研究凝视模式、动态车辆环绕分析和驾驶员意图之间的关系

A. Doshi, M. Trivedi
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引用次数: 60

摘要

主动安全系统中驾驶员行为分析的最新进展已经使我们能够可靠地预测驾驶员的某些意图。具体来说,研究人员已经开发出了先进的驾驶员辅助系统,该系统可以在驾驶员改变车道、十字路口转弯或刹车的几秒钟前对其意图进行估计。这些系统的一个重要特征是在驾驶前分析驾驶员的视觉搜索,使用头部姿势和眼睛凝视作为代理来确定注意力的焦点。然而,在以目标为导向的视觉搜索过程中,视觉干扰是否会改变驾驶员的行为,从而导致行为分析系统的性能下降,目前尚不清楚。在本文中,我们的目的是确定是否可行使用计算机视觉来确定驾驶员的视觉搜索是否受到外部刺激的影响。一个整体的人种志驾驶数据集被用作一个基础,以产生一个基于运动的视觉显著性地图的场景。当司机想要改变车道时,这张地图与预定的眼睛注视数据相关联。结果表明,该方法能够提高驾驶员的注意力和行为估计,以及意图预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Investigating the relationships between gaze patterns, dynamic vehicle surround analysis, and driver intentions
Recent advances in driver behavior analysis for Active Safety have led to the ability to reliably predict certain driver intentions. Specifically, researchers have developed Advanced Driver Assistance Systems that produce an estimate of a driver's intention to change lanes, make an intersection turn, or brake, several seconds before the act itself. One integral feature in these systems is the analysis of driver visual search prior to a maneuver, using head pose and eye gaze as a proxy to determine focus of attention. However it is not clear whether visual distractions during a goal-oriented visual search could change the driver's behavior and thereby cause a degradation in the performance of the behavior analysis systems. In this paper we aim to determine whether it is feasible to use computer vision to determine whether a driver's visual search was affected by an external stimulus. A holistic ethnographic driving dataset is used as a basis to generate a motion-based visual saliency map of the scene. This map is correlated with predetermined eye gaze data in situations where a driver intends to change lanes. Results demonstrate the capability of this methodology to improve driver attention and behavior estimation, as well as intent prediction.
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