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Non-intrusive Physiological Monitoring for Automated Stress Detection in Human-Computer Interaction

机译:人机互动中自动应力检测的非侵入性生理监测

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Affective Computing, one of the frontiers of Human-Computer Interaction studies, seeks to provide computers with the capability to react appropriately to a user's affective states. In order to achieve the required on-line assessment of those affective states, we propose to extract features from physiological signals from the user (Blood Volume Pulse, Galvanic Skin Response, Skin Temperature and Pupil Diameter), which can be processed by learning pattern recognition systems to classify the user's affective state. An initial implementation of our proposed system was set up to address the detection of "stress" states in a computer user. A computer-based "Paced Stroop Test" was designed to act as a stimulus to elicit emotional stress in the subject. Signal processing techniques were applied to the physiological signals monitored to extract features used by three learning algorithms: Naive Bayes, Decision Tree and Support Vector Machine to classify relaxed vs. stressed states.
机译:情感计算是人机交互研究的一个前沿,寻求提供具有适当反应的计算机的计算机,以适当地对用户的情感状态进行反应。为了实现那些情感国家的所需的在线评估,我们建议通过来自用户(血容量脉冲,电流皮肤响应,皮肤温度和瞳孔直径)的生理信号提取特征,这可以通过学习模式识别来处理系统分类用户的情感状态。建立了拟议系统的初步实施,以解决计算机用户中的“压力”状态的检测。基于计算机的“节奏的STROP测试”被设计为充当激发主题中的情绪压力的刺激。将信号处理技术应用于监视的生理信号,以提取三个学习算法所使用的特征:天真贝叶斯,决策树和支持向量机来分类放松与压力状态。

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