考虑个体差异和时间累积效应的驾驶疲劳状态空间模型检测

Xuesong Wang , Mengjiao Wu , Chuan Xu , Xiaohan Yang , Bowen Cai
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引用次数: 0

摘要

疲劳驾驶是造成交通事故的一个重要原因,而有效的疲劳驾驶检测模型可以减少交通事故的发生。研究发现,不同驾驶员的疲劳驾驶表现存在很大差异,而且疲劳对特定驾驶员的累积影响也很大。这两种差异都会降低检测系统的准确性,但以往的研究还不足以评估这些差异。因此,本研究的目的是开发一种疲劳检测模型,考虑个体差异和疲劳的时间累积效应。本研究使用带有眼动跟踪系统的驾驶模拟器,收集了 22 名驾驶员的车道横向位置、方向盘移动、车速和眼动数据。使用卡罗林斯卡嗜睡量表收集了驾驶员的主观疲劳评分。考虑到每位驾驶员的个体特征,建立了状态空间模型(SSM)来检测其疲劳程度。作为一种时间序列模型,SSM 还可以处理疲劳的时间累积效应,而且不需要庞大的数据集就能达到很高的准确度。SSM 结果的差异证实,驾驶员的疲劳驾驶表现确实存在多样性,因此 SSM 能够考虑到每个驾驶员的具体信息,这表明它比使用综合驾驶员数据的模型更适合疲劳检测。结果表明,SSM 的疲劳检测准确率(77.73%)高于人工神经网络模型(61.37%)。准确性、高可解释性和灵活性等优势使 SSM 成为一种全面且有商业价值的个性化疲劳检测模型。
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State space model detection of driving fatigue considering individual differences and time cumulative effect

Fatigue is an important cause of traffic crashes, and effective fatigue detection models can reduce these crashes. Research has found large differences in fatigued driving performance from driver to driver, as well as a significant cumulative effect of fatigue on a given driver over time. Both sources of variation can decrease the accuracy of detection systems, but previous studies have not done enough to evaluate these differences. The purpose of this study is therefore to develop a fatigue detection model that considers individual differences and the time cumulative effect of fatigue. Data on the lateral position of the car in its lane, steering wheel movement, speed, and eye movement were collected from 22 drivers using a driving simulator with an eye-tracking system. Drivers’ subjective fatigue scores were collected using the Karolinska Sleepiness Scale. State space models (SSMs) were built to detect fatigue in each driver, considering his or her individual features. As a time series model, the SSM can also address the time cumulative effect of fatigue, and it does not require a large dataset to achieve high levels of accuracy. The differences in SSM results confirm that diversity does exist among drivers’ fatigued driving performance, so the ability of the SSM to take into account driver-specific information from each individual driver suggests that it is more suitable for fatigue detection than models that use aggregated driver data. Results show that the fatigue detection accuracy of the SSM (77.73%) is higher than that of artificial neural network models (61.37%). The advantages of accuracy, high interpretability, and flexibility make the SSM a comprehensive and valuable individualized fatigue detection model for commercial use.

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来源期刊
International Journal of Transportation Science and Technology
International Journal of Transportation Science and Technology Engineering-Civil and Structural Engineering
CiteScore
7.20
自引率
0.00%
发文量
105
审稿时长
88 days
期刊最新文献
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