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Feature set comparison for automatic bird species identification

机译:用于自动鸟类识别的功能集比较

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This paper deals with the automated bird species identification problem, in which it is necessary to identify the species of a bird from its audio recorded song. This is a clever way to monitor biodiversity in ecosystems, since it is an indirect non-invasive way of evaluation. Different features sets which summarize in different aspects the audio properties of the audio signal are evaluated in this paper together with machine learning algorithms, such as probabilistic, instance-based, decision trees, neural networks and support vector machines. Experiments are conducted in a dataset of recorded songs of three bird species. The experimental results compare the performance of the features sets and different classifiers showing that it is possible to obtain very promising results in the automated bird species identification problem.
机译:本文讨论了鸟类自动识别问题,其中有必要从音频录音中识别鸟类的种类。这是一种监测生态系统中生物多样性的聪明方法,因为它是一种间接的非侵入性评估方法。本文在不同方面总结了音频信号的音频属性的不同特征集,并结合了机器学习算法(例如概率,基于实例,决策树,神经网络和支持向量机)进行了评估。实验是在记录的三种鸟类的歌曲的数据集中进行的。实验结果比较了特征集和不同分类器的性能,表明可以在鸟类自动识别问题中获得非常有希望的结果。

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