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Marine mammal sound classification based on a parallel recognition model and octave analysis

机译:基于并行识别模型和倍频程分析的海洋哺乳动物声音分类

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摘要

The ocean is full of a variety of sounds from natural, biological or anthropogenic sources. Listening to the animals sounds allows scientists to detect, identify, and locate different endangered species as well as listening to high intensity anthropogenic sources, which could harm the marine ecosystem. In this work, a new computational model for marine mammals classification is presented and validated with data from an online database. The feature extraction is performed using 116 octave analysis and the classification is carried out based on an independent ensemble methodology, where the outputs of four parallel feed forward neural networks are combined to classify eleven possible classes (seven marine mammals plus four additional classes). Unlike similar works, this paper considers multiple sounds emitted by each species such as whistles, calls and squeaks. The model demonstrated favorable performance reaching a classification rate of 90% at a low computational cost. (C) 2016 Elsevier Ltd. All rights reserved.
机译:海洋充满了来自自然,生物或人为来源的各种声音。听动物发出的声音使科学家能够检测,识别和定位不同的濒危物种,以及聆听可能损害海洋生态系统的高强度人为来源。在这项工作中,提出了一种新的海洋哺乳动物分类计算模型,并用在线数据库中的数据进行了验证。使用116倍频程分析执行特征提取,并基于独立的集成方法进行分类,其中将四个并行前馈神经网络的输出进行组合,以对11种可能的类别进行分类(7种海洋哺乳动物加上4种其他类别)。与类似的作品不同,本文考虑了每种物种发出的多种声音,例如口哨声,啸叫声和吱吱声。该模型显示出良好的性能,以较低的计算成本达到了90%的分类率。 (C)2016 Elsevier Ltd.保留所有权利。

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