Publications
Script identification of handwritten images
Abstract
This paper describes a system for script identification of handwritten word images. The system is divided into two main phases, training and testing. The training phase performs a moment based feature extraction on the training word images and generates their corresponding feature vectors. The testing phase extracts moment features from a test word image and classifies it into one of the candidate script classes using information from the trained feature vectors. Experiments are reported on handwritten word images from three scripts: Latin, Devanagari and Arabic. Three different classifiers are evaluated over a dataset consisting of 12000 word images in training set and 7942 word images in testing set. Results show significant strength in the approach with all the classifiers having a consistent accuracy of over 97%.
- Date
- October 22, 2025
- Authors
- Anurag Bhardwaj, Huaigu Cao, Venu Govindaraju
- Journal
- Proc. SPIE
- Volume
- 7247
- Pages
- 7247-7247