- 1. Introduction
- 2. Environment
- 3. Model Training / Evaluation / Prediction
- 4. Inference and Deployment
- 5. FAQ
Paper:
Vision Transformer for Fast and Efficient Scene Text Recognition Rowel Atienza ICDAR, 2021
Using MJSynth and SynthText two text recognition datasets for training, and evaluating on IIIT, SVT, IC03, IC13, IC15, SVTP, CUTE datasets, the algorithm reproduction effect is as follows:
Model | Backbone | config | Acc | Download link |
---|---|---|---|---|
ViTSTR | ViTSTR | rec_vitstr_none_ce.yml | 79.82% | trained model |
Please refer to "Environment Preparation" to configure the PaddleOCR environment, and refer to "Project Clone" to clone the project code.
Please refer to Text Recognition Tutorial. PaddleOCR modularizes the code, and training different recognition models only requires changing the configuration file.
Training:
Specifically, after the data preparation is completed, the training can be started. The training command is as follows:
#Single GPU training (long training period, not recommended)
python3 tools/train.py -c configs/rec/rec_vitstr_none_ce.yml
#Multi GPU training, specify the gpu number through the --gpus parameter
python3 -m paddle.distributed.launch --gpus '0,1,2,3' tools/train.py -c configs/rec/rec_vitstr_none_ce.yml
Evaluation:
# GPU evaluation
python3 -m paddle.distributed.launch --gpus '0' tools/eval.py -c configs/rec/rec_vitstr_none_ce.yml -o Global.pretrained_model={path/to/weights}/best_accuracy
Prediction:
# The configuration file used for prediction must match the training
python3 tools/infer_rec.py -c configs/rec/rec_vitstr_none_ce.yml -o Global.infer_img='./doc/imgs_words_en/word_10.png' Global.pretrained_model=./rec_vitstr_none_ce_train/best_accuracy
First, the model saved during the ViTSTR text recognition training process is converted into an inference model. ( Model download link) ), you can use the following command to convert:
python3 tools/export_model.py -c configs/rec/rec_vitstr_none_ce.yml -o Global.pretrained_model=./rec_vitstr_none_ce_train/best_accuracy Global.save_inference_dir=./inference/rec_vitstr
Note:
- If you are training the model on your own dataset and have modified the dictionary file, please pay attention to modify the
character_dict_path
in the configuration file to the modified dictionary file. - If you modified the input size during training, please modify the
infer_shape
corresponding to ViTSTR in thetools/export_model.py
file.
After the conversion is successful, there are three files in the directory:
/inference/rec_vitstr/
├── inference.pdiparams
├── inference.pdiparams.info
└── inference.pdmodel
For ViTSTR text recognition model inference, the following commands can be executed:
python3 tools/infer/predict_rec.py --image_dir='./doc/imgs_words_en/word_10.png' --rec_model_dir='./inference/rec_vitstr/' --rec_algorithm='ViTSTR' --rec_image_shape='1,224,224' --rec_char_dict_path='./ppocr/utils/EN_symbol_dict.txt'
After executing the command, the prediction result (recognized text and score) of the image above is printed to the screen, an example is as follows: The result is as follows:
Predicts of ./doc/imgs_words_en/word_10.png:('pain', 0.9998350143432617)
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- In the
ViTSTR
paper, using pre-trained weights on ImageNet1k for initial training, we did not use pre-trained weights in training, and the final accuracy did not change or even improved.
@article{Atienza2021ViTSTR,
title = {Vision Transformer for Fast and Efficient Scene Text Recognition},
author = {Rowel Atienza},
booktitle = {ICDAR},
year = {2021},
url = {https://arxiv.org/abs/2105.08582}
}