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首页> 外文期刊>Frontiers in Marine Science >Monitoring of a Nearshore Small Dolphin Species Using Passive Acoustic Platforms and Supervised Machine Learning Techniques
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Monitoring of a Nearshore Small Dolphin Species Using Passive Acoustic Platforms and Supervised Machine Learning Techniques

机译:使用被动声学平台和监督机学习技术监测近岸小海豚物种

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摘要

Passive Acoustic Monitoring (PAM) is increasingly being adopted as a non-invasive method for the assessment of ocean ecological dynamics. PAM is an important sampling approach for acquiring critical information about marine mammals, especially in areas where data are lacking and where evaluations of threats for vulnerable populations are required. The Indo-Pacific humpback dolphin (IPHD, Sousa chinensis) is a coastal species which inhabits tropical and warm-temperate waters from the eastern Indian Ocean throughout Southeast Asia to central China. A new population of this species was recently discovered in waters southwest of Hainan Island, China. An array of passive acoustic platforms was deployed at depths of 10-20 m (the preferred habitat of humpback dolphins), across sites covering more than 100 km of coastline. In this study, we explored whether the acoustic data recorded by the array could be used to classify IPHD echolocation clicks, with the aim of investigating the spatiotemporal patterns of distribution and acoustic behavior of this species. A number of supervised machine learning algorithms were trained to automatically classify echolocation clicks from the different types of short-broadband pulses recorded. The best performance was reported by a cubic support vector machine (Cubic SVM), which was applied to 19215 five-min recordings (~ 4.2 TB), collected over a period of 75 d at six locations. Subsequently, using spectrogram visualization and audio listening, human operators confirmed the presence of clicks within the selected files. Additionally, other dolphin vocalizations (including whistles, buzzes and burst pulses) and different sound sources (soniferous fishes, snapping shrimps, human activities) were also reported. The detection range of IPHD clicks was estimated using a Transmission Loss model and the performance of the trained classifier was compared with data synchronously collected by an acoustic data logger (A-tag). This study demonstrates that the distribution and habitat use of a coastal and resident dolphin species can be monitored over a large spatiotemporal scale, using an array of passive acoustic platforms and a data analysis protocol that includes both machine learning techniques and spectrogram inspection.
机译:被动声监测(PAM)越来越多地被采用作为对海洋生态动态进行评估的非侵入性方法。 PAM是获取有关海洋哺乳动物的关键信息的重要采样方法,尤其是在缺乏数据的地区,并且需要对弱势群体的威胁进行评估。印度 - 太平洋驼背海豚(IPHD,Sousa Chinensis)是一种沿海地区,居住在东南亚东部海洋东部的热带和温暖的水域到中国中部。最近在中国海南岛西南部的水域发现了新的这种物种。一系列被动声学平台在10-20米(驼背海豚的首选栖息地)的深度部署,涵盖了100千米以上的海岸线。在这项研究中,我们探讨了阵列记录的声学数据是否可用于对IPHD回声定位点击进行分类,目的是调查该物种的分布和声学行为的时空模式。训练了许多监督机器学习算法,以自动对录制的不同类型的短宽带脉冲进行分类。立方体支持向量机(立方SVM)报告了最佳性能,其应用于19215年的五分钟录制(〜4.2 TB),在六个位置的75 D期间收集。随后,使用频谱图可视化和音频侦听,人工操作员确认了所选文件中的点击次数。此外,还报告了其他海豚发声(包括口哨,嗡嗡声和爆发脉冲)和不同的声源(混乱的鱼类,捕捞虾,人类活动)。使用传输丢失模型估计IPHD点击咔嗒声的检测范围,并将培训分类器的性能与由声学数据记录器(A-TAG)同步收集的数据进行比较。本研究表明,使用包括机器学习技术和谱图检查的数据分析协议,可以通过大量的时空级监测沿海和常驻海豚物种的分布和栖息地使用。

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