Animal Call Recognition with Acoustic Indices: Little Spotted Kiwi as a Case Study

Hongxiao Gan, M. Towsey, Yuefeng Li, Jinglan Zhang, P. Roe
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引用次数: 2

Abstract

Long-duration recordings of the natural environment are very useful in monitoring of animal diversity. After accumulating weeks or even months of recordings, ecologists need an efficient tool to recognize species in those recordings. Automated species recognizers are developed to interpret field-collected recordings and quickly identify species. However, the repetitive work of designing and selecting features for different species is becoming a serious problem for ecologists. This situation creates a demand for generic recognizers that perform well on multiple animal calls. Meanwhile, acoustic indices are proposed to summarize the structure and distribution of acoustic energy in natural environment recordings. They are designed to assess the acoustic activity of animal habitats and do not have discrimination against any species. That characteristic makes them natural generic features for recognizers. In this study, we explore the potential of acoustic indices being generic features and build a kiwi call recognizer with them as a case study. We proposed a kiwi call recognizer built with a Multilayer Perceptron (MLP) classifier and acoustic index features. Experimental results on 13 hours of kiwi call recordings show that our recognizer performs well, in terms of precision, recall and F1 measure. This study shows that acoustic indices have the potential of being generic features that can discriminate multiple animal calls.
动物叫声识别声学指数:小斑点猕猴桃为例研究
长时间的自然环境记录对监测动物多样性非常有用。在积累了数周甚至数月的记录后,生态学家需要一种有效的工具来识别这些记录中的物种。开发了自动物种识别器来解释现场收集的记录并快速识别物种。然而,为不同物种设计和选择特征的重复性工作正成为生态学家面临的一个严重问题。这种情况产生了对在多种动物叫声上表现良好的通用识别器的需求。同时,提出了声学指标来概括自然环境录音中声能的结构和分布。它们旨在评估动物栖息地的声学活动,不歧视任何物种。这一特征使它们成为识别器的自然通用特征。在这项研究中,我们探讨了声学指标作为通用特征的潜力,并以它们为案例研究构建了一个几维鸟叫声识别器。本文提出了一种基于多层感知器(MLP)分类器和声学索引特征的猕猴桃叫声识别器。13小时的猕猴桃通话记录实验结果表明,我们的识别器在准确率、召回率和F1测量方面表现良好。这项研究表明,声学指标有可能成为区分多种动物叫声的通用特征。
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