利用心电和呼吸信号分析汽车驾驶员应激反应的生理信号

Karthik Soman, V. Alex, C. Srinivas
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引用次数: 22

摘要

本文分析了一个人的生理信号的变化与他/她的压力有关。研究人员利用汽车司机的心电图和呼吸信号进行分析,这些司机被要求在不同的道路条件下驾驶,以获得不同的压力水平。作为分析的一部分,我们从上述生理信号中提取了两个特征信号。QRS功率谱和呼吸频率是从上述生理信号中提取的两个特征信号。以心率作为标记信号,分析提取的生理特征信号的变化情况。特征信号相对于应力的变化用相关系数表示,并制成表格。分析清楚地显示了特征信号随驾驶员压力的变化。它显示了QRS功率和呼吸频率与驾驶员压力成正比的关系。分析还表明,QRS功率信号与心率标记信号的相关性更强,是分析应激的较好特征信号。分析指出,生理信号可以作为一个指标来监测一个人的压力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analysis of physiological signals in response to stress using ECG and respiratory signals of automobile drivers
This paper gives an analysis of variation of the physiological signals of a person with respect to the stress developed within him/her. The analysis was done using ECG and respiratory signals acquired from the automobile drivers who were made to drive on different road conditions to get different stress levels. As a part of analysis, we extracted two feature signals from the above said physiological signals. QRS power spectrum and the breathing rate were the two feature signals that were extracted from the mentioned physiological signals. Heart rate was used as the marker signal for analyzing the variations in the extracted physiological feature signals. The variations in the feature signals with respect to the stress were expressed in terms of correlation coefficients and were tabulated. The analysis clearly showed the changes in the feature signals with respect to the stress of the driver. It showed a direct proportionate relation in the QRS power and the breathing rate with respect to the stress of the driver. The analysis also showed that QRS power signal is a better feature signal for analyzing the stress since it showed more correlation with the heart rate marker signal. The analysis points out the fact that the physiological signals can be used as a metric for monitoring the stress of a person.
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