Turesson Hjalmar K, Ribeiro Sidarta, Pereira Danillo R, Papa João P, de Albuquerque Victor Hugo C
Instituto do Cérebro, Universidade Federal do Rio Grande do Norte, Natal, Brazil.
Departamento de Computação, Universidade Estadual Paulista "Júlio de Mesquita Filho", Bauru, São Paulo, Brazil.
PLoS One. 2016 Sep 21;11(9):e0163041. doi: 10.1371/journal.pone.0163041. eCollection 2016.
Automatic classification of vocalization type could potentially become a useful tool for acoustic the monitoring of captive colonies of highly vocal primates. However, for classification to be useful in practice, a reliable algorithm that can be successfully trained on small datasets is necessary. In this work, we consider seven different classification algorithms with the goal of finding a robust classifier that can be successfully trained on small datasets. We found good classification performance (accuracy > 0.83 and F1-score > 0.84) using the Optimum Path Forest classifier. Dataset and algorithms are made publicly available.
发声类型的自动分类有可能成为对高度发声的灵长类动物圈养群体进行声学监测的有用工具。然而,为了使分类在实际中有用,需要一种能够在小数据集上成功训练的可靠算法。在这项工作中,我们考虑了七种不同的分类算法,目标是找到一种能够在小数据集上成功训练的强大分类器。我们使用最优路径森林分类器获得了良好的分类性能(准确率>0.83,F1分数>0.84)。数据集和算法已公开提供。