Measuring Driver Situation Awareness Using Region-of-Interest Prediction and Eye Tracking

M. Hofbauer, Christopher B. Kuhn, Lukas Püttner, G. Petrovic, E. Steinbach
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引用次数: 12

Abstract

With increasing progress in autonomous driving, the human does not have to be in control of the vehicle for the entire drive. A human driver obtains the control of the vehicle in case of an autonomous system failure or when the vehicle encounters an unknown traffic situation it cannot handle on its own. A critical part of this transition to human control is to ensure a sufficient driver situation awareness. Currently, no direct method to explicitly estimate driver awareness exists. In this paper, we propose a novel system to explicitly measure the situation awareness of the driver. Our approach is inspired by methods used in aviation. However, in contrast to aviation, the situation awareness in driving is determined by the detection and understanding of dynamically changing and previously unknown situation elements. Our approach uses machine learning to define the best possible situation awareness. We also propose to measure the actual situation awareness of the driver using eye tracking. Comparing the actual awareness to the target awareness allows us to accurately assess the awareness the driver has of the current traffic situation. To test our approach, we conducted a user study. We measured the situation awareness score of our model for 8 unique traffic scenarios. The results experimentally validate the accuracy of the proposed driver awareness model.
利用兴趣区域预测和眼动追踪测量驾驶员的态势感知
随着自动驾驶技术的不断进步,人类不必在整个驾驶过程中控制车辆。在自动驾驶系统出现故障或车辆遇到无法自行处理的未知交通状况时,驾驶员获得对车辆的控制权。向人类控制过渡的一个关键部分是确保驾驶员充分了解情况。目前,还没有明确估计驾驶员意识的直接方法。在本文中,我们提出了一种新的系统来显式测量驾驶员的态势感知。我们的方法受到航空中使用的方法的启发。然而,与航空相比,驾驶中的态势感知取决于对动态变化和先前未知的态势要素的检测和理解。我们的方法使用机器学习来定义最佳可能的情况感知。我们还建议使用眼动追踪来测量驾驶员的实际情况意识。将实际意识与目标意识进行比较,我们可以准确地评估驾驶员对当前交通状况的意识。为了测试我们的方法,我们进行了一项用户研究。我们为8个独特的交通场景测量了我们模型的态势感知得分。实验结果验证了所提驾驶员感知模型的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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