作者
Omar AlZoubi, Davide Fossati, Sidney D'mello, Rafael A Calvo
发表日期
2013/12/4
研讨会论文
2013 12th international conference on machine learning and applications
卷号
1
页码范围
240-245
出版商
IEEE
简介
Affect detection from physiological signals has received a great deal of attention recently. One arising challenge is that physiological measures are expected to exhibit considerable variations or non-stationarities over multiple days/sessions recordings. These variations pose challenges to effectively classify affective sates from future physiological data. The present study collects affective physiological data (electrocardiogram (ECG), electromyogram (EMG), skin conductivity (SC), and respiration (RSP)) from four participants over five sessions each. The study provides insights on how diagnostic physiological features of affect change over time. We compare the classification performance of two feature sets, pooled features (obtained from pooled day data) and day-specific features using an up datable classifier ensemble algorithm. The study also provides an analysis on the performance of individual physiological …
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O AlZoubi, D Fossati, S D'mello, RA Calvo - 2013 12th international conference on machine …, 2013