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Classification of acoustic noise signals using wavelet spectrum based support vector machine

机译:基于小波频谱支持向量机的声学噪声信号分类

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Harsh noises come from air-conditioning units are chronic complaining issues to their users. Individual perceptions of noise levels have been generally quantified by means of subjective evaluation such as a jury test. This article proposes a classification approach to acoustic noise signals using a wavelet spectrum analysis. We derive energy spectrums of noise signals using a discrete wavelet transform at pre-specified window length. The energy spectrums are a linear form and represented by a Hurst parameter as an informative summary of long-range dependent signal data. The Hurst parameter controls the self-similarity scaling as well as the degree of long-range dependence. We estimate the Hurst parameter through the least squares regression of sample energy against a resolution level in the wavelet spectral domain. In the context of multi-class classification problem, the classification of noise signals is performed by a nonlinear support vector machine (SVM) for parameter estimates of linear energy profiles containing the Hurst parameter. In an application example of air-conditioner noise signals, empirical results show that the proposed method offers the higher level of accuracy in acoustic noise sound classification.
机译:苛刻的噪音来自空调单位是他们的用户的慢性抱怨问题。通过诸如陪审团试验的主观评估,通常对噪声水平的个人看法一般是量化的。本文提出了使用小波频谱分析的声学噪声信号的分类方法。我们在预先指定的窗口长度下使用离散小波变换来源噪声信号的能谱。能量谱是线性形式,由HURST参数表示为远程相关信号数据的信息摘要。 Hurst参数控制自相似性缩放以及远程依赖程度。我们通过对小波频谱域中的分辨率电平的最小分量消退来估计呼吸围场参数。在多级分类问题的背景下,噪声信号的分类由非线性支持向量机(SVM)执行,用于包含HURST参数的线性能量分布的参数估计。在空调噪声信号的应用示例中,经验结果表明,所提出的方法在声学噪声分类中提供更高水平的精度。

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