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Clicks classification of sperm whale and long-finned pilot whale based on continuous wavelet transform and artificial neural network

机译:基于连续小波变换和人工神经网络的抹香鲸和长鳍鲸的点击分类

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Passive acoustic observation of whales is an increasingly important tool for whale research. Clicks are the predominant vocalizations of toothed whales, such as sperm whales and long-finned pilot whales. Classifying clicks of sperm whales and long-funned pilot whales is an essential task for the passive acoustic observation of the two whale species, especially in the case that both whale species vocalize in the same observed area. In this paper, we proposed a method performing the automated classification of clicks produced by sperm whales and long-finned pilot whales. First, the two types of whales' original sounds were denoised using a wavelet denoising method. Then, a dual-threshold endpoint detection algorithm was utilized to detect and pick out all clicks from the denoised sounds. The continuous wavelet transform was applied to decompose the picked clicks, and a wavelet coefficient matrix can be obtained for each picked click. Focusing on the energy distribution and duration difference between the two types of whales' clicks, we proposed a feature-vector extraction algorithm based on the wavelet coefficient matrix. For each picked click, scale (frequency) features and time feature were obtained respectively and they were used to form the feature vector. Finally, a back propagation (BP) neural network was designed as a classifier of feature-vector to output final classification result. The experiment results show the proposed method can obtain high classification performances. The effect of training dataset size, and the number of training features on the classification performance was also examined in the experiments.
机译:鲸鱼的被动声学观察是鲸鱼研究中越来越重要的工具。点击是齿状鲸的主要发声,例如抹香鲸和长鳍鲸。对抹香鲸和长期繁殖的鲸鱼的喀哒声进行分类是对两种鲸鱼进行被动声学观察的一项重要任务,尤其是在两种鲸鱼都在同一观察区域发声的情况下。在本文中,我们提出了一种对抹香鲸和长鳍虎鲸产生的点击进行自动分类的方法。首先,使用小波降噪方法对两种鲸鱼的原始声音进行降噪。然后,采用双阈值端点检测算法来检测并从降噪的声音中挑选出所有喀哒声。应用连续小波变换来分解选择的点击,并且可以为每个选择的点击获得小波系数矩阵。针对两种鲸鱼点击的能量分布和持续时间差异,提出了一种基于小波系数矩阵的特征向量提取算法。对于每次选择的点击,分别获得比例(频率)特征和时间特征,并将它们用于形成特征向量。最后,设计了反向传播(BP)神经网络作为特征向量的分类器,以输出最终的分类结果。实验结果表明,该方法具有较高的分类性能。实验中还检查了训练数据集大小以及训练特征数量对分类性能的影响。

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