基于类间散点矩阵的Fisher判别分析音频信号分类

Yuechi Jiang, F. H. F. Leung
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引用次数: 1

摘要

Fisher判别分析(FDA)是一种应用广泛的信号分类技术。它的应用范围从人脸识别到说话人识别。FDA旨在将给定的特征投影到投影空间中,其中来自同一类别的特征移动得更近,而来自不同类别的特征移动得更远。然而,在FDA的原始配方中,正交投影方向的数量受到类别数量的限制,这可能会阻碍FDA作为一种投影技术的有效性。本文提出用新的类间散点矩阵代替原有的类间散点矩阵,以增加正交投影方向的数量。我们称具有这些新的类间散点矩阵的FDA为改进的FDA (MFDA)。通过两个音频信号分类任务,比较了MFDA和FDA作为投影技术的有效性。对MFDA和FDA的线性版本和内核版本进行了评价,实验结果表明,MFDA在这两个分类任务上都优于FDA。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fisher Discriminant Analysis with New Between-class Scatter Matrix for Audio Signal Classification
Fisher Discriminant Analysis (FDA) is a widely used technique for signal classification. Its application varies from face recognition to speaker recognition. FDA aims to project a given feature onto a projected space, where the features coming from the same class are moved closer, while those coming from different classes are moved farther. However, in the original formulation of FDA, the number of orthogonal projection directions is limited by the number of classes, which may hinder the effectiveness of FDA as a projection technique. In this paper, we propose to use new between-class scatter matrices to replace the original between-class scatter matrix, in order to increase the number of orthogonal projection directions. We call FDA with these new between-class scatter matrices the Modified FDA (MFDA). The effectiveness of MFDA and FDA as a projection technique is compared through doing two audio signal classification tasks. Both linear version and kernel version of MFDA and FDA are evaluated, and experimental results show that MFDA can outperform FDA in both classification tasks.
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