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Multiple-Instance Multiple-Label Learning for the Classification of Frog Calls with Acoustic Event Detection

机译:带有声音事件检测的青蛙呼叫分类的多实例多标签学习

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Frog call classification has received increasing attention due to its importance for ecosystem. Traditionally, the classification of frog calls is solved by means of the single-instance single-label classification classifier. However, since different frog species tend to call simultaneously, classifying frog calls becomes a multiple-instance multiple-label learning problem. In this paper, we propose a novel method for the classification of frog species using multiple-instance multiple-label (MIML) classifiers. To be specific, continuous recordings are first segmented into audio clips (10 s). For each audio clip, acoustic event detection is used to segment frog syllables. Then, three feature sets are extracted from each syllable: mask descriptor, profile statistics, and the combination of mask descriptor and profile statistics. Next, a bag generator is applied to those extracted features. Finally, three MIML classifiers, MIML-SVM, MIML-RBF, and MIML-kNN, are employed for tagging each audio clip with different frog species. Experimental results show that our proposed method can achieve high accuracy (81.8% true positiveegatives) for frog call classification.
机译:蛙叫分类因其对生态系统的重要性而受到越来越多的关注。传统上,青蛙呼叫的分类是通过单实例单标签分类器来解决的。但是,由于不同的青蛙种类倾向于同时调用,因此对青蛙的调用进行分类成为多实例多标签学习问题。在本文中,我们提出了一种使用多实例多标签(MIML)分类器对青蛙物种进行分类的新方法。具体而言,首先将连续录制分为音频剪辑(10 s)。对于每个音频剪辑,使用声音事件检测来分割青蛙音节。然后,从每个音节中提取三个特征集:掩码描述符,配置文件统计信息以及掩码描述符和配置文件统计信息的组合。接下来,将bag generator应用于这些提取的特征。最后,使用三个MIML分类器MIML-SVM,MIML-RBF和MIML-kNN为每个音频剪辑添加不同的青蛙种类。实验结果表明,本文提出的方法在蛙叫分类中可以达到较高的准确率(真阳性/阴性率为81.8%)。

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