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首页> 外文期刊>Journal of mechanics in medicine and biology >AUTOMATIC HUMAN STRESS DETECTION BASED ON WEBCAM PHOTOPLETHYSMOGRAPHIC SIGNALS
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AUTOMATIC HUMAN STRESS DETECTION BASED ON WEBCAM PHOTOPLETHYSMOGRAPHIC SIGNALS

机译:基于WEBCAM光电人体摄影信号的自动人体压力检测

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One of the goals of affective computing field is to provide to computers the ability to recognize automatically the affective state of the user in order to have more intuitive human-machine communication. This paper aims to detect automatically the stress user when he is interacting with computer. The developed systemis based on instantaneous pulse rate (PR) signal extracted from imaging photoplethysmography (PPG). Seven features from time and frequency domain are extracted from PR signal and processed by learning pattern recognition systems. Two methods based on Support Vector Machine (SVM) and Linear Discriminant Analysis (LDA) are used and compared to classify the user's emotional state. A computer application based on "Stroop color word Test" is developed to elicit emotional stress in the subject. The proposed method can achieve the overall average classification accuracy of 94.42% and 91.10% with SVM and LDA, respectively. Current results indicate that our approach is effective for stress classification.
机译:情感计算领域的目标之一是为计算机提供自动识别用户情感状态的能力,以便进行更直观的人机通信。本文旨在自动检测压力用户与计算机交互时的压力。开发的系统基于从成像光电容积描记术(PPG)提取的瞬时脉搏率(PR)信号。从PR信号中提取来自时域和频域的七个特征,并通过学习模式识别系统进行处理。使用两种基于支持向量机(SVM)和线性判别分析(LDA)的方法进行比较,以对用户的情绪状态进行分类。开发了一种基于“ Stroop颜色单词测试”的计算机应用程序,以引起对象的情绪压力。所提方法在支持向量机和LDA的支持下,总体平均分类准确率分别达到94.42%和91.10%。当前结果表明我们的方法对于应力分类是有效的。

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