Handwritten digit recognition by combined classifiers

Classifiers can be combined to reduce classification errors. We did experiments on a data set consisting of different sets of features of handwritten digits. Different types of classifiers were trained on these feature sets. The performances of these classifiers and combination rules were tested. The best results were acquired with the mean, median and product combination rules. The product was best for combining linear classifiers, the median for $k$-NN classifiers. Training a classifier on all features did not result in less errors.

[1]  M. Garris NIST form-based handprint recognition system , 1994 .

[2]  Josef Kittler,et al.  Combining classifiers , 1996, Proceedings of 13th International Conference on Pattern Recognition.

[3]  Jan J. Gerbrands,et al.  Knowledge-Based Interpretation of Utility Maps , 1996, Comput. Vis. Image Underst..

[4]  Alireza Khotanzad,et al.  Rotation invariant pattern recognition using Zernike moments , 1988, [1988 Proceedings] 9th International Conference on Pattern Recognition.

[5]  Patrick J. Grother,et al.  NIST Form-Based Handprint Recognition System , 1994 .

[6]  Kagan Tumer,et al.  Theoretical Foundations Of Linear And Order Statistics Combiners For Neural Pattern Classifiers , 1995 .