改进的单类SVM分类器用于声音分类

A. Rabaoui, M. Davy, S. Rossignol, Z. Lachiri, N. Ellouze
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引用次数: 46

摘要

为了解决特定的音频分类问题,本文提出将优化的一类支持向量机(1- svm)作为判别框架。首先,由于基于svm的高斯RBF核分类器对核宽度敏感,因此宽度将以分布相关的方式缩放,以避免欠拟合和过拟合问题。此外,还将引入一种先进的不相似度度量方法。我们举例说明了这些方法在包含环境声音的音频数据库上的性能,这些声音可能对监视和安全应用非常重要。对一个多类问题的实验表明,通过选择适当的支持向量机参数,可以有效地解决现实世界复杂数据集的声音分类问题。
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Improved one-class SVM classifier for sounds classification
This paper proposes to apply optimized one-class support vector machines (1-SVMs) as a discriminative framework in order to address a specific audio classification problem. First, since SVM-based classifier with gaussian RBF kernel is sensitive to the kernel width, the width will be scaled in a distribution-dependent way permitting to avoid under-fitting and over-fitting problems. Moreover, an advanced dissimilarity measure will be introduced. We illustrate the performance of these methods on an audio database containing environmental sounds that may be of great importance for surveillance and security applications. The experiments conducted on a multi-class problem show that by choosing adequately the SVM parameters, we can efficiently address a sounds classification problem characterized by complex real-world datasets.
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