Digitizing Nepal's Written Heritage: A Comprehensive HTR Pipeline for Old Nepali Manuscripts
By: Anjali Sarawgi, Esteban Garces Arias, Christof Zotter
This paper presents the first end-to-end pipeline for Handwritten Text Recognition (HTR) for Old Nepali, a historically significant but low-resource language. We adopt a line-level transcription approach and systematically explore encoder-decoder architectures and data-centric techniques to improve recognition accuracy. Our best model achieves a Character Error Rate (CER) of 4.9\%. In addition, we implement and evaluate decoding strategies and analyze token-level confusions to better understand model behaviour and error patterns. While the dataset we used for evaluation is confidential, we release our training code, model configurations, and evaluation scripts to support further research in HTR for low-resource historical scripts.
Similar Papers
Handwritten Text Recognition of Historical Manuscripts Using Transformer-Based Models
CV and Pattern Recognition
Reads old handwriting better by teaching computers.
GraDeT-HTR: A Resource-Efficient Bengali Handwritten Text Recognition System utilizing Grapheme-based Tokenizer and Decoder-only Transformer
CV and Pattern Recognition
Lets computers read messy Bengali writing.
Handwritten Text Recognition for Low Resource Languages
CV and Pattern Recognition
Reads handwritten Hindi and Urdu text better.