基于聚类方法的个人笔迹特征手写数字识别

Y. Hotta, S. Naoi, M. Suwa
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引用次数: 5

摘要

为了提高识别率,不仅要利用单个字符的特征,而且要利用个人的笔迹特征。本文根据我们的调查结果实现了上述方法,即同一作者所写的汉字具有相似的形状,即使在同一类别中也存在几种形状。在我们的方法中,采用聚类方法来吸收类别中字符形状的方差。首先,对每个字符执行字符识别。其次,通过类内聚类,将被错误识别的候选字符提取为孤立的聚类。然后,通过类间聚类对提取出来的字符的识别结果进行修正,类间聚类评估每个类别中由错误字符组成的聚类与由正确识别字符组成的聚类之间的距离。实验结果表明,该方法显著提高了图像的识别率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Handwritten Numeral Recognition Using Personal Handwriting Characteristics Based On Clustering Method
To improve recognition rate, it is important not only to utilize one character feature but personal handwriting characteristics. This paper realizes above approach based on our investigation result that characters written by the same writer have similar shapes and that there are several shapes even in the same category. In our method, clustering method is used to absorb the variance of character shapes in the category. First, character recognition for each character is executed. Next, misrecognized character candidates are extracted as isolated cluster by within-category clustering. Then, recognition results of the extracted characters are amended by between-category clustering which evaluates the distance between the cluster composed of misrecognized characters and the cluster composed of correctly recognized characters in every categories. Finally, experimental results shows that recognition rate is remarkably improved by our method.
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