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A NOVEL MULTI-CLASS SUPPORT VECTOR MACHINE CLASSIFIER FOR AUTOMATED CLASSIFICATION OF BEAKED WHALES AND OTHER SMALL ODONTOCETES

机译:一种新的多类支持向量机分类器,用于对鲸鱼鲸鱼和其他小牙齿进行自动分类

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摘要

Navy sonar has recently been implicated in several marine mammal stranding events, Beaked whales (particulaty Mesoplodon densirostris) have been the predominant species involved in a number of these standings, Monitoring and mitigating the effects of anthropogenic noise on marine mammals are active areas of research. Key to both monitoring and mitigation is the ability to automatically detect and classify animals, especially beaked whales. This paper presents a novel support vector machine based methodology for automated, species level classification of small odontocetes. The new classifier, called the class-specific support vector machine (CS-SVM), consists of multiple binary SVM's where each SVM discriminates between a class of interest and a common reference class, A main objective in the development of the CS-SVM was to realize a robust multi-class SVM whose implementation is simplex than existing multi-class SVM methods, A CS-SVM was trained to identify click vocalization from four species of odontocetes including Mesoplodon densirostris The algorithm processes time series data in a fully automated fashion first detecting and then classifying click events. Results from the application of this automated classifier to the data sets provided by the 3rd International Workshop on Detection and Classification of Marine Mammals Using Passive Acoustics are presented.
机译:海军声纳最近被卷入数次海洋哺乳动物搁浅的事件中,喙鲸(Mesoplodon densirostris)已成为许多此类动物中的主要物种。监测和减轻人为噪声对海洋哺乳动物的影响是研究的活跃领域。监控和缓解的关键是能够自动检测和分类动物(尤其是喙鲸)的能力。本文提出了一种新颖的基于支持向量机的方法,用于小齿形突科动物的物种自动分类。新的分类器称为特定类别支持向量机(CS-SVM),由多个二进制SVM组成,其中每个SVM都将关注类别和通用参考类别区分开来。CS-SVM开发的主要目标是为了实现一个健壮的多类SVM,其实现比现有的多类SVM方法更简单,对CS-SVM进行了训练,以识别包括Mesoplodon densirostris在内的4种齿形动物的点击发声。该算法首先以全自动方式处理时间序列数据。检测并分类点击事件。展示了将这种自动分类器应用于第三届使用被动声学技术对海洋哺乳动物进行检测和分类的国际研讨会提供的数据集的结果。

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