Title :
Discriminative power of online handwritten words for writer recognition
Author :
Sesa-Nogueras, Enric
Author_Institution :
Escola Univ. Politec. de Mataro, Mataró, Spain
Abstract :
This paper is aimed at exploring the potential of online words to perform biometric writer recognition. Most of the scientific literature dealing with online writer recognition has focused on signature and somehow disregarded handwritten text. Using a novel recognition system based on stroke categorization and dynamic time warping, it is shown that short sequences of online text (words and combinations of a small number of words) perform remarkably well not only in identification but also in verification. Experimentation is performed with a dataset comprising 320 writers who donated 4 repetitions of 16 different Spanish words. With a single word, identification rate ranges from 80.6% to 95.6% and verification error from 1.57% to 5.55%. When two words are combined, the best identification rate increases up to 99.7% and the best verification error decreases until 0.63%.
Keywords :
digital signatures; handwriting recognition; natural language processing; text analysis; time warp simulation; Spanish words; biometric writer recognition; dynamic time warping; online handwritten word identification; online text sequences; scientific literature; stroke categorization; Accuracy; Biological system modeling; Databases; Error analysis; Handwriting recognition; Text recognition; biometrics; handwriting; online words; writer recognition;
Conference_Titel :
Security Technology (ICCST), 2011 IEEE International Carnahan Conference on
Conference_Location :
Barcelona
Print_ISBN :
978-1-4577-0902-9
DOI :
10.1109/CCST.2011.6095953