Clustering based Approach for Automated EEG Artifacts Handling

Shaibal Barua, S. Begum, Mobyen Uddin Ahmed
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引用次数: 4

Abstract

Driving a vehicle involves a series of events, which are related to and evolve with the mental state (such as sleepiness, mental load, and stress) of the driv- er. These states are also identified as causal factors of critical situations that can lead to road accidents and vehicle crashes. These driver impairments need to be detected and predicted in order to reduce critical situations and road accidents. In the past years, physiological signals have become conven- tional measures in driver impairment research. Physiological signals have been applied in various studies to identify different levels of mental load, sleepiness, and stress during driving.This licentiate thesis work has investigated several artificial intelligence algorithms for developing an intelligent system to monitor driver mental state using physiological signals. The research aims to measure sleepiness and mental load using Electroencephalography (EEG). EEG signals, if pro- cessed correctly and efficiently, have potential to facilitate advanced moni- toring of sleepiness, mental load, fatigue, stress etc. However, EEG signals can be contaminated with unwanted signals, i.e., artifacts. These artifacts can lead to serious misinterpretation. Therefore, this work investigates EEG arti- fact handling methods and propose an automated approach for EEG artifact handling. Furthermore, this research has also investigated how several other physiological parameters (Heart Rate (HR) and Heart Rate Variability (HRV) from the Electrocardiogram (ECG), Respiration Rate, Finger Tem- perature (FT), and Skin Conductance (SC)) to quantify drivers’ stress. Dif- ferent signal processing methods have been investigated to extract features from these physiological signals. These features have been extracted in the time domain, in the frequency domain as well as in the joint time-frequency domain using wavelet analysis. Furthermore, data level signal fusion has been proposed using Multivariate Multiscale Entropy (MMSE) analysis by combining five physiological sensor signals. Primarily Case-Based Reason- ing (CBR) has been applied for drivers’ mental state classification, but other Artificial intelligence (AI) techniques such as Fuzzy Logic, Support Vector Machine (SVM) and Artificial Neural Network (ANN) have been investigat- ed as well.For drivers’ stress classification, using the CBR and MMSE approach, the system has achieved 83.33% classification accuracy compared to a human expert. Moreover, three classification algorithms i.e., CBR, an ANN, and a SVM were compared to classify drivers’ stress. The results show that CBR has achieved 80% and 86% accuracy to classify stress using finger tempera- ture and heart rate variability respectively, while ANN and SVM reached an accuracy of less than 80%.
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基于聚类的脑电信号伪影自动处理方法
驾驶车辆涉及一系列事件,这些事件与驾驶员的精神状态(如困倦、精神负荷和压力)相关并随其发展。这些状态也被确定为可能导致道路事故和车辆碰撞的关键情况的因果因素。需要检测和预测驾驶员的这些缺陷,以减少危急情况和道路事故。近年来,生理信号已成为驾驶员损伤研究的常规指标。生理信号已被应用于各种研究中,以识别驾驶过程中不同程度的精神负荷、困倦和压力。本毕业论文研究了几种人工智能算法,以开发一种利用生理信号监测驾驶员精神状态的智能系统。该研究旨在利用脑电图(EEG)测量困倦和精神负荷。脑电图信号,如果处理正确和有效,有可能促进先进的监测困倦,精神负荷,疲劳,压力等。然而,脑电图信号可能被不需要的信号污染,即伪影。这些人工制品会导致严重的误解。因此,本文研究了脑电信号伪影处理方法,提出了一种脑电信号伪影处理的自动化方法。此外,本研究还研究了其他几个生理参数(心率(HR)和心率变异性(HRV)来自心电图(ECG),呼吸速率,手指温度(FT)和皮肤电导(SC))如何量化驾驶员的压力。为了从这些生理信号中提取特征,研究了不同的信号处理方法。利用小波分析在时域、频域以及联合时频域提取了这些特征。在此基础上,提出了基于多元多尺度熵(MMSE)分析的数据级信号融合方法。基于案例的推理(Case-Based reasoning, CBR)主要应用于驾驶员的心理状态分类,但其他人工智能(AI)技术如模糊逻辑、支持向量机(SVM)和人工神经网络(ANN)也得到了研究。对于驾驶员的压力分类,采用CBR和MMSE方法,与人类专家相比,该系统的分类准确率达到83.33%。对比了CBR、ANN和SVM三种分类算法对驾驶员压力的分类效果。结果表明,CBR基于手指温度和心率变异性对压力进行分类的准确率分别达到80%和86%,而神经网络和支持向量机的准确率均在80%以下。
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