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EEG-Based Fatigue Classification by Using Parallel Hidden Markov Model and Pattern Classifier Combination

机译:基于EEG的疲劳分类使用并行隐马尔可夫模型和图案分类器组合

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摘要

Fatigue is the most important reason leading to traffic accidents. In order to ensure traffic safety, various methods based on electroencephalogram (EEG) are proposed. But most of them, either regression or classification, are focused on the relationship between feature space and observation values, so the changing patterns of features are ignored or discarded. In this paper, we propose a new fatigue classification method by using parallel hidden-Markov-model and pattern classifier combination techniques, where each model represents a particular fatigue-high-related feature. In the experiment, subjects are asked to accomplish some simple tasks, and both their fatigue states and their EEG signals are recorded simultaneously. Experimental results indicate that the mean error rate obtained by using our new method are 11.15% for classifying 3 states and 16.91% for classifying 4 states, respectively, while the existing approach can only reach 16.45% and 23.55% under the same condition.
机译:疲劳是导致交通事故的最重要的原因。为了确保交通安全,提出了基于脑电图(EEG)的各种方法。但是,大多数回归或分类,都集中在特征空间和观察值之间的关系,因此忽略或丢弃改变功能模式。在本文中,我们通过使用并行隐藏 - 马车模型和图案分类器组合技术提出了一种新的疲劳分类方法,其中每个模型代表特定的疲劳高型特征。在实验中,要求受试者完成一些简单的任务,并同时记录它们的疲劳状态及其脑电图信号。实验结果表明,通过使用我们的新方法获得的平均误差率为3.15%,分别分别分类3个州和16.91%,分别分类4个州,而现有方法只能在相同条件下达到16.45%和23.55%。

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