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A wavelet based time-frequency descriptor for automatic classification of acoustic signals of fishes

机译:基于小波的时频描述符,用于鱼的声信号自动分类

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Fishes are capable of emitting sounds for diverse purposes, which can be recorded through microphone sensors. This work aims to develop a methodology for automatic classification of fishes through their acoustic signals by applying pattern recognition techniques. Fish sounds are preprocessed and segmented automatically to extract each call. These calls are parametrized using local wavelet acoustic pattern (LWAP) and approximation coefficients obtained using wavelet decomposition, to yield useful information for classification. Three machine learning algorithms: discriminant analysis (DA), k- nearest neighbors (k-NN) and support vector machines (SVM) are used for the fish call identification. Syllables are identified with accuracies of 84, 89 and 56 percentages for DA, k-NN and SVM classifiers.
机译:鱼能够发出各种目的的声音,可以通过麦克风传感器记录声音。这项工作旨在开发一种通过应用模式识别技术通过声音信号将鱼自动分类的方法。鱼的声音经过预处理和自动分段以提取每个呼叫。这些调用使用局部小波声学模式(LWAP)和使用小波分解获得的近似系数进行参数化,以产生有用的分类信息。三种机器学习算法:判别分析(DA),k最近邻(k-NN)和支持向量机(SVM)用于鱼叫识别。对于DA,k-NN和SVM分类器,音节的准确度分别为84%,89%和56%。

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