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Unsupervised blue whale call detection using multiple time-frequency features

机译:使用多个时频功能的无监督蓝鲸呼叫检测

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In the context of bio-acoustic sciences, call detection is a critical task for understanding the behaviour of marine mammals such as the blue whale species (Balaeonoptera musculus) considered in this work. In this paper we present an approach to blue whale call detection from an unsupervised perspective. To achieve this, we use temporal and spectral features of audio acquired with a marine autonomous recording unit. The features considered are 46-dimensional and include the mel frequency ceptrum coefficients, chromagrams, and other scalar quantities; these features were then grouped via two different clustering algorithms. Our findings confirm the suitability of the proposed approach for isolating blue whale calls from other environmental sounds (as validated by a bio-acoustic specialist). This is a clear contribution for the annotation of blue whales calls, where the search for calls can now be performed by analysing the clusters identified instead of the entire recordings, thus saving time and effort for practitioners in bio-acoustics.
机译:在生物声学科学的背景下,呼叫检测是理解这项工作中所考虑的诸如蓝鲸物种(Balaeonoptera musculus)等海洋哺乳动物行为的关键任务。在本文中,我们从无监督的角度提出了一种蓝鲸呼叫检测的方法。为了实现这一点,我们使用了通过海洋自主记录单元获取的音频的时间和频谱特征。所考虑的特征是46维的,包括梅尔频率感知系数,色谱图和其他标量。然后,通过两种不同的聚类算法对这些功能进行分组。我们的发现证实了所提出的方法与其他环境声音隔离蓝鲸的声音的适用性(经生物声学专家的验证)。这是对蓝鲸鸣叫的明显贡献,现在可以通过分析识别出的簇而不是整个录音来进行鸣叫搜索,从而为生物声学从业者节省了时间和精力。

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