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Classification of dog barks: a machine learning approach.

机译:狗吠的分类:一种机器学习方法。

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摘要

In this study we analyzed the possible context-specific and individual-specific features of dog barks using a new machine-learning algorithm. A pool containing more than 6,000 barks, which were recorded in six different communicative situations was used as the sound sample. The algorithm's task was to learn which acoustic features of the barks, which were recorded in different contexts and from different individuals, could be distinguished from another. The program conducted this task by analyzing barks emitted in previously identified contexts by identified dogs. After the best feature set had been obtained (with which the highest identification rate was achieved), the efficiency of the algorithm was tested in a classification task in which unknown barks were analyzed. The recognition rates we found were highly above chance level: the algorithm could categorize the barks according to their recorded situation with an efficiency of 43% and with an efficiency of 52% of the barking individuals. These findings suggest that dog barks have context-specific and individual-specific acoustic features. In our opinion, this machine learning method may provide an efficient tool for analyzing acoustic data in various behavioral studies.
机译:在这项研究中,我们使用新的机器学习算法分析了犬吠的可能的特定于上下文和特定于个体的特征。包含6000多个树皮的水池用作声音样本,这些树皮是在六个不同的交流情况下记录的。该算法的任务是了解可以区分在不同环境下和不同个人中记录的树皮的哪些声学特征。该程序通过分析在先前确定的环境中被识别出的狗发出的树皮来完成这项任务。获得最佳特征集(达到最高识别率)后,在分类任务中测试了算法的效率,在该任务中分析了未知的树皮。我们发现的识别率远高于机会级别:该算法可以根据记录的树皮对树皮进行分类,效率为43%,树皮个体的效率为52%。这些发现表明,犬吠具有特定于上下文和特定于个体的声学特征。我们认为,这种机器学习方法可以为分析各种行为研究中的声学数据提供有效的工具。

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