基于高级描述符的家犬吠叫语境分类

Benjamín Gutiérrez-Serafín, Humberto Pérez Espinosa, J. Martínez-Miranda, I. Espinosa-Curiel
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引用次数: 0

摘要

吠叫一直是一个有争议的话题,人们从不同的角度进行了研究。虽然一些作者认为狗叫是一种非交流的声音,但其他人认为狗叫在人狗互动中起着重要作用。在采用最后一种观点的研究中,最近的一种方法是实现机器学习算法,通过评估低级描述符来对不同行为背景下的单个吠叫进行分类。然而,这些研究工作并没有包括对时间结构或其他狗发声的分析。在目前的研究中,我们提出了一种更广泛的方法,考虑到这些相关的特征,目前在分析单个银行的背景分类时没有考虑到这些特征。通过对狗叫声的长录音进行自动分割,并提取低级和高级描述符,在狗叫声的长录音中获得了有希望的上下文分类结果,其中F-measure的最大值为0.71。
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Classification of Barking Context of Domestic Dog using High-Level Descriptors
Barking has been a controversial topic that has been studied from different points of view. While some authors argue that dog barking is a noncommunicative vocalization, others believe that barking plays a significant role in the human-dog interaction. Among the studies that take the last perspective, one of the most recent methods is to implement machine learning algorithms to classify single barks in different behavioral context by evaluating low-level descriptors. However, these research works do not incorporate the analysis of temporal structure or other dog vocalizations. In the present study, we proposed a broader approach by taking into account these relevant features that are currently not considered in the analysis of single barks for the classification of the context. By implementing an automatic process that segments long recordings of dog vocalizations and extracts both low-level and high-level descriptors, promising results were obtained for the barks’ context classification from long recordings, where the highest value of F-measure was 0.71.
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