Recognize South Korean license plate numbers
Convert images to text using OCR
Convert Brahmi script images to Devanagari text
Extract text from images
Turn handwritten text into digital text
Made By FgsiDev
Display OCRBench leaderboard for model evaluations
Compare OCR results from images
Convert images of text into editable text
Convert images to text using OCR
OCR System. Homepage: https://github.com/Topdu/OpenOCR
Read text from images
Extract text and search keywords from images
South Korean License Plate Recognition is an OCR (Optical Character Recognition) technology designed to accurately identify and extract license plate information from vehicles registered in South Korea. This system leverages advanced AI algorithms to process images or video footage, detect license plates, and decode the alphanumeric characters, enabling efficient vehicle identification for various applications such as traffic management, parking systems, and security surveillance.
• Accurate Detection: High precision in recognizing South Korean license plate formats.
• Character Recognition: Ability to identify both Korean and English characters on license plates.
• Real-Time Processing: Supports real-time analysis for immediate results.
• Multiple Formats: Compatible with images, videos, and live camera feeds.
• Integration Capability: Easily integrates with existing systems via APIs.
• Weather and Lighting Tolerance: Works effectively under varying lighting conditions and weather.
• Format Validation: Ensures output adheres to South Korean license plate standards.
What formats of license plates can this system recognize?
The system is designed to recognize standard South Korean license plate formats, including both older and newer versions.
Can the system work in real-time for live video feeds?
Yes, the South Korean License Plate Recognition supports real-time processing for live video feeds, making it suitable for applications like traffic monitoring.
How accurate is the recognition system?
The system boasts a high accuracy rate, typically exceeding 95% under optimal conditions, though accuracy may vary based on image quality and environmental factors.