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Analyzing the relationship between head pose and gaze to model driver visual attention

机译:分析头部姿势与凝视之间的关系以模拟驾驶员的视觉注意力

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Monitoring driver behavior is crucial in the design of advanced driver assistance systems (ADAS) that can detect driver actions, providing necessary warnings when not attentive to driving tasks. The visual attention of a driver is an important aspect to consider, as most driving tasks require visual resources. Previous work has investigated algorithms to detect driver visual attention by tracking the head or eye movement. While tracking pupil can give an accurate direction of visual attention, estimating gaze on vehicle environment is a challenging problem due to changes in illumination, head rotations, and occlusions (e.g. hand, glasses). Instead, this paper investigates the use of the head pose as a coarse estimate of the driver visual attention. The key challenge is the non-trivial relation between head and eye movements while glancing to a target object, which depends on the driver, the underlying cognitive and visual demand, and the environment. First, we evaluate the performance of a state-of-the-art head pose detection algorithm over natural driving recordings, which are compared with ground truth estimations derived from AprilTags attached to a headband. Then, the study proposes regression models to estimate the drivers' gaze based on the head position and orientation, which are built with data from natural driving recordings. The proposed system achieves high accuracy over the horizontal direction, but moderate/low performance over the vertical direction. We compare results while our participants were driving, and when the vehicle was parked.
机译:在高级驾驶员辅助系统(ADAS)的设计中,监视驾驶员行为至关重要,该系统可以检测驾驶员的行为,并在不注意驾驶任务时提供必要的警告。驾驶员的视觉注意力是需要考虑的重要方面,因为大多数驾驶任务都需要视觉资源。先前的工作已经研究了通过跟踪头部或眼睛的运动来检测驾驶员视觉注意力的算法。尽管跟踪瞳孔可以给出准确的视觉注意力方向,但是由于照明,头部旋转和遮挡物(例如手,眼镜)的变化,估计车辆环境的凝视是一个具有挑战性的问题。取而代之的是,本文研究了使用头部姿势作为驾驶员视觉注意力的粗略估计。关键的挑战是,在掠过目标物体时,头部和眼睛运动之间的平凡关系,这取决于驾驶员,潜在的认知和视觉需求以及环境。首先,我们评估了自然驾驶记录上最先进的头部姿势检测算法的性能,并将其与从附着在头带上的AprilTags得出的地面真相估计值进行了比较。然后,该研究提出了基于头部位置和方向来估计驾驶员视线的回归模型,这些模型是根据自然驾驶记录中的数据构建的。所提出的系统在水平方向上实现了高精度,但是在垂直方向上实现了中/低性能。我们比较参与者驾驶时和车辆停放时的结果。

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