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首页> 外文期刊>Ecological informatics: an international journal on ecoinformatics and computational ecology >Model-based unsupervised clustering for distinguishing Cuvier's and Gervais' beaked whales in acoustic data
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Model-based unsupervised clustering for distinguishing Cuvier's and Gervais' beaked whales in acoustic data

机译:基于模型的无监督聚类,用于区分CUVIER和GERVAIS在声学数据中的喙鲸

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摘要

Passive acoustic monitoring (PAM), particularly autonomous platforms, offers many advantages in monitoring phonating deep-diving marine mammals in oceanic environment. Relevant data can be obtained day and night continuously over long durations and in any weather conditions. It provides a cost-efficient solution with greater detection ranges when compared to traditional large research vessel and aerial visual surveys requiring keeping expert observers on station for long periods of time and relying on good visibility and calm seas. Therefore, PAM is becoming a preferred tool to assess population dynamics trends and health of deep-water marine mammal stocks. However the large volumes of collected data require robust automatic detection and classification algorithms to identify marine mammals in recordings. As for beaked whales, one of the challenging automatic processing goals is the identification of different species to advance our understanding of their role in the marine ecosystem. At present, traditional detection and classification methods employ searches for acoustic events above a user-defined signal-to-noise ratio threshold in the frequency band of interest and further rely on an experienced operator's manual inspection for species classification and removal of false positives. Current passive monitoring data collection systems yield large volumes of acoustic data, therefore a manual classification approach becomes very time-consuming and impractical. This paper focuses on developing a multi-stage automatic classifier for beaked whale species. The proposed method utilizes unsupervised machine clustering of signal attributes extracted from potential detection events flagged by an energy-band detector. The proposed algorithm was benchmarked against a manually annotated workshop dataset and applied to acoustic data collected in the northern Gulf of Mexico. The algorithm classifies beaked whale species in automatic mode with minimal operator involvement only at the validation stage. When compared with the manually annotated classification dataset, the proposed method achieved a recall rate of 82.8% for Cuvier's and 77.9% for Gervais' species in automatic mode. New insights on habitat use by different species of beaked whales in the Gulf of Mexico were gained when using the species-specific classifier. The high spatial resolution acoustic monitoring results showed that the habitat preferences of two dominating beaked whale species in the Gulf of Mexico support the habitat division (ecological niche) hypothesis.
机译:被动声学监测(PAM),特别是自主平台,在监测海洋环境中监测深潜水海洋哺乳动物的许多优势提供了许多优势。可以在长持续时间和任何天气条件下连续获得相关数据。与传统的大型研究船只和空中视觉调查相比,它提供了一种具有更高检测范围的经济型解决方案,要求长时间保持专家观察员,并依赖良好的可见性和平静的海洋。因此,PAM正在成为评估人口动态趋势和深水海洋哺乳动物股票的健康的首选工具。然而,大量收集的数据需要强大的自动检测和分类算法来识别录音中的海洋哺乳动物。至于喙鲸,一个具有挑战性的自动加工目标是识别不同物种,以推动我们对海洋生态系统中的作用的理解。目前,传统的检测和分类方法在频带的频带中使用高于用户定义的信噪比阈值的声学事件,并且进一步依赖于物种分类和擦除误报的经验操作者的手动检查。目前的被动监测数据收集系统产生大量的声学数据,因此手动分类方法变得非常耗时和不切实际。本文侧重于开发一个用于喙鲸种类的多级自动分级器。所提出的方法利用来自由能量带检测器标记的潜在检测事件提取的信号属性的无监督机器聚类。该算法采用手动注释的研讨会数据集基准测试,并应用于墨西哥北部收集的声学数据。该算法在自动模式下对喙鲸种类进行分类,只有最小的操作员参与验证阶段。与手动注释的分类数据集相比,所提出的方法在自动模式下达到Cuvier的召回率为82.8%,77.9%。使用物种特异性分类器时,获得了不同种类喙鲸的栖息地使用的新见解。高空间分辨率声学监测结果表明,墨西哥湾两种主导喙鲸种类的栖息地偏好支持栖息地司(生态利基)假设。

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