基于特征库的海洋物种声学识别

Rolf J. Korneliussen , Yngve Heggelund , Gavin J. Macaulay , Daniel Patel , Espen Johnsen , Inge K. Eliassen
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引用次数: 85

摘要

声纳和回声探测仪被广泛用于海洋环境中的生物遥感。目前需要使海洋物种的声学识别更加正确和客观,从而减少声学丰度估计的不确定性。在我们的工作中,多频回声测深仪的数据与几乎相同和重叠的声波束同时工作,通过大规模测量系统软件(LSSS)以模块化顺序逐步处理,以改进数据,检测学校和分类声学目标。分类基于声学特征库的使用,声学特征库的主要成分是相对频率响应。分类结果转化为物种的声丰度。该方法在巴伦支海、挪威海和北海的声学数据上进行了测试,目标物种分别是毛鳞鱼(Mallotus villosus L.)、大西洋鲭鱼(Scomber scombrus L.)和沙鳗(Ammodytes marinus L.)。在所有调查中,手工分类与自动分类的符合性较高,特别是对学校。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Acoustic identification of marine species using a feature library

Acoustic identification of marine species using a feature library

Sonars and echosounders are widely used for remote sensing of life in the marine environment. There is an ongoing need to make the acoustic identification of marine species more correct and objective and thereby reduce the uncertainty of acoustic abundance estimates. In our work, data from multi-frequency echosounders working simultaneously with nearly identical and overlapping acoustic beams are processed stepwise in a modular sequence to improve data, detect schools and categorize acoustic targets by means of the Large Scale Survey System software (LSSS). Categorization is based on the use of an acoustic feature library whose main components are the relative frequency responses. The results of the categorization are translated into acoustic abundance of species. The method is tested on acoustic data from the Barents Sea, the Norwegian Sea and the North Sea, where the target species were capelin (Mallotus villosus L.), Atlantic mackerel (Scomber scombrus L.) and sandeel (Ammodytes marinus L.), respectively. Manual categorization showed a high conformity with automatic categorization for all surveys, especially for schools.

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