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Real-Time ECG-Based Detection of Fatigue Driving Using Sample Entropy

机译:基于ECG的基于样本熵的疲劳驾驶实时检测

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In present work, the heart rate variability (HRV) characteristics, calculated by sample entropy (SampEn), were used to analyze the driving fatigue state at successive driving stages. Combined with the relative power spectrum ratio β/(θ + α), subjective questionnaire, and brain network parameters of electroencephalogram (EEG) signals, the relationships between the different characteristics for driving fatigue were discussed. Thus, it can conclude that the HRV characteristics (RR SampEn and R peaks SampEn), as well as the relative power spectrum ratio β/(θ + α) of the channels (C3, C4, P3, P4), the subjective questionnaire, and the brain network parameters, can effectively detect driving fatigue at various driving stages. In addition, the method for collecting ECG signals from the palm part does not need patch electrodes, is convenient, and will be practical to use in actual driving situations in the future.
机译:在当前工作中,通过样本熵(SampEn)计算出的心率变异性(HRV)特性被用于分析连续驾驶阶段的驾驶疲劳状态。结合相对功率谱比β/(θ+α),主观问卷和脑电图(EEG)的脑网络参数,讨论了驾驶疲劳的不同特征之间的关系。因此,可以得出以下结论:主观问卷,HRV特征(RR SampEn和R峰值SampEn)以及通道(C3,C4,P3,P4)的相对功率谱比β/(θ+α),以及大脑网络参数,可以有效地检测各个驾驶阶段的驾驶疲劳。另外,从手掌部收集ECG信号的方法不需要贴片电极,方便,并且在将来的实际驾驶情况下将是实用的。

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