Scripps Institution of Oceanography, University of California, San Diego, La Jolla, California 92037, USA.
National Marine Sanctuary Foundation-Contracted, Silver Spring, Maryland 20910, USA.
J Acoust Soc Am. 2023 Mar;153(3):1710. doi: 10.1121/10.0017432.
Marine soundscapes provide the opportunity to non-invasively learn about, monitor, and conserve ecosystems. Some fishes produce sound in chorus, often in association with mating, and there is much to learn about fish choruses and the species producing them. Manually analyzing years of acoustic data is increasingly unfeasible, and is especially challenging with fish chorus, as multiple fish choruses can co-occur in time and frequency and can overlap with vessel noise and other transient sounds. This study proposes an unsupervised automated method, called SoundScape Learning (SSL), to separate fish chorus from soundscape using an integrated technique that makes use of randomized robust principal component analysis (RRPCA), unsupervised clustering, and a neural network. SSL was applied to 14 recording locations off southern and central California and was able to detect a single fish chorus of interest in 5.3 yrs of acoustically diverse soundscapes. Through application of SSL, the chorus of interest was found to be nocturnal, increased in intensity at sunset and sunrise, and was seasonally present from late Spring to late Fall. Further application of SSL will improve understanding of fish behavior, essential habitat, species distribution, and potential human and climate change impacts, and thus allow for protection of vulnerable fish species.
海洋声景观为非侵入式地了解、监测和保护生态系统提供了机会。一些鱼类会成群地发出声音,通常与交配有关,因此有很多关于鱼类合唱以及产生这些声音的物种的知识有待了解。人工分析多年的声学数据越来越不可行,尤其是在鱼类合唱方面,因为多个鱼类合唱可能同时发生在时间和频率上,并且可能与船只噪音和其他瞬态声音重叠。本研究提出了一种名为 SoundScape Learning (SSL) 的无监督自动方法,该方法使用集成技术从声景中分离出鱼类合唱,该技术利用随机鲁棒主成分分析 (RRPCA)、无监督聚类和神经网络。SSL 应用于加利福尼亚南部和中部的 14 个记录地点,并能够在 5.3 年声学多样的声景中检测到一个单一的感兴趣的鱼类合唱。通过应用 SSL,发现感兴趣的合唱是夜间的,在日落和日出时强度增加,并且从春季末到秋季末季节性存在。进一步应用 SSL 将提高对鱼类行为、重要栖息地、物种分布以及潜在的人类和气候变化影响的理解,从而能够保护脆弱的鱼类物种。