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Similar Pattern Discriminant Analysis for Improving Chinese Character Recognition Accuracy

机译:提高汉字识别准确性的类似模式判别分析

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In this paper, a similar pattern discriminant analysis method is proposed. It optimizes the feature projection matrix based on similar pattern pairs and aims to extract targeted features for similar pattern discrimination. For improving Chinese character recognition accuracy, we introduce a cascade modified quadratic discriminant function (MQDF) model to combine linear discriminant analysis (LDA) and similar pattern discriminant analysis. The proposed method is investigated and compared with compound Mahalanobis function (CMF) on two data sets. The results indicate that the cascade MQDF achieves a better improvement and higher recognition accuracies than CMF. The relative recognition errors have been decreased up to 19.73% and 15.59% respectively on HCL2000 and THU-HCD datasets with respect to single MQDF.
机译:本文提出了一种类似的模式判别分析方法。它基于类似的模式对优化特征投影矩阵,并旨在提取用于类似模式辨别的目标特征。为了提高汉字识别准确性,我们介绍了一种级联改性的二次判别功能(MQDF)模型,以结合线性判别分析(LDA)和类似的模式判别分析。研究了该方法,并与两种数据集上的复合Mahalanobis函数(CMF)进行了研究。结果表明,级联MQDF实现比CMF更好的提高和更高的识别精度。在HCL2000和THU-HCD数据集中,相对识别误差已高达19.73%和15.59%,相对于单个MQDF。

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