Classification of Infant Behavioural Traits using Acoustic Cry: An Empirical Study

S. Jindal, K. Nathwani, V. Abrol
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引用次数: 3

Abstract

The reason behind an infant's cry has been elusive to sometimes even the most skilled and experienced paediatricians. Our comprehensive research aims to classify infant's cry into their behavioural traits using objective and analytical machine learning approaches. Towards this goal, we compare conventional machine learning and more recent deep learning-based models for baby cry classification, using acoustic features, spectrograms, and a combination of the two. We performed a detailed empirical study on the publicly available donateacry-corpus and the CRIED dataset to highlight the effectiveness of appropriate acoustic features, signal processing, or machine learning techniques for this task. We also conclude that acoustic features and spectrograms together bring better results. As a side result, this work also emphasized the challenge of an inadequate baby cry database in modelling infant behavioural traits.
声音哭声对婴儿行为特征分类的实证研究
婴儿哭泣背后的原因有时连最熟练、最有经验的儿科医生都难以捉摸。我们的综合研究旨在使用客观和分析的机器学习方法将婴儿的哭声分类为他们的行为特征。为了实现这一目标,我们比较了传统的机器学习和最近基于深度学习的婴儿哭声分类模型,使用声学特征、频谱图以及两者的结合。我们对公开可用的donateactry语料库和哭泣数据集进行了详细的实证研究,以突出适当的声学特征、信号处理或机器学习技术在此任务中的有效性。我们还得出结论,声学特征和频谱图相结合可以带来更好的结果。作为附带结果,这项工作还强调了在模拟婴儿行为特征方面婴儿哭声数据库不足的挑战。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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