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Ninth International Conference on Document Analysis and Recognition (ICDAR 2007) Vol 2
An Effective and Practical Classifier Fusion Strategy for Improving Handwritten Character Recognition
Curitiba, Parana, Brazil
September 23-September 26
ISBN: 0-7695-2822-8
Q. Fu, Tsinghua University, P.R.China
X. Ding, Tsinghua University, P.R.China
T. Li, Tsinghua University, P.R.China
C. Liu, Tsinghua University, P.R.China
In this paper, we propose a classifier fusion strategy which trains MQDF (Modified Quadratic Discriminant Functions) classifiers using cascade structure and combines classifiers on the measurement level to improve handwritten character recognition performance. The generalized confidence is introduced to compute recognition score, and the maximum rule based fusion is applied. The proposed fusion strategy is practical and effective. Its performance is evaluated by handwritten Chinese character recognition experiments on different databases. Experimental results show that the proposed algorithm achieves at least 10% reduction on classification error, and even higher 24% classification error reduction on bad quality samples.
Citation:
Q. Fu, X. Ding, T. Li, C. Liu, "An Effective and Practical Classifier Fusion Strategy for Improving Handwritten Character Recognition," icdar, vol. 2, pp.1038-1042, Ninth International Conference on Document Analysis and Recognition (ICDAR 2007) Vol 2, 2007
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