马达加斯加拉诺马法纳国家公园黑白狐猴(Varecia variegata)的综合被动声学监测和深度学习管道

IF 2 3区 生物学 Q1 ZOOLOGY American Journal of Primatology Pub Date : 2024-01-20 DOI:10.1002/ajp.23599
Carly H. Batist, Emmanuel Dufourq, Lorène Jeantet, Mendrika N. Razafindraibe, Francois Randriamanantena, Andrea L. Baden
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引用次数: 0

摘要

面对全球生物多样性的丧失,人们迫切需要有效的野生动物监测解决方案,因此被动声学监测(PAM)等保护技术应运而生。虽然被动声学监测技术已广泛应用于海洋哺乳动物、鸟类和蝙蝠,但在灵长类动物中的应用还很有限。黑白狐猴(Varecia variegata)的吼叫声独特而响亮,是一种很有希望测试 PAM 的物种。此外,由于这些狐猴分布在马达加斯加茂密的东部雨林中,分布零散且经常难以预测,因此用传统方法对其进行监测具有挑战性。我们在这项研究中的目标是开发一种机器学习管道,用于从 PAM 数据中自动检测叫声,比较 PAM 与人工观察的有效性,并研究狐猴发声行为的日间模式。我们于2019年5月至7月在拉诺玛法纳国家公园的曼热沃(Mangevo)开展了这项研究,同时进行了重点跟踪并部署了自主记录器。我们利用迁移学习构建了一个卷积神经网络(针对召回率进行了优化),该网络可自动检测狐猴的叫声(运行时间为 57 小时;召回率 = 0.94,F1 = 0.70)。我们发现,PAM 的效果优于现场观察,不仅节省了时间、金钱和人力,还提供了可重新分析的数据。通过使用 PAM,我们对 V. variegata 的日间发声模式有了新的认识;我们首次公布了夜间鸣叫的证据。我们开发了一个图形用户界面,并开源了数据和代码,为有兴趣实施 PAM 和机器学习的灵长类动物学家提供资源。通过利用这一管道的潜力,我们可以满足对有效灵长类种群调查的迫切需求,为保护战略提供信息。
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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An integrated passive acoustic monitoring and deep learning pipeline for black-and-white ruffed lemurs (Varecia variegata) in Ranomafana National Park, Madagascar

The urgent need for effective wildlife monitoring solutions in the face of global biodiversity loss has resulted in the emergence of conservation technologies such as passive acoustic monitoring (PAM). While PAM has been extensively used for marine mammals, birds, and bats, its application to primates is limited. Black-and-white ruffed lemurs (Varecia variegata) are a promising species to test PAM with due to their distinctive and loud roar-shrieks. Furthermore, these lemurs are challenging to monitor via traditional methods due to their fragmented and often unpredictable distribution in Madagascar's dense eastern rainforests. Our goal in this study was to develop a machine learning pipeline for automated call detection from PAM data, compare the effectiveness of PAM versus in-person observations, and investigate diel patterns in lemur vocal behavior. We did this study at Mangevo, Ranomafana National Park by concurrently conducting focal follows and deploying autonomous recorders in May–July 2019. We used transfer learning to build a convolutional neural network (optimized for recall) that automated the detection of lemur calls (57-h runtime; recall = 0.94, F1 = 0.70). We found that PAM outperformed in-person observations, saving time, money, and labor while also providing re-analyzable data. Using PAM yielded novel insights into V. variegata diel vocal patterns; we present the first published evidence of nocturnal calling. We developed a graphic user interface and open-sourced data and code, to serve as a resource for primatologists interested in implementing PAM and machine learning. By leveraging the potential of this pipeline, we can address the urgent need for effective primate population surveys to inform conservation strategies.

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来源期刊
CiteScore
4.50
自引率
8.30%
发文量
103
审稿时长
4-8 weeks
期刊介绍: The objective of the American Journal of Primatology is to provide a forum for the exchange of ideas and findings among primatologists and to convey our increasing understanding of this order of animals to specialists and interested readers alike. Primatology is an unusual science in that its practitioners work in a wide variety of departments and institutions, live in countries throughout the world, and carry out a vast range of research procedures. Whether we are anthropologists, psychologists, biologists, or medical researchers, whether we live in Japan, Kenya, Brazil, or the United States, whether we conduct naturalistic observations in the field or experiments in the lab, we are united in our goal of better understanding primates. Our studies of nonhuman primates are of interest to scientists in many other disciplines ranging from entomology to sociology.
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