Feature Weighting for Improved Classification of Anuran Calls

Dalwinder Singh, Birmohan Singh
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引用次数: 2

Abstract

Automatic bioacoustics monitoring has a great potential to assess the ecosystem health. However, such bioacoustics systems are not highly accurate because the classification of data involves a large number of species. In this paper, we have considered the related problem which involves classification of frog and toad species from their sounds. A publicly available large dataset is used for this purpose where performance is evaluated with leave-one-out cross-validation on the k-NN classifier. The dataset was prepared by extracting Mel-frequency cepstral coefficients (MFCCs)features from the recorded anurans calls, and it comprises the classification of anurans at family, genus and species levels. This paper presents the application of feature weighting to improve the classification of anurans calls. It is a continuous search problem where weights are assigned to features with respect to their contribution in classification. These weights are searched with the Ant Lion optimization along with the best parametric values of the k-NN classifier. The outcomes of experiments show that the proposed approach has successfully enhanced the classification accuracy at family, genus and species levels. The maximum classification accuracies of 95.01%, 88.38%,and 88.08% are achieved at family, genus and species levels respectively which has outperformed the feature selection approach as well as existing works.
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基于特征加权的改进Anuran呼叫分类
生物声学自动监测在评价生态系统健康方面具有很大的潜力。然而,由于数据分类涉及大量物种,这种生物声学系统的准确性不高。在本文中,我们考虑了相关的问题,涉及到青蛙和蟾蜍种类的分类从他们的声音。为此使用了一个公开可用的大型数据集,其中使用k-NN分类器上的留一交叉验证来评估性能。该数据集通过提取anurans叫声的Mel-frequency cepstral coefficient (MFCCs)特征而得到,并包含了anurans在科、属和种水平上的分类。提出了一种基于特征加权的无尾猿叫声分类方法。它是一个连续搜索问题,根据特征在分类中的贡献分配权重。这些权重与k-NN分类器的最佳参数值一起使用蚂蚁狮子优化进行搜索。实验结果表明,该方法提高了科、属和种的分类精度。在科、属和种水平上的分类准确率分别达到95.01%、88.38%和88.08%,优于特征选择方法和现有研究成果。
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