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Noise Robustness Analysis of Performance for EEG-Based Driver Fatigue Detection Using Different Entropy Feature Sets

机译:基于不同熵特征集的基于EEG的驾驶员疲劳检测性能的噪声稳健性分析

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Driver fatigue is an important factor in traffic accidents, and the development of a detection system for driver fatigue is of great significance. To estimate and prevent driver fatigue, various classifiers based on electroencephalogram (EEG) signals have been developed; however, as EEG signals have inherent non-stationary characteristics, their detection performance is often deteriorated by background noise. To investigate the effects of noise on detection performance, simulated Gaussian noise, spike noise, and electromyogram (EMG) noise were added into a raw EEG signal. Four types of entropies, including sample entropy (SE), fuzzy entropy (FE), approximate entropy (AE), and spectral entropy (PE), were deployed for feature sets. Three base classifiers (K-Nearest Neighbors (KNN), Support Vector Machine (SVM), and Decision Tree (DT)) and two ensemble methods (Bootstrap Aggregating (Bagging) and Boosting) were employed and compared. Results showed that: (1) the simulated Gaussian noise and EMG noise had an impact on accuracy, while simulated spike noise did not, which is of great significance for the future application of driver fatigue detection; (2) the influence on noise performance was different based on each classifier, for example, the robust effect of classifier DT was the best and classifier SVM was the weakest; (3) the influence on noise performance was also different with each feature set where the robustness of feature set FE and the combined feature set were the best; and (4) while the Bagging method could not significantly improve performance against noise addition, the Boosting method may significantly improve performance against superimposed Gaussian and EMG noise. The entropy feature extraction method could not only identify driver fatigue, but also effectively resist noise, which is of great significance in future applications of an EEG-based driver fatigue detection system.
机译:驾驶员疲劳是交通事故中的重要因素,开发驾驶员疲劳检测系统具有重要意义。为了估计和防止驾驶员疲劳,已经开发了各种基于脑电图(EEG)信号的分类器。然而,由于EEG信号具有固有的非平稳特性,因此其检测性能通常会因背景噪声而变差。为了研究噪声对检测性能的影响,将模拟的高斯噪声,尖峰噪声和肌电图(EMG)噪声添加到原始EEG信号中。特征集部署了四种类型的熵,包括样本熵(SE),模糊熵(FE),近似熵(AE)和谱熵(PE)。并使用了三个基本分类器(K最近邻(KNN),支持向量机(SVM)和决策树(DT))和两个集成方法(引导聚集(Bagging)和Boosting)进行比较。结果表明:(1)模拟的高斯噪声和肌电图噪声对精度有影响,而模拟的尖峰噪声则不影响精度,对驾驶员疲劳检测的未来应用具有重要意义; (2)每个分类器对噪声性能的影响不同,例如,分类器DT的鲁棒性最好,分类器SVM的最弱。 (3)每个特征集对噪声性能的影响也不同,其中特征集FE和组合特征集的鲁棒性最好; (4)虽然Bagging方法不能显着提高抗噪声性能,但Boosting方法可以显着提高抗叠加高斯噪声和EMG噪声的性能。熵特征提取方法不仅可以识别驾驶员疲劳,而且可以有效抵抗噪声,这在基于EEG的驾驶员疲劳检测系统的未来应用中具有重要意义。

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