北极海洋哺乳动物发声自动分类方法比较

X. Mouy, D. Leary, B. Martin, M. Laurinolli
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引用次数: 5

摘要

2007年夏天,JASCO应用科学公司为壳牌海洋公司提供了声学数据收集服务,以支持他们在Chukchi和Beaufort海的勘探。总共部署了37套海底水听器数据记录系统,数据集超过5tb。这个数据相当于5年的连续录音。这项活动提供了海洋哺乳动物迁徙路线的信息,其中包括弓头鲸、白鲸、座头鲸、灰鲸和海象。由于数据量大,对录音进行人工分析是不可行的。一种在合理时间内自动检测和分类海洋哺乳动物发声的方法势在必行。该处理分为几个步骤,(1)能量事件的检测,(2)特征提取,(3)分类到物种变化中。本文将高斯混合模型(GMM)算法与两种不同特征提取算法(倒谱系数和小波)的属性相结合进行分类。这些不同算法的组合使用分类操作特征(COC)曲线对每个测试物种进行比较。本文在一个大型训练数据集上比较了这些算法及其参数的性能。
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A comparison of methods for the automatic classification of marine mammal vocalizations in the Arctic
JASCO Applied Sciences provided acoustic data collection services to Shell Offshore Incorporated in support of their explorations of the Chukchi and Beaufort Seas during the summer of 2007. A total of 37 ocean bottom hydrophones data recording systems were deployed resulting in a data set in excess of 5 TB. This data equates to almost 5 years of continuous sound recording. This campaign provided information on the migration routes of the marine mammals, which include bowhead, beluga, humpback, gray whales and walruses. Given the large amount of data, manual analysis of the recordings was not feasible. A method to detect and classify the marine mammal vocalizations automatically in a reasonable amount of time had to be developed. The processing is structured in several steps, (1.) the detection of energy events, (2.) the feature extraction, and (3.) the classification into a species variety. This paper focuses on combining the Gaussian mixed models (GMM) algorithm for classification with attributes taken from two different feature extraction algorithms: cepstral coefficients and wavelets. Combinations of these different algorithms are compared using classification operating characteristic (COC) curves for each species tested. This paper compares the performance of these algorithms and their parameters against a large training data set.
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