Driver stress is a major cause of car accidents and death worldwide. Furthermore, persistent stress is a health problem, contributing to hypertension and other diseases of the cardiovascular system. Stress has a measurable impact on heart and breathing rates and stress levels can be inferred from such measurements. Galvanic skin response is a common test to measure the perspiration caused by both physiological and psychological stress, as well as extreme emotions. In this paper, galvanic skin response is used to estimate the ground truth stress levels. A feature selection technique based on the minimal redundancy-maximal relevance method is then applied to multiple heart rate variability and breathing rate metrics to identify a novel and optimal combination for use in detecting stress. The support vector machine algorithm with a radial basis function kernel was used along with these features to reliably predict stress. The proposed method has achieved a high level of accuracy on the target dataset.
翻译:此外,持续压力是一个健康问题,造成心血管系统高血压和其他疾病。压力对心脏和呼吸率有可测量的影响,可以从此类测量中推断出压力水平。高温皮肤反应是测量生理和心理压力以及极端情绪造成的呼吸能力的一个常见测试。在本文中,使用高温皮肤反应来估计地面真实压力水平。然后,对多个心率变化和呼吸率衡量标准应用基于最小冗余最大关联性方法的特征选择技术,以确定用于检测压力的新颖和最佳组合。使用具有辐射功能的辅助矢量机算法和这些特征一起,可靠预测压力。拟议方法在目标数据集上实现了高度准确性。