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PP OCRv5 Server Rec

Developed by PaddlePaddle
PP-OCRv5_server_rec is the latest generation of text line recognition model developed by the PaddleOCR team, supporting the recognition of multilingual and complex text scenarios.
Downloads 8,601
Release Time : 6/4/2025

Model Overview

PP-OCRv5_server_rec aims to efficiently and accurately support the recognition of four major languages, namely Simplified Chinese, Traditional Chinese, English, and Japanese, as well as complex text scenarios such as handwritten, vertical text, pinyin, and rare characters through a single model.

Model Features

Multilingual support
Supports the recognition of four major languages: Simplified Chinese, Traditional Chinese, English, and Japanese.
Complex text scenario recognition
Can recognize complex text scenarios such as handwritten, vertical text, pinyin, and rare characters.
High precision
Shows high recognition accuracy in various text scenarios, with an average recognition accuracy rate of 0.8401.
Modular design
The model adopts a modular design and can be combined with other models to form a pipeline to solve more complex real-world scenario problems.

Model Capabilities

Text line recognition
Multilingual recognition
Complex text scenario recognition
Handwritten text recognition
Vertical text recognition
Pinyin recognition
Rare character recognition

Use Cases

Document processing
Printed document recognition
Recognize the text content in printed documents, supporting multiple languages and complex layouts.
High recognition accuracy, suitable for automated document processing systems.
Handwritten note recognition
Recognize the text content in handwritten notes, supporting multiple languages and complex handwriting styles.
Performs well in handwritten Chinese and English scenarios, with recognition accuracy rates of 0.5807 and 0.5806 respectively.
Academic research
Ancient book recognition
Recognize the Traditional Chinese and classical Chinese text in ancient books, supporting vertical layouts.
The recognition accuracy rates in Traditional Chinese and classical Chinese scenarios are 0.7472 and 0.6039 respectively.
Commercial applications
Multilingual advertisement recognition
Recognize the text content in multilingual advertisements, supporting Simplified Chinese, Traditional Chinese, English, and Japanese.
The recognition accuracy rate in general scenarios is 0.5946, suitable for multilingual advertisement analysis.
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