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Attention Monitoring and Hazard Assessment with Bio-Sensing and Vision: Empirical Analysis Utilizing CNNs on the KITTI Dataset

机译:对生物传感和视觉的注意监测和危害评估:利用CNNS在KITTI DataSet上的实证分析

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Assessing the driver's attention and detecting various hazardous and non-hazardous events during a drive are critical for driver's safety. Attention monitoring in driving scenarios has mostly been carried out using vision (camera-based) modality by tracking the driver's gaze and facial expressions. It is only recently that bio-sensing modalities such as Electroencephalogram (EEG) are being explored. But, there is another open problem which has not been explored sufficiently yet in this paradigm. This is the detection of specific events, hazardous and non-hazardous, during driving that affects the driver's mental and physiological states. The other challenge in evaluating multi-modal sensory applications is the absence of very large scale EEG data because of the various limitations of using EEG in the real world. In this paper, we use both of the above sensor modalities and compare them against the two tasks of assessing the driver's attention and detecting hazardous vs. non-hazardous driving events. We collect user data on twelve subjects and show how in the absence of very large-scale datasets, we can still use pre-trained deep learning convolution networks to extract meaningful features from both of the above modalities. We used the publicly available KITTI dataset for evaluating our platform and to compare it with previous studies. Finally, we show that the results presented in this paper surpass the previous benchmark set up in the above driver awareness-related applications.
机译:在驱动器期间评估驾驶员的注意力和检测各种危险和非危险事件对于驾驶员的安全至关重要。通过跟踪驾驶员的凝视和面部表情,在驾驶场景中的注意力监测主要是使用视觉(基于相机的)的方式进行的。最近才探讨了诸如脑电图(EEG)的生物传感方式。但是,还有另一个公开问题,尚未充分探讨这段范例。这是在驾驶期间检测特定事件,危险和非危险,影响驾驶员的精神和生理状态。评估多模态感官应用的其他挑战是由于现实世界中使用脑电图的各种限制而没有非常大的eEG数据。在本文中,我们使用上述两个传感器方式,并将它们与评估驾驶员注意力的两项任务进行比较,并检测危险与非危险驾驶事件。我们在十二个科目上收集用户数据,并显示在没有非常大规模的数据集中的情况下,我们仍然可以使用预先接受过的深度学习卷积网络来从上述两种模式中提取有意义的功能。我们使用公开可用的Kitti DataSet来评估我们的平台并与以前的研究进行比较。最后,我们表明本文中提出的结果超越了上述驾驶员知名度相关应用中的先前基准。

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