments/demo
Evaluation configuration is also in trainval.prototxt
.
If you find this project helpful for your research, please cite the following papers:
@article{bshi2018aster,
author = {Baoguang Shi and
Mingkun Yang and
Xinggang Wang and
Pengyuan Lyu and
Cong Yao and
Xiang Bai},
title = {ASTER: An Attentional Scene Text Recognizer with Flexible Rectification},
journal = {IEEE Transactions on Pattern Analysis and Machine Intelligence},
volume = {},
number = {},
pages = {1-1},
year = {2018},
}
@inproceedings{ShiWLYB16,
author = {Baoguang Shi and
Xinggang Wang and
Pengyuan Lyu and
Cong Yao and
Xiang Bai},
title = {Robust Scene Text Recognition with Automatic Rectification},
booktitle = {2016 {IEEE} Conference on Computer Vision and Pattern Recognition,
{CVPR} 2016, Las Vegas, NV, USA, June 27-30, 2016},
pages = {4168--4176},
year = {2016}
}
IMPORTANT NOTICE: Although this software is licensed under MIT, our intention is to make it free for academic research purposes. If you are going to use it in a product, we suggest you contact us regarding possible patent issues.