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Classification of cognitive load using voice features: A preliminary investigation

机译:使用语音特征对认知负荷进行分类的初步研究

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Cognitive load classification has seen a boost in popularity lately among the speech analysis community. A number of handmade feature based methods and purely machine learning based methods were presented in the last few years, all trained on a small number of established datasets. This paper presents results of several machine learning methods used on an original dataset of voice samples from a preliminary pilot study into effects of cognitive load. Basic arithmetic problems were presented to the participants with instructions to answer them verbally. Acoustic voice features were extracted from the recorded utterances and modelled using methods like Support Vector Machines and Neural Networks. The accuracies of classification are presented over several conditions for a binary classification task (low cognitive load vs. high cognitive load). The viability of the basic arithmetic task as a dataset for cognitive load classification is discussed. Lessons learned during the analysis are also discussed and present a basis for a stronger experiment design using basic arithmetic tasks in the future.
机译:最近,在语音分析社区中,认知负荷分类已得到普及。在过去的几年中,提出了许多基于手工特征的方法和基于纯机器学习的方法,所有这些方法都在少数已建立的数据集上进行了训练。本文介绍了对语音样本的原始数据集使用的几种机器学习方法的结果,这些方法来自对认知负荷影响的初步试验研究。向参与者介绍了基本的算术问题,并给出了口头回答的说明。从记录的语音中提取语音特征,并使用支持向量机和神经网络等方法进行建模。分类的准确性是针对二进制分类任务的几种条件(低认知负荷与高认知负荷)给出的。讨论了基本算术任务作为认知负荷分类数据集的可行性。还讨论了在分析过程中获得的经验教训,并为将来使用基本算术任务进行更强大的实验设计奠定了基础。

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