手写体汉字识别的局部线性判别分析方法

Xue Gao, Jinzhi Guo, Lianwen Jin
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引用次数: 0

摘要

LDA是现有手写体汉字识别系统中常用的降维技术之一。针对传统LDA方法中存在的类分离问题和多模态样本问题,提出了一种新的用于手写体汉字识别的局部线性判别分析(LLDA)方法。该算法的操作如下:(1)使用聚类算法寻找每个类的聚类。(2)在保持类内散点不变的情况下,为每个类寻找最近邻的簇,在计算LDA的类间散点时使用簇均值。(3)最后应用向量归一化进一步改进类分离问题。在HCL2000上的一系列实验表明,我们的方法可以有效地提高识别,与传统的LDA方法相比,误差率降低了14.8%,表明了本文方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A local linear discriminant analysis method for handwritten Chinese character recognition
LDA is one of popular dimension reduction techniques in existing handwritten Chinese characters (HCC) recognition systems. To deal with the class separation problem and the multimodal samples in tradition LDA method, we proposed a new local linear discriminant analysis (LLDA) method for handwritten Chinese character recognition in this paper. The algorithm operates as follows: (1) Using the clustering algorithm to find clusters for each class. (2) Finding the nearest neighbor clusters for each cluster and using cluster means in the computation of the between-class scatter in LDA while keeping the within-class scatter unchanged. (3) Finally vector normalization is applied to further improve the class separation problem. A series of experiments on HCL2000 have indicated that our method can effectively improve the recognition, the error rate reduction reaches 14.8% comparing to the traditional LDA method, showing effectiveness of the proposed approach.
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