Counting animals using vocalizations; a case study in dolphins

T. Akamatsu, T. Ura, H. Sugimatsu, R. Bahl, S. Behera, S. Panda, M. Khan, S. Kar, C. Kar, S. Kimura, Y. Sasaki-Yamamoto
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引用次数: 3

Abstract

Abundance estimation of marine mammals requires matching of detection of an animal or a group of animals by two independent means. A multimodal detection model using visual and acoustic cues (surfacing and phonation) that enables abundance estimation of dolphins is proposed. The method does not require a specific time window to match the cues of both means for applying mark-recapture method. The proposed model was evaluated using data obtained in field observations of Ganges River dolphins and Irrawaddy dolphins, as examples of dispersed and condensed distributions of animals, respectively. The acoustic detection probability was approximately 80 %, 20 % higher than that of visual detection for both species, regardless of the distribution of the animals in the present study sites. The abundance estimates of Ganges River dolphins and Irrawaddy dolphins fairly agreed with the numbers reported in previous monitoring studies. The single animal detection probability was smaller than that of larger cluster size, as predicted by the model and confirmed by field data. However, dense groups of Irrawaddy dolphins showed difference in cluster sizes observed by visual and acoustic methods. Lower detection probability of single clusters of this species seemed to be caused by the clumped distribution of this species.
用发声数动物;海豚的案例研究
海洋哺乳动物的丰度估计需要用两种独立的方法对单个动物或一组动物的检测结果进行匹配。提出了一种使用视觉和声学线索(水面和发声)的多模态检测模型,使海豚的丰度估计成为可能。该方法不需要特定的时间窗口来匹配两种方法的线索以应用标记-再捕获方法。该模型通过恒河海豚和伊洛瓦底江海豚的野外观测数据进行了评估,分别作为动物分散分布和密集分布的例子。无论动物在本研究地点的分布如何,两种物种的声学检测概率约为80%,比视觉检测概率高20%。恒河海豚和伊洛瓦底江海豚的丰度估计与之前监测研究报告的数量相当一致。模型预测和现场数据证实,单个动物的检测概率小于较大簇大小时的检测概率。然而,密集的伊洛瓦底江海豚群体在视觉和声学方法观察到的簇大小上存在差异。该物种的单簇检测概率较低似乎是由于该物种的块状分布造成的。
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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