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Development of a statistical model to classify driving stress levels using galvanic skin responses

机译:使用电镀皮肤反应来分类驾驶应力水平的统计模型的发展

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Many studies have demonstrated the strong relationships between physiological responses and driving stress, but they have done little to build a model that could be used to identify a driver's stress accurately in real time. The objective of this study is to develop a model that accurately classifies driving stress by monitoring physiological responses-specifically galvanic skin response (GSR). GSR data were collected from nine drivers with licenses obtained in the US in real road driving situations with two stress conditions-rest period (low stress) and highway or city driving (high stress). The validation drive was performed by one driver with licenses obtained in South Korea in real long-term road driving situations with two stress conditions-rural area (low stress) and highway or highway under construction (high stress). Those two conditions were used to build a binary logistic regression model to classify low stress or high stress based on a driver's measured hand GSR. The overall classification accuracy of the developed model was found to be 85.3%, and the accuracy of cross validation, with a testing dataset, was found to be 83.2%. A simple logit model was developed to identify drivers' stress by incorporating their GSR data. The developed model can be embedded in a wearable device equipped with GSR sensors for drivers to detect their stress level in real time.
机译:许多研究已经证明了生理反应和驾驶压力之间的强烈关系,但它们已经很少建立一个可用于实时准确地识别驾驶员压力的模型。本研究的目的是开发一种模型,可以通过监测生理反应 - 特异性电压皮肤响应(GSR)来准确地对驾驶压力进行准确地进行分类。 GSR数据由九个驱动程序收集,其中在美国获得的许可证在真正的道路驾驶情况下,具有两个压力条件 - 休息期(低应力)和公路或城市驾驶(高应力)。验证驱动器由一个驾驶员在韩国获得的许可证,实际长期道路驾驶情况,具有两个压力条件 - 农村地区(低应力)和高速公路或高速公路(高应力)。这两个条件用于构建二元逻辑回归模型,以基于驾驶员测量的手机GSR对低应力或高应力进行分类。发现开发模型的整体分类准确性为85.3%,并且发现数据集的交叉验证的准确性为83.2%。开发了一个简单的Logit模型,通过结合其GSR数据来识别驱动程序的压力。开发的模型可以嵌入一个配备有GSR传感器的可穿戴设备,用于驱动器实时检测其应力水平。

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