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The Scalable Version of Probabilistic Linear Discriminant Analysis and Its Potential as A Classifier for Audio Signal Classification

机译:概率线性判别分析的可扩展版本及其作为音频信号分类器的潜力

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Probabilistic Linear Discriminant Analysis (PLDA) has exhibited good performance in face recognition and speaker verification. However, it is not widely used as a general-purpose classifier. The major limitation of PLDA lies in that, in the original formulation, the modeling part and the prediction part require the inversion of large matrices, whose sizes are proportional to the number of training vectors in a class. The original formulation of PLDA is not scalable if there are many training vectors, because the matrices will become too large to be inverted. In the literature, some scalable versions for the modeling part have been proposed. In this paper, we propose the scalable version for the prediction part, which completes the scalable version of PLDA. This makes PLDA able to handle a large number of training data, enabling PLDA to be used as a general-purpose classifier for different classification tasks. We then apply PLDA as the classifier to three different audio signal classification tasks, and compare its performance with Support Vector Machine (SVM), which is a widely used general-purpose classifier. Experimental results show that PLDA performs very well and can be even better than SVM, in terms of classification accuracy.
机译:概率线性判别分析(PLDA)在人脸识别和说话者验证方面表现出良好的性能。但是,它没有被广泛用作通用分类器。 PLDA的主要限制在于,在原始公式中,建模部分和预测部分需要对大型矩阵进行求逆,而大型矩阵的大小与一类训练向量的数量成正比。如果有许多训练向量,PLDA的原始公式就无法扩展,因为矩阵将变得太大而无法倒置。在文献中,已经提出了一些用于建模部分的可扩展版本。在本文中,我们为预测部分提出了可扩展版本,从而完善了PLDA的可扩展版本。这使PLDA能够处理大量的训练数据,使PLDA可以用作不同分类任务的通用分类器。然后,我们将PLDA作为分类器应用于三个不同的音频信号分类任务,并将其性能与广泛使用的通用分类器支持向量机(SVM)进行比较。实验结果表明,PLDA的分类精度非常好,甚至可以优于SVM。

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