首页> 外文期刊>Optik: Zeitschrift fur Licht- und Elektronenoptik: = Journal for Light-and Electronoptic >A dictionary learning and KPCA-based feature extraction method for off-line handwritten Tibetan character recognition
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A dictionary learning and KPCA-based feature extraction method for off-line handwritten Tibetan character recognition

机译:一种基于字典学习和KPCA特征的离线手写藏文字符识别方法

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摘要

Kernel principal component analysis (KPCA) is a powerful feature extraction technique. For character recognition, however, the computation cost of KPCA is too high because of much larger sample size of each class. A novel two-stage feature extraction method DL-KPCA that based on dictionary learning and KPCA is proposed for character recognition. In the first stage, with the dictionary learning method K-SVD, a representative sample subset is constructed from the original sample set of each class at first. Then, to the test sample, find its K nearest neighbors from the union of all the constructed sample subsets and consider the classes of their nearest neighbors as the candidate classes. In the second stage, the test sample and the constructed sample subsets of its candidate classes are transformed to the feature space with KPCA, and the test sample is finally classified with K-NN in the feature space. Experimental results on THCDB, a recently developed Tibetan handwritten character sample database, and the reshuffled USPS digit database show that, to character recognition problems, it is feasible to extract the features with the proposed DL-KPCA. (C) 2015 Elsevier GmbH. All rights reserved.
机译:内核主成分分析(KPCA)是一种功能强大的特征提取技术。但是,对于字符识别,由于每个类别的样本量大得多,因此KPCA的计算成本过高。提出了一种基于字典学习和KPCA的两阶段特征提取方法DL-KPCA,用于字符识别。在第一阶段,使用字典学习方法K-SVD,首先从每个类别的原始样本集中构造一个代表性样本子集。然后,对于测试样本,从所有构造的样本子集的并集中找到其K个最近邻居,并将其最近邻居的类别视为候选类别。在第二阶段,将测试样本及其候选类的构造样本子集通过KPCA转换到特征空间,最后在特征空间中使用K-NN对测试样本进行分类。在最近开发的藏文手写字符样本数据库THCDB和改组后的USPS数字数据库上的实验结果表明,对于字符识别问题,使用提出的DL-KPCA提取特征是可行的。 (C)2015 Elsevier GmbH。版权所有。

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