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首页> 外文期刊>ICES Journal of Marine Science >Kernel methods for the detection and classification of fish schools in single-beam and multibeam acoustic data
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Kernel methods for the detection and classification of fish schools in single-beam and multibeam acoustic data

机译:单束和多束声数据中鱼群检测和分类的核方法

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摘要

A kernel method for clustering acoustic data from single-beam echosounder and multibeam sonar is presented. The algorithm is used to detect fish schools and to classify acoustic data into clusters of similar acoustic properties. In a preprocessing routine, data from single-beam echosounder and multibeam sonar are transformed into an abstracted representation by multidimensional nodes, which are datapoints with spatial, temporal, and acoustic features as components. Kernel methods combine these components to determine clusters based on joint spatial, temporal, and acoustic similarities. These clusters yield a classification of the data in groups of similar nodes. Including the spatial components results in clusters for each school and effectively detects fish schools. Ignoring the spatial components yields a classification according to acoustic similarities, corresponding to classes of different species or age groups. The method is described and two case studies are presented.
机译:提出了一种基于单波束回声测深和多波束声纳的声数据聚类的核方法。该算法用于检测鱼群并将声学数据分类为具有相似声学特性的簇。在预处理例程中,来自单波束回声测深仪和多波束声纳的数据由多维节点转换为抽象表示,多维节点是具有空间,时间和声学特征的数据点。内核方法将这些组件组合在一起,以根据联合的空间,时间和声学相似性确定聚类。这些群集将数据分类为相似节点的组。包括空间成分,就可以为每所学校建立集群,并有效地检测出鱼类学校。忽略空间成分会根据声学相似性进行分类,对应于不同物种或年龄组的类别。描述了该方法,并介绍了两个案例研究。

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