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Minimum classification error training for handwritten character recognition

机译:手写字符识别的最低分类错误培训

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In the offline handwritten character recognition, the classifier with modified quadratic discriminant function (MQDF) has achieved good performance. The parameters of the MQDF are commonly estimated using the maximum likelihood estimator, which maximizes the within-class likelihood but not directly minimizes the classification errors. To improve the MQDF performance, the MQDF parameters are revised using the discriminative training of minimum classification error (MCE). Our algorithm effectiveness is demonstrated by applying it to the NIST handwritten numerals and handwritten Chinese character* The experimental results show that one of the highest recognition accuracies ever reported is achieved.
机译:在离线手写字符识别中,具有修改的二次判别函数(MQDF)的分类器取得了良好的性能。使用最大似然估计器通常估计MQDF的参数,其最大化课堂内可能性,但不直接最小化分类错误。为了提高MQDF性能,使用最小分类误差(MCE)的鉴别培训修改MQDF参数。通过将其应用于NIST手写的数字和手写的汉字来证明我们的算法效果*实验结果表明,达到了曾经报告的最高识别精度之一。

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