LaTeX-OCR¶
1. Introduction¶
Original Project:
Using LaTeX-OCR printed mathematical expression recognition datasets for training, and evaluating on its test sets, the algorithm reproduction effect is as follows:
Model | Backbone | config | BLEU score | normed edit distance | ExpRate | Download link |
---|---|---|---|---|---|---|
LaTeX-OCR | Hybrid ViT | rec_latex_ocr.yml | 0.8821 | 0.0823 | 40.01% | trained model |
2. Environment¶
Please refer to "Environment Preparation" to configure the PaddleOCR environment, and refer to "Project Clone" to clone the project code.
Furthermore, additional dependencies need to be installed:
3. Model Training / Evaluation / Prediction¶
Please refer to Text Recognition Tutorial. PaddleOCR modularizes the code, and training different recognition models only requires changing the configuration file.
Pickle File Generation:
Download formulae.zip and math.txt in Google Drive, and then use the following command to generate the pickle file.
# Create a LaTeX-OCR dataset directory
mkdir -p train_data/LaTeXOCR
# Unzip formulae.zip and copy math.txt
unzip -d train_data/LaTeXOCR path/formulae.zip
cp path/math.txt train_data/LaTeXOCR
# Convert the original .txt file to a .pkl file to group images of different scales
# Training set conversion
python ppocr/utils/formula_utils/math_txt2pkl.py --image_dir=train_data/LaTeXOCR/train --mathtxt_path=train_data/LaTeXOCR/math.txt --output_dir=train_data/LaTeXOCR/
# Validation set conversion
python ppocr/utils/formula_utils/math_txt2pkl.py --image_dir=train_data/LaTeXOCR/val --mathtxt_path=train_data/LaTeXOCR/math.txt --output_dir=train_data/LaTeXOCR/
# Test set conversion
python ppocr/utils/formula_utils/math_txt2pkl.py --image_dir=train_data/LaTeXOCR/test --mathtxt_path=train_data/LaTeXOCR/math.txt --output_dir=train_data/LaTeXOCR/
Training:
Specifically, after the data preparation is completed, the training can be started. The training command is as follows:
#Single GPU training (Default training method)
python3 tools/train.py -c configs/rec/rec_latex_ocr.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_latex_ocr.yml
Evaluation:
# GPU evaluation
# Validation set evaluation
python3 tools/eval.py -c configs/rec/rec_latex_ocr.yml -o Global.pretrained_model=./rec_latex_ocr_train/best_accuracy.pdparams
# Test set evaluation
python3 tools/eval.py -c configs/rec/rec_latex_ocr.yml -o Global.pretrained_model=./rec_latex_ocr_train/best_accuracy.pdparams Eval.dataset.data_dir=./train_data/LaTeXOCR/test Eval.dataset.data=./train_data/LaTeXOCR/latexocr_test.pkl
Prediction:
# The configuration file used for prediction must match the training
python3 tools/infer_rec.py -c configs/rec/rec_latex_ocr.yml -o Global.infer_img='./docs/datasets/images/pme_demo/0000013.png' Global.pretrained_model=./rec_latex_ocr_train/best_accuracy.pdparams
4. Inference and Deployment¶
4.1 Python Inference¶
First, the model saved during the LaTeX-OCR printed mathematical expression recognition training process is converted into an inference model. you can use the following command to convert:
python3 tools/export_model.py -c configs/rec/rec_latex_ocr.yml -o Global.pretrained_model=./rec_latex_ocr_train/best_accuracy.pdparams Global.save_inference_dir=./inference/rec_latex_ocr_infer/
# The default output max length of the model is 512.
For LaTeX-OCR printed mathematical expression recognition model inference, the following commands can be executed:
python3 tools/infer/predict_rec.py --image_dir='./docs/datasets/images/pme_demo/0000295.png' --rec_algorithm="LaTeXOCR" --rec_batch_num=1 --rec_model_dir="./inference/rec_latex_ocr_infer/" --rec_char_dict_path="./ppocr/utils/dict/latex_ocr_tokenizer.json"
4.2 C++ Inference¶
Not supported
4.3 Serving¶
Not supported
4.4 More¶
Not supported