Optimum Design Parameters of the Classifiers for Omni-Font Machine-Printed Numeral Recognition Based on the Minimum Classification Error Criterion

نویسندگان

  • Katsumi Marukawa
  • Kazuki Nakashima
  • Hiroshi Shinjo
  • Yoshihiro Shima
  • Hiromichi Fujisawa
چکیده

Abs t rac t The optimal design parameters of classifiers for omni-font machine-printed numeral recognition based on the minimum classification error (MCE) criterion are determined experimentall y. The design parameters that influence the accuracy of an optical character reader (OCR) are: similarity measure (or distance measure), kinds of features, dimension of the feature vector, method of training, number of templates percategory, and the size of a training sample set. It way found that the optimum &sign parameters were simple similarity, four templates per category, and 576 dimensions (i.e., four directional feature planes of 12 x 12 blocks). The directional feature classifier with these design parameters gave the best performance and had the smallest memory size and computational cost of all the classifiers.

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تاریخ انتشار 1998