情绪识别测量系统的初步验证

Andrea Apicella, P. Arpaia, Giovanna Mastrati, N. Moccaldi, R. Prevete
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引用次数: 1

摘要

提出了一种高可穿戴(无线、少通道、干电极)的基于EEG的价态情绪识别装置。该组件是康复4.0中实时参与评估工具的一部分。额叶、中央和枕叶的不对称被用作与情绪效价相关的众所周知的特征。通过被动观看Oasis数据集拍摄的图片,对人类受试者进行情感上的计量表征。作为计量参考,一个标准化的测试,自我评估人体模型,被利用。基于二阶多项式核的支持向量机对采集到的每2-s epoch的脑电信号进行情绪效价分类,准确率达到83.2±0.3%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Preliminary validation of a measurement system for emotion recognition
An highly-wearable (wireless, few–channels and dry electrodes) device is proposed for EEG based valence emotion recognition. The component is a part of an instrument for real time engagement assessment in rehabilitation 4.0. The frontal, central, and occipital asymmetry were used as well known features related to emotional valence. The device was metrologically characterized on human subjects emotionally elicited through passive viewing of pictures taken from Oasis data set. As metrological references, a standardized test, the Self Assessment Manikin, was exploited. A 2nd order polynomial kernel-based Support Vector Machine reached 83.2 ± 0.3% accuracy in classifying emotional valence from each 2-s epoch of EEG acquired signals.
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