Automatic Environment Sounds Classification Using Optimum Allocation Sampling

Anugya Pareta, S. Taran, V. Bajaj, A. Şengur
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引用次数: 2

Abstract

Sound provides highly informative data about the environment. In the sound recognition process, the signal parameterization is an important aspect. In the present work, a new approach using optimum allocation sampling (OAS) method based features used in multi-class least square support vector machine classifier (MC-LS-SVM) is proposed for environmental sound classification (ESC). The time and frequency (TF) features are extracted from the OAS method and these features used as input to MC-LS-SVM classifiers with different kernel functions for automatic ESC. Various performance parameters are computed with Cohen's kappa value being 0.8381 and sensitivity, specificity, F1-score, error and Matthew correlation coefficient are 85.42%, 98.38%, 0.854, 14.57%, 83.81% respectively. The adaptability and accuracy of the proposed is better as compared to the previously existing methods on the same data-set.
基于最佳分配采样的环境声音自动分类
声音提供了关于环境的高信息量的数据。在声音识别过程中,信号参数化是一个重要的方面。本文提出了一种基于多类最小二乘支持向量机分类器(MC-LS-SVM)特征的最优分配采样(OAS)方法用于环境声音分类的新方法。从OAS方法中提取时间和频率(TF)特征,并将这些特征作为MC-LS-SVM分类器不同核函数的输入,用于自动ESC。计算各项性能参数,Cohen’s kappa值为0.8381,灵敏度为85.42%,特异度为98.38%,f1评分为0.854,误差为14.57%,马修相关系数为83.81%。在同一数据集上,与已有的方法相比,该方法具有更好的适应性和准确性。
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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