基于时频纹理的鸟类鸣叫自动识别

Sha-Sha Chen, Ying Li
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引用次数: 10

摘要

本文提出了一种自动识别鸟类叫声的方法,该方法首先将鸟类叫声转换成声谱图,然后从声谱图中提取纹理特征。该方法的灵感来自于一项发现,即不同鸟类的声谱图呈现出不同的纹理,并且可以很容易地相互区分。特别是,我们通过将鸟类鸣叫分割成一系列音节来进行局部纹理特征提取,由于鸟类发声的高度可变性,该方法已被证明是非常有效的。最后,采用基于决策树的集成分类器随机森林对鸟类进行分类。10种鸟类的平均识别率为96.5%,优于著名的MFCC特征。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic Recognition of Bird Songs Using Time-Frequency Texture
This paper presents a new approach for identifying birds automatically from their sounds, which first converts the bird songs into spectrograms and then extracts texture features from this visual time-frequency representation. The approach is inspired by the finding that spectrograms of different birds present distinct textures and can be easily distinguished from one another. In particular, we perform a local texture feature extraction by segmenting the bird songs into a series of syllables, which has been proved to be quite effective due to the high variability found in bird vocalizations. Finally, Random Forests, an ensemble classifier based on decision tree, is used to classify bird species. The average recognition rate is 96.5% for 10 kinds of bird species, outperforming the well-known MFCC features.
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