A nested infinite Gaussian mixture model for identifying known and unknown audio events

Y. Sasaki, Kazuyoshi Yoshii, S. Kagami
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引用次数: 3

Abstract

This paper presents a novel statistical method that can classify given audio events into known classes or recognize them as an unknown class. We propose a nested infinite Gaussian mixture model (iGMM) to represent varied audio events in real environment. One of the main problems of conventional classification methods is that we need to specify a fixed number of classes in advance. Therefore, all audio events are forced to be classified into known classes. To solve the problem, the proposed method formulates a infinite Gaussian mixture model (iGMM) in which the number of classes are allowed to increase without bound. Another problem is that the complexity of each audio event is different. Then, the nested iGMM using nonparametric Bayesian approach is applied to adjust the needed dimension of each audio model. Experimental results show the effectiveness for these two problems to represent the given audio events.
用于识别已知和未知音频事件的嵌套无限高斯混合模型
本文提出了一种新的统计方法,可以将给定的音频事件分类为已知类或识别为未知类。我们提出了一个嵌套无限高斯混合模型(iGMM)来表示真实环境中的各种音频事件。传统分类方法的主要问题之一是我们需要提前指定固定数量的类。因此,所有音频事件都必须被分类到已知的类中。为了解决这一问题,提出了一种允许类数无限制增加的无限高斯混合模型(iGMM)。另一个问题是,每个音频事件的复杂性是不同的。然后,采用非参数贝叶斯方法的嵌套iGMM来调整每个音频模型所需的维数。实验结果表明,这两个问题都能有效地表示给定的音频事件。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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