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Fuzzy Fusion of Eyelid Activity Indicators for Hypovigilance-Related Accident Prediction

机译:眼睑活动指标的模糊融合与低警惕性相关的事故预测

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摘要

In this paper, a fuzzy expert system (FES) for the detection of the physiological manifestations of extreme hypovigilance is presented. A large number of features that describe the eyelid activity of drivers is examined, and fuzzy logic is used for the fusion of the most prominent features to not only increase the accident prediction accuracy but also provide a reliable system that generates a small number of false warnings. For the development and testing of the system, driving simulator data from 35 drowsy subjects were used. In addition, a secondary control group of 13 alert drivers was used for the estimation of the trained system''s false alarm ratio. The results show that a fuzzy combination of eyelid activity parameters may lead to a system with high sensitivity and specificity in predicting sleep onset and related accidents.
机译:本文提出了一种模糊专家系统(FES),用于检测极端警惕的生理表现。检查了许多描述驾驶员眼睑活动的特征,并使用模糊逻辑融合了最突出的特征,不仅提高了事故预测的准确性,而且还提供了可生成少量错误警告的可靠系统。 。为了开发和测试系统,使用了来自35个困倦对象的驾驶模拟器数据。此外,一个由13个警报驾驶员组成的辅助控制组被用于估计训练后系统的虚警率。结果表明,眼睑活动参数的模糊组合可能会导致系统在预测睡眠发作和相关事故方面具有高灵敏度和特异性。

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