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EEG-based driving fatigue detection using multilevel feature extraction and iterative hybrid feature selection

机译:基于EEG的驱动疲劳检测使用多级特征提取和迭代混合特征选择

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摘要

Brain activities can be evaluated by using Electroencephalogram (EEG) signals. One of the primary reasons for traffic accidents is driver fatigue, which can be identified by using EEG signals. This work aims to achieve a highly accurate and straightforward process to detect driving fatigue by using EEG signals. Two main problems, which are feature generation and feature selection, are defined to achieve this aim. This work solves these problems by using two different approaches. Deep networks are efficient feature generators and extract features in low, medium, and high levels. These features can be generated by using multileveled or multilayered feature extraction. Therefore, we proposed a multileveled feature generator that uses a one-dimensional binary pattern (BP) and statistical features together, and levels are created using a one-dimensional discrete wavelet transform (1D-DWT). A five-level fused feature extractor is presented by using BP, statistical features of 1D-DWT together. Moreover, a 2-layered feature selection method is proposed using ReliefF and iterative neighborhood component analysis (RFINCA) to solve the feature selection problem. The goals of the RFINCA are to choose the optimal number of features automatically and use the effectiveness of ReliefF and neighborhood component analysis (NCA) together. A driving fatigue EEG dataset was used as a testbed to denote the effectiveness of eighteen conventional classifiers. According to the experimental results, a highly accurate EEG classification approach is presented. The proposed method also reached 100.0% classification accuracy by using a k-nearest neighborhood classifier.
机译:可以通过使用脑电图(EEG)信号来评估脑活动。交通事故的主要原因之一是驱动程序疲劳,可以通过使用EEG信号来识别。这项工作旨在通过使用EEG信号来实现高度准确和直接的过程来检测驱动疲劳。定义了两个主要问题,即功能生成和特征选择,以实现此目标。这项工作通过使用两种不同的方法来解决这些问题。深度网络是有效的特征发生器和低,中等和高电平的提取功能。可以通过使用多级或多层特征提取来生成这些特征。因此,我们提出了一种使用一维二进制模式(BP)和统计特征的多级特征发生器,并且使用一维离散小波变换(1D-DWT)来创建电平。通过使用BP,将1D-DWT的统计功能一起介绍了五级融合特征提取器。此外,使用Relieff和迭代邻域分量分析(RFINCA)来提出2层特征选择方法来解决特征选择问题。 RFINCA的目标是自动选择最佳的功能,并使用Creieff和邻域分量分析(NCA)的有效性在一起。驱动疲劳EEG数据集用作测试平板,以表示十八次传统分类器的有效性。根据实验结果,提出了一种高精度的EEG分类方法。该方法还通过使用K-Collect邻域分类器达到100.0%的分类精度。

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