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ICDAR
2009
IEEE

Rejection Strategies with Multiple Classifiers for Handwritten Character Recognition

14 years 7 months ago
Rejection Strategies with Multiple Classifiers for Handwritten Character Recognition
With rejection strategies in a handwriting recognition system, we are able to improve the reliability and accuracy of the recognized characters. In this paper, we propose several rejection strategies with multiple classifiers for handwritten character recognition. First, the rejection strategy for the single classifier is introduced, which is composed of three stages: initial scaling, confidence measure calculation, and rejection performing. Then, we analyze rejection strategies for multiple classifiers. We divided our rejection strategies into two categories: (1) for voting combination; and (2) for linear combination with multiple classifiers. In the voting combination style, three rejection strategies, OR, AND, and VOTING, are proposed. And for the linear combination one, rejection strategies for average and weighted combination are analyzed respectively. We also experiment and compare our rejection strategies with handwritten digit recognition.
Xu-Cheng Yin, Hong-Wei Hao, Yun-Feng Tang, Jun Sun
Added 21 May 2010
Updated 21 May 2010
Type Conference
Year 2009
Where ICDAR
Authors Xu-Cheng Yin, Hong-Wei Hao, Yun-Feng Tang, Jun Sun 0004, Satoshi Naoi
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