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Physiological Signals Based Fatigue Prediction Model for Motion Sensing Games

机译:基于生理信号的运动感应游戏疲劳预测模型

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We present a fatigue prediction model for motion sensing games, dependent on the change of physiological signals including blood volume pulse, skin conductance, respiration, skin temperature and electromyography (EMG). After extracting a range of features followed by using sequential floating forward selection (SFFS) to select features, support vector regression (SVR) was used to construct our prediction model that can predict how long participants enter fatigue states. The root mean square error (RMSE) and the relative root square error (RRSE) of our model are respectively 198.36s and 0.51 for subject-dependent, and 522.94s and 0.97 for subject-independent. The results indicate each subject has individualized physiological pattern when they felt fatigue.
机译:我们提出了一种用于运动感应游戏的疲劳预测模型,该模型取决于生理信号的变化,包括血容量脉冲,皮肤电导,呼吸作用,皮肤温度和肌电图(EMG)。提取一系列特征后,使用顺序浮点前向选择(SFFS)选择特征,然后使用支持向量回归(SVR)构建我们的预测模型,该模型可以预测参与者进入疲劳状态的时间。我们模型的均方根误差(RMSE)和相对均方根误差(RRSE)对于受测者而言分别为198.36s和0.51,对于非受测者而言分别为522.94s和0.97。结果表明,每个受试者在感到疲劳时都有各自的生理模式。

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