Haoran Wei*, Chenglong Liu*, Jinyue Chen, Jia Wang, Lingyu Kong, Yanming Xu, Zheng Ge, Liang Zhao, Jianjian Sun, Yuang Peng, Chunrui Han, Xiangyu Zhang
- [2024/9/03]🔥🔥🔥 We open-source the codes, weights, and benchmarks. The paper can be found in this repo. We also have submitted it to Arxiv.
- [2024/9/03]🔥🔥🔥 We release the OCR-2.0 model GOT!
Usage and License Notices: The data, code, and checkpoint are intended and licensed for research use only. They are also restricted to use that follow the license agreement of Vary.
Towards OCR-2.0 via a Unified End-to-end Model
- Our environment is cuda11.8+torch2.0.1
- Clone this repository and navigate to the GOT folder
git clone https://github.com/Ucas-HaoranWei/GOT-OCR2.0.git
cd 'the GOT folder'
- Install Package
conda create -n got python=3.10 -y
conda activate got
pip install -e .
- Install Flash-Attention
pip install ninja
pip install flash-attn --no-build-isolation
- Google Drive
- BaiduYun code: OCR2
- plain texts OCR:
python3 GOT/demo/run_ocr_2.0.py --model-name /GOT_weights/ --image-file /an/image/file.png --type ocr
- format texts OCR:
python3 GOT/demo/run_ocr_2.0.py --model-name /GOT_weights/ --image-file /an/image/file.png --type format
- fine-grained OCR:
python3 GOT/demo/run_ocr_2.0.py --model-name /GOT_weights/ --image-file /an/image/file.png --type format/ocr --box [x1,y1,x2,y2]
python3 GOT/demo/run_ocr_2.0.py --model-name /GOT_weights/ --image-file /an/image/file.png --type format/ocr --color red/green/blue
- multi-crop OCR:
python3 GOT/demo/run_ocr_2.0_crop.py --model-name /GOT_weights/ --image-file /an/image/file.png
- multi-page OCR (the image path contains multiple .png files):
python3 GOT/demo/run_ocr_2.0_crop.py --model-name /GOT_weights/ --image-file /images/path/ --multi-page
- render the formatted OCR results:
python3 GOT/demo/run_ocr_2.0.py --model-name /GOT_weights/ --image-file /an/image/file.png --type format --render
Note: The rendering results can be found in /results/demo.html. Please open the demo.html to see the results.
- This codebase only supports post-training (stage-2/stage-3) upon our GOT weights.
- If you want train from stage-1 described in our paper, you need this repo.
deepspeed /GOT-OCR-2.0-master/GOT/train/train_GOT.py \
--deepspeed /GOT-OCR-2.0-master/zero_config/zero2.json --model_name_or_path /GOT_weights/ \
--use_im_start_end True \
--bf16 True \
--gradient_accumulation_steps 2 \
--evaluation_strategy "no" \
--save_strategy "steps" \
--save_steps 200 \
--save_total_limit 1 \
--weight_decay 0. \
--warmup_ratio 0.001 \
--lr_scheduler_type "cosine" \
--logging_steps 1 \
--tf32 True \
--model_max_length 8192 \
--gradient_checkpointing True \
--dataloader_num_workers 8 \
--report_to none \
--per_device_train_batch_size 2 \
--num_train_epochs 1 \
--learning_rate 2e-5 \
--datasets pdf-ocr+scence \
--output_dir /your/output.path
Note:
- Change the corresponding data information in constant.py.
- Change line 37 in conversation_dataset_qwen.py to your data_name.
- We use the Fox and OneChart benchmarks, and other benchmarks can be found in the weights download link.
- The eval codes can be found in GOT/eval.
- You can use the evaluate_GOT.py to run the eval. If you have 8 GPUs, the --num-chunks can be set to 8.
python3 GOT/eval/evaluate_GOT.py --model-name /GOT_weights/ --gtfile_path xxxx.json --image_path /image/path/ --out_path /data/eval_results/GOT_mathpix_test/ --num-chunks 8 --datatype OCR
If you are interested in this work or have questions about the code or the paper, please join our communication Wechat group.
- Vary: the codebase we built upon!
- Qwen: the LLM base model of Vary, which is good at both English and Chinese!
@article{wei2024general,
title={General OCR Theory: Towards OCR-2.0 via a Unified End-to-end Model},
author={Wei, Haoran and Liu, Chenglong and Chen, Jinyue and Wang, Jia and Kong, Lingyu and Xu, Yanming and Ge, Zheng and Zhao, Liang and Sun, Jianjian and Peng, Yuang and others},
journal={arXiv preprint arXiv:2409.01704},
year={2024}
}
@article{wei2023vary,
title={Vary: Scaling up the Vision Vocabulary for Large Vision-Language Models},
author={Wei, Haoran and Kong, Lingyu and Chen, Jinyue and Zhao, Liang and Ge, Zheng and Yang, Jinrong and Sun, Jianjian and Han, Chunrui and Zhang, Xiangyu},
journal={arXiv preprint arXiv:2312.06109},
year={2023}
}