Title :
Combining classifiers based on minimization of a Bayes error rate
Author :
Kang, Hee-Joong ; Lee, Seong-Whan
Author_Institution :
Center for Artificial Vision Res., Korea Univ., Seoul, South Korea
Abstract :
In order to raise a class discrimination power by combining multiple classifiers, the upper bound of a Bayes error rate bounded by the conditional entropy of a class variable and decision variables should be minimized. Wang and Wong (1979) proposed a tree dependence approximation scheme of a high order probability distribution composed of those variables, based on minimizing the upper bound. In addition to that, this paper presents an extended approximation scheme dealing with higher order dependency. Multiple classifiers recognizing unconstrained handwritten numerals were combined by the proposed approximation scheme based on the minimization of the Bayes error rate, and the high recognition rates were obtained by them
Keywords :
Bayes methods; document image processing; entropy; handwritten character recognition; image classification; minimisation; probability; Bayes error rate minimization; class discrimination power; class variable; classifier combination; conditional entropy; decision variables; extended approximation scheme; high order probability distribution; higher order dependency; tree dependence approximation scheme; unconstrained handwritten numeral recognition; Bayesian methods; Entropy; Error analysis; Handwriting recognition; Mutual information; Phase measurement; Probability distribution; Tree data structures; Upper bound; Voting;
Conference_Titel :
Document Analysis and Recognition, 1999. ICDAR '99. Proceedings of the Fifth International Conference on
Conference_Location :
Bangalore
Print_ISBN :
0-7695-0318-7
DOI :
10.1109/ICDAR.1999.791808