基于小波和高斯混合模型的音频分类

C. Chuan, S. Vasana, A. Asaithambi
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引用次数: 5

摘要

本文提出了一种利用小波提取低阶声学特征的音频分类系统。我们使用离散小波变换进行多级分解,从录音中提取不同尺度和时间的声学特征。然后将提取的特征转换为紧凑的向量表示。然后使用期望最大化算法的高斯混合模型来建立声音类的模型。具体来说,设计了三种类型的音频分类任务来评估该系统,包括语音/音乐分类、男性/女性语音分类和音乐类型(古典、流行、爵士和电子)分类。通过5次交叉验证对系统进行评估,实验结果显示了小波分析在语音和音乐分析方面的良好能力。
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Using Wavelets and Gaussian Mixture Models for Audio Classification
In this paper, we present an audio classification system using wavelets for extracting low-level acoustic features. We perform multiple-level decomposition using Discrete Wavelet Transform to extract acoustic features at different scales and time from audio recordings. The extracted features are then translated into a compact vector representation. Gaussian Mixture Models with Expectation Maximization algorithm are then used to build models for sound classes. Specifically, three types of audio classification tasks are designed to evaluate the system, including speech/music classification, male/female speech classification, and music genre (classical, pop, jazz, and electronic) classification. By evaluating the system through 5-fold cross validation, the experimental result shows the promising capability of wavelets for speech and music analyses.
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