"Writer identification by training on one script but testing on another" by Chandranath Adak, Bidyut B. Chaudhuri et al.
 

Writer identification by training on one script but testing on another

Document Type

Conference Article

Publication Title

Proceedings - International Conference on Pattern Recognition

Abstract

This paper deals with identifying a writer from his/her offline handwriting. In a multilingual country where a writer can scribe in multiple scripts, writer identification becomes challenging when we have individual handwriting data in one script while we need to verify/identify a writer from handwriting in another script. In this paper such an issue is addressed with two scripts: English and Bengali. Here we model the task as a classification problem, where training data contains only Bengali handwritten samples and testing is performed on English handwritten texts. This work is based on the understanding that a writer has some inherent stroke characteristics that are independent of the script in which (s)he writes. In this work, some implicit structural and statistical features are extracted, and multiple classifiers are employed for writer identification. Many training sessions are run on a database of 100 writers and the performances are analyzed. We have obtained encouraging results on this database, which show the effectiveness of our method.

First Page

1153

Last Page

1158

DOI

10.1109/ICPR.2016.7899792

Publication Date

1-1-2016

Comments

Open Access; Green Open Access

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