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Marine Mammal Species Classification Using Convolutional Neural Networks and a Novel Acoustic Representation

机译:利用卷积神经网络和新型声学表示对海洋哺乳动物进行分类

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Research into automated systems for detecting and classifying marine mammals in acoustic recordings is expanding internationally due to the necessity to analyze large collections of data for conservation purposes. In this work, we present a Convolutional Neural Network that is capable of classifying the vocalizations of three species of whales, non-biological sources of noise, and a fifth class pertaining to ambient noise. In this way, the classifier is capable of detecting the presence and absence of whale vocalizations in an acoustic recording. Through transfer learning, we show that the classifier is capable of learning high-level representations and can generalize to additional species. We also propose a novel representation of acoustic signals that builds upon the commonly used spectrogram representation by way of interpolating and stacking multiple spectrograms produced using different Short-time Fourier Transform (STFT) parameters. The proposed representation is particularly effective for the task of marine mammal species classification where the acoustic events we are attempting to classify are sensitive to the parameters of the STFT.
机译:由于有必要出于保护目的而对大量数据进行分析,因此对声记录中的海洋哺乳动物进行检测和分类的自动化系统的研究正在国际范围内扩展。在这项工作中,我们提出了一个卷积神经网络,该网络能够对三种鲸鱼,非生物噪声源和与环境噪声有关的第五类的发声进行分类。以此方式,分类器能够检测声学记录中鲸鱼发声的存在与否。通过转移学习,我们证明了分类器能够学习高级表示,并且可以推广到其他物种。我们还提出了一种新颖的声音信号表示方法,它通过对使用不同的短时傅立叶变换(STFT)参数产生的多个频谱图进行插值和叠加,在常用的频谱图表示形式上进行构建。拟议的表示形式对于海洋哺乳动物物种分类任务特别有效,因为我们尝试分类的声音事件对STFT的参数敏感。

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