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首页> 外文期刊>IEEE transactions on automation science and engineering: a publication of the IEEE Robotics and Automation Society >A Temporal–Spatial Deep Learning Approach for Driver Distraction Detection Based on EEG Signals
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A Temporal–Spatial Deep Learning Approach for Driver Distraction Detection Based on EEG Signals

机译:基于脑电信号的驾驶员分心检测时空深度学习方法

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Distracted driving has been recognized as a major challenge to traffic safety improvement. This article presents a novel driving distraction detection method that is based on a new deep network. Unlike traditional methods, the proposed method uses both temporal information and spatial information of electroencephalography (EEG) signals as model inputs. Convolutional techniques and gated recurrent units were adopted to map the relationship between drivers’ distraction status and EEG signals in the time domain. A driving simulation experiment was conducted to examine the effectiveness of the proposed method. Twenty-four healthy volunteers participated and three types of secondary tasks (i.e., cellphone operation task, clock task, and 2-back task) were used to induce distraction during driving. Drivers’ EEG responses were measured using a 32-channel electrode cap, and the EEG signals were preprocessed to remove artifacts and then split into short EEG sequences. The proposed deep-network-based distraction detection method was trained and tested on the collected EEG data. To evaluate its effectiveness, it was also compared with the networks using temporal or spatial information alone. The results showed that our proposed distraction detection method achieved an overall binary (distraction versus nondistraction) classification accuracy of 0.92. In terms of task-specific distraction detection, its accuracy was 0.88. Further analysis on the individual difference in detection performance showed that drivers’ EEG performance differed across individuals, which suggests that adaptive learning for each individual driver would be needed when developing in-vehicle distraction detection applications. Note to Practitioners—Driver distraction detection is crucial for safety enhancement to avoid crashes caused by nondriving-related activities, such as calling and texting while driving. Related previous studies mainly focus on detection by monitoring head and eye movement using computer vision technologies or by extracting indicators from driving performance measures for driver state inference. However, complex traffic environments (e.g., dynamically changing light distribution on driver’s face and nighttime driving with low illumination) strongly limit the effectiveness of computer vision technologies, and the driving performance characteristics may also be caused by factors other than distraction (e.g., fatigue). To solve these problems, this article seeks to develop a deep learning-based approach to map the unique relationship between driver distraction and the bioelectric electroencephalography (EEG) signals that are not affected by traffic environments. The proposed method can be integrated into the driver assistance systems and autonomous vehicles to deal with emergency situations that need drivers to handle. The timely detection of distraction by our method will significantly facilitate its practical applications in collision avoidance or danger mitigation in the handover process.
机译:分心驾驶被认为是改善交通安全的一大挑战。本文介绍了一种基于新型深度网络的新型驾驶分心检测方法。与传统方法不同,所提方法同时使用脑电图(EEG)信号的时间信息和空间信息作为模型输入。采用卷积技术和门控循环单元绘制了时域内驾驶员分心状态与脑电信号之间的关系。通过驾驶仿真实验验证了所提方法的有效性。24 名健康志愿者参与,并使用 3 种类型的次要任务(即手机操作任务、时钟任务和 2 背任务)在驾驶过程中诱导分心。使用 32 通道电极帽测量驾驶员的脑电图反应,并对脑电图信号进行预处理以去除伪影,然后拆分为短的脑电图序列。对收集到的脑电图数据进行了基于深度网络的分心检测方法的训练和测试。为了评估其有效性,还将其与仅使用时间或空间信息的网络进行了比较。结果表明,我们提出的分心检测方法实现了0.92的总体二元(分心与非分心)分类准确率。在特定任务分心检测方面,其准确率为0.88。对检测性能个体差异的进一步分析表明,驾驶员的脑电图表现因人而异,这表明在开发车载分心检测应用时,需要对每个驾驶员进行自适应学习。从业者注意事项 - 驾驶员分心检测对于提高安全性至关重要,以避免由非驾驶相关活动(例如驾驶时打电话和发短信)引起的碰撞。之前的相关研究主要集中在通过使用计算机视觉技术监测头部和眼睛运动或从驾驶性能测量中提取指标进行驾驶员状态推断的检测。然而,复杂的交通环境(例如,驾驶员面部的动态光分布变化和夜间低照度驾驶)强烈限制了计算机视觉技术的有效性,并且驾驶性能特征也可能由分心以外的因素(例如疲劳)引起。为了解决这些问题,本文试图开发一种基于深度学习的方法,以绘制驾驶员分心与不受交通环境影响的生物脑电图(EEG)信号之间的独特关系。该方法可以集成到驾驶员辅助系统和自动驾驶汽车中,以应对需要驾驶员处理的紧急情况。通过我们的方法及时检测分心,将大大促进其在交接过程中避免碰撞或减轻危险的实际应用。

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