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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Evaluation of weighted Fisher criteria for large category dimensionality reduction in application to Chinese handwriting recognition
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Evaluation of weighted Fisher criteria for large category dimensionality reduction in application to Chinese handwriting recognition

机译:大类降维的加权Fisher准则在中文手写识别中的应用评估

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摘要

To improve the class separability of Fisher linear discriminant analysis (FDA) for large category problems, we investigate the weighted Fisher criterion (WFC) by integrating weighting functions for dimensionality reduction. The objective of WFC is to maximize the sum of weighted distances of all class pairs. By setting larger weights for the most confusable classes, WFC can improve the class separation while the solution remains an eigen-decomposition problem. We evaluate five weighting functions in three different weighting spaces in a typical large category problem of handwritten Chinese character recognition. The weighting functions include four based on existing methods, namely, FDA, approximate pairwise accuracy criterion (aPAC), power function (POW), confused distance maximization (CDM), and a new one based on K-nearest neighbors (KNN). All the weighting functions can be calculated in the original feature space, low-dimensional space, or fractional space. Our experiments on a 3,755-class Chinese handwriting database demonstrate that WFC can improve the classification accuracy significantly compared to FDA. Among the weighting functions, the KNN method in the original space is the most competitive model which achieves significantly higher classification accuracy and has a low computational complexity. To further improve the performance, we propose a nonparametric extension of the KNN method from the class level to the sample level. The sample level KNN (SKNN) method is shown to outperform significantly other methods in Chinese handwriting recognition such as the locally linear discriminant analysis (LLDA), neighbor class linear discriminant analysis (NCLDA), and heteroscedastic linear discriminant analysis (HLDA).
机译:为了提高大类问题的Fisher线性判别分析(FDA)的类可分离性,我们通过集成加权函数以减少维数来研究加权Fisher准则(WFC)。 WFC的目标是使所有类别对的加权距离之和最大化。通过为最易混淆的类别设置更大的权重,WFC可以改善类别分离,而解决方案仍然是特征分解问题。在一个典型的手写汉字识别大类问题中,我们在三个不同的加权空间中评估了五个加权函数。加权函数包括四种基于现有方法的函数,即FDA,近似成对准确度标准(aPAC),幂函数(POW),混淆距离最大化(CDM)和基于K近邻的新方法(KNN)。可以在原始特征空间,低维空间或分数空间中计算所有加权函数。我们对3,755类中文手写数据库进行的实验表明,与FDA相比,WFC可以显着提高分类准确性。在加权函数中,原始空间中的KNN方法是最有竞争力的模型,该模型可实现更高的分类精度,并且计算复杂度较低。为了进一步提高性能,我们建议将KNN方法从类级别扩展到样本级别。结果表明,样本水平KNN(SKNN)方法在中文手写识别中的性能大大优于其他方法,例如局部线性判别分析(LLDA),邻居分类线性判别分析(NCLDA)和异方差线性判别分析(HLDA)。

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