基于时频域特征的猫品种声学分类

William Raccagni, S. Ntalampiras
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引用次数: 4

摘要

生物声学这一新兴领域最近一直在进行重要的研究活动,由于使用了机器学习方法,已经建立了几种工具和方法来识别动物发声中的某些模式和含义。由于生理原因和不同的情绪状态和需求,同一物种的不同品种之间产生的动物声音的强度和模式会随着时间的推移而变化。宠物,如狗和猫,也不例外,因此允许品种之间的声音区分。本文基于公共音频数据集“CatMeows”研究猫的品种分类,特别是缅因浣熊和欧洲短毛猫品种。为此,我们利用来自时域和频域的特征来捕获有关当前音频结构的相关信息。随后,通过k-均值聚类、k-NN和多层感知器学习模型进行音频模式识别。经过大量的实验,我们得到了非常有希望的结果,平均准确率在98%左右。特别是,时域特征表现出很强的贡献,如使用k-means的结果所示。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Acoustic Classification of Cat Breed Based on Time and Frequency Domain Features
The emerging field of Bioacoustics has been presenting significant research activity lately, and thanks to the use of machine learning methods, several tools and methodologies have been established for identifying certain patterns and meanings in animal vocalizations. Animal sounds can vary over time in intensity and patterns produced between different breeds of the same species, both for physiological reasons and for different emotional states and needs. Pets, such as dogs and cats, are no exception, thus allowing a vocal distinction between breeds. This article studies classification of the cat breed, in particular on the Maine Coon and European Shorthair breed, based on the public audio dataset “CatMeows”. To this end, we employed features coming from time and frequency domain capturing relevant information as regard to the present audio structure. Subsequently, audio pattern recognition was carried out by means of k-means clustering, k-NN, and multilayer perceptron learning models. After extensive experiments, we obtained very promising results, with an average accuracy that runs around 98 %. In particular, time-domain features presented a strong contribution, as demonstrated by the results using k-means.
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