Non-invasive non-contact based affective state identification

A. S. Ghazali, S. N. Sidek
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引用次数: 4

Abstract

This paper discusses a study on detecting affective states of human subjects from their body's electromagnetic (EM) wave. In particular, the affective states under investigation are happy, nervous, and sad which play important roles in Human-Robot Interaction (HRI) applications. A structured experimental setup was designed to invoke the desired affective states. These states are induced by exposing the subject to a specific set of audiovisual stimulations upon which the EM waves are captured from ten different regions of the subject's body by using a handheld device called Resonant Field Imaging (RFI™). Nine subjects are randomly chosen and the collected data are then preprocessed and trained by Bayesian Network (BN) to map the EM wave to the corresponding affective states. Preliminary results demonstrate the ability of the BN to predict human affective state with 80.6% precision, and 90% accuracy.
基于非侵入性非接触的情感状态识别
本文讨论了利用人体电磁波检测人体情感状态的研究。研究的情感状态主要是快乐、紧张和悲伤,它们在人机交互(HRI)应用中起着重要的作用。设计了一个结构化的实验设置来调用所需的情感状态。这些状态是通过将受试者暴露于一组特定的视听刺激来诱导的,在这些刺激上,使用一种称为共振场成像(RFI™)的手持设备从受试者身体的十个不同区域捕获电磁波。随机选取9名受试者,对采集的数据进行预处理和贝叶斯网络(BN)训练,将电磁波映射到相应的情感状态。初步结果表明,该网络预测人类情感状态的准确率为80.6%,准确率为90%。
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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