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Research on a Cognitive Distraction Recognition Model for Intelligent Driving Systems Based on Real Vehicle Experiments

机译:基于真实车辆实验的智能驾驶系统认知令人信心识别模型研究

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摘要

The accurate and prompt recognition of a driver’s cognitive distraction state is of great significance to intelligent driving systems (IDSs) and human-autonomous collaboration systems (HACSs). Once the driver’s distraction status has been accurately identified, the IDS or HACS can actively intervene or take control of the vehicle, thereby avoiding the safety hazards caused by distracted driving. However, few studies have considered the time–frequency characteristics of the driving behavior and vehicle status during distracted driving for the establishment of a recognition model. This study seeks to exploit a recognition model of cognitive distraction driving according to the time–frequency analysis of the characteristic parameters. Therefore, an on-road experiment was implemented to measure the relative parameters under both normal and distracted driving via a test vehicle equipped with multiple sensors. Wavelet packet analysis was used to extract the time–frequency characteristics, and 21 pivotal features were determined as the input of the training model. Finally, a bidirectional long short-term memory network (Bi-LSTM) combined with an attention mechanism (Atten-BiLSTM) was proposed and trained. The results indicate that, compared with the support vector machine (SVM) model and the long short-term memory network (LSTM) model, the proposed model achieved the highest recognition accuracy (90.64%) for cognitive distraction under the time window setting of 5 s. The determination of time–frequency characteristic parameters and the more accurate recognition of cognitive distraction driving achieved in this work provide a foundation for human-centered intelligent vehicles.
机译:对驾驶员的认知分心状态的准确和迅速识别对智能驾驶系统(IDS)和人类自主协作系统(HACS)具有重要意义。一旦准确地识别了驾驶员的分散化状态,IDS或HAC就可以主动干预或控制车辆,从而避免由分散的驾驶引起的安全危险。然而,很少有研究已经考虑了在分散行驶的驾驶行为和车辆状态的时间频率特性,用于建立识别模型。该研究旨在根据特征参数的时频分析来利用认知侦听驾驶的识别模型。因此,实施了一台通道实验,以通过配备有多个传感器的测试车来测量正常和分散分散的驾驶下的相对参数。小波分组分析用于提取时间频率特性,并且将21个枢转特征被确定为训练模型的输入。最后,提出并培训了与注意机制(Atten-Bilstm)结合的双向短期内记忆网络(Bi-LSTM)。结果表明,与支持向量机(SVM)模型和长短期存储器网络(LSTM)模型相比,所提出的模型在5的时间窗口设置下实现了最高识别准确度(90.64%)的认知分心s。在该工作中实现时频特性参数的确定和更准确的认知牵引驱动的识别为人以人为本的智能车辆提供了基础。

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