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首页> 外文期刊>The Journal of the Acoustical Society of America >Automatic detection of fish sounds based on multi-stage classification including logistic regression via adaptive feature weighting
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Automatic detection of fish sounds based on multi-stage classification including logistic regression via adaptive feature weighting

机译:根据多级分类自动检测鱼类声音,包括通过自适应特征加权的逻辑回归

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摘要

This paper presents a method for automatic detection of fish sounds in an underwater environment. There exist two difficulties: (i) features and classifiers that provide good detection results differ depending on the underwater environment and (ii) there are cases where a large amount of training data that is necessary for supervised machine learning cannot be prepared. A method presented in this paper (the proposed hybrid method) overcomes these difficulties as follows. First, novel logistic regression (NLR) is derived via adaptive feature weighting by focusing on the accuracy of classification results by multiple classifiers, support vector machine (SVM), and k-nearest neighbors (k-NN). Although there are cases where SVM or k-NN cannot work well due to divergence of useful features, NLR can produce complementary results. Second, the proposed hybrid method performs multi-stage classification with consideration of the accuracy of SVM, k-NN, and NLR. The multistage acquisition of reliable results works adaptively according to the underwater environment to reduce performance degradation due to diversity of useful classifiers even if abundant training data cannot be prepared. Experiments on underwater recordings including sounds of Sciaenidae such as silver croakers (Pennahia argentata) and blue drums (Nibea mitsukurii) show the effectiveness of the proposed hybrid method. (C) 2018 Acoustical Society of America.
机译:本文介绍了一种自动检测水下环境中鱼类声音的方法。存在两个困难:(i)提供良好的检测结果的特征和分类器根据水下环境和(ii)在没有准备监督机器学习所需的大量培训数据的情况下。本文提出的方法(所提出的杂交方法)克服了如下的这些困难。首先,通过专注于通过多分类器,支持向量机(SVM)和K-Nembors(K-Nn)的分类结果的精度来通过自适应特征权重导出新的逻辑回归(NLR)。尽管存在由于有用特征的分歧而不能正常工作的情况下,NLR可以产生互补结果。其次,所提出的混合方法考虑SVM,K-NN和NLR的准确性来执行多级分类。根据水下环境,多级拍摄可靠的结果适合于自适应地工作,以降低由于无法准备丰富的训练数据的有用分类器的多样性而降低性能下降。水下录音的实验,包括Sciaenidae的声音,如Silver Croakers(Pennahia Argentata)和Blue Drums(Nibea Mitsukurii)表明了所提出的杂种方法的有效性。 (c)2018年声学学会。

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