CVJun 7, 2022

PP-OCRv3: More Attempts for the Improvement of Ultra Lightweight OCR System

arXiv:2206.03001v2205 citationsh-index: 26Has Code
Originality Synthesis-oriented
AI Analysis

This work addresses the challenge of designing efficient and accurate OCR systems for practical applications, but it is incremental as it builds directly on previous versions.

The paper tackles improving an ultra lightweight OCR system by proposing PP-OCRv3, which upgrades text detection and recognition models in nine aspects, resulting in a 5% higher hmean than its predecessor PP-OCRv2 while maintaining comparable inference speed.

Optical character recognition (OCR) technology has been widely used in various scenes, as shown in Figure 1. Designing a practical OCR system is still a meaningful but challenging task. In previous work, considering the efficiency and accuracy, we proposed a practical ultra lightweight OCR system (PP-OCR), and an optimized version PP-OCRv2. In order to further improve the performance of PP-OCRv2, a more robust OCR system PP-OCRv3 is proposed in this paper. PP-OCRv3 upgrades the text detection model and text recognition model in 9 aspects based on PP-OCRv2. For text detector, we introduce a PAN module with large receptive field named LK-PAN, a FPN module with residual attention mechanism named RSE-FPN, and DML distillation strategy. For text recognizer, the base model is replaced from CRNN to SVTR, and we introduce lightweight text recognition network SVTR LCNet, guided training of CTC by attention, data augmentation strategy TextConAug, better pre-trained model by self-supervised TextRotNet, UDML, and UIM to accelerate the model and improve the effect. Experiments on real data show that the hmean of PP-OCRv3 is 5% higher than PP-OCRv2 under comparable inference speed. All the above mentioned models are open-sourced and the code is available in the GitHub repository PaddleOCR which is powered by PaddlePaddle.

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