Optical Character Recognition
Optical Character Recognition (OCR) aims to automatically convert images of text into machine-readable text, facilitating efficient document processing and information extraction. Current research emphasizes improving OCR accuracy, particularly for challenging scenarios like historical documents, low-resolution images, and complex layouts, often employing transformer-based language models and convolutional neural networks for both character recognition and post-processing error correction. These advancements are crucial for digitizing historical archives, enhancing accessibility to information, and automating various tasks across diverse fields, from document management to scientific literature analysis.
Papers
Transfer Learning Approach for Railway Technical Map (RTM) Component Identification
Obadage Rochana Rumalshan, Pramuka Weerasinghe, Mohamed Shaheer, Prabhath Gunathilake, Erunika Dayaratna
Image Based Character Recognition, Documentation System To Decode Inscription From Temple
Velmathi G, Shangavelan M, Harish D, Krithikshun M S