Department of Automotive Engineering, Hanyang University, 222 Wangsimni-ro, Seongdong-gu, Seoul 04763, Korea.
Department of Smart Vehicle Engineering, Konkuk University, Seoul 05029, Korea.
Sensors (Basel). 2021 Feb 22;21(4):1520. doi: 10.3390/s21041520.
Autonomous driving helps drivers avoid paying attention to keeping to a lane or keeping a distance from the vehicle ahead. However, the autonomous driving is limited by the need to park upon the completion of driving. In this sense, automated valet parking (AVP) system is one of the promising technologies for enabling drivers to free themselves from the burden of parking. Nevertheless, the driver must continuously monitor the automated system in the current automation level. The main reason for monitoring the automation system is due to the limited sensor range and occlusions. For safety reasons, the current field of view must be taken into account, as well as to ensure comfort and to avoid unexpected and harsh reactions. Unfortunately, due to parked vehicles and structures, the field of view in a parking lot is not sufficient for considering new obstacles coming out of occluded areas. To solve this problem, we propose a method that estimates the risks for unobservable obstacles by considering worst-case assumptions. With this method, we can ensure to not act overcautiously while moving safe. As a result, the proposed method can be a proactive approach to consider the limited visibility encountered in a parking lot. In the proposed method, occlusion can be efficiently reflected in the planning process. The potential of the proposed method is evaluated in a variety of simulations.
自动驾驶有助于驾驶员避免注意保持车道或与前方车辆保持距离。然而,自动驾驶受到停车完成后需要停车的限制。从这个意义上说,自动代客泊车 (AVP) 系统是使驾驶员摆脱停车负担的有前途的技术之一。然而,在当前的自动化水平下,驾驶员必须持续监控自动化系统。监控自动化系统的主要原因是由于传感器范围有限和遮挡。出于安全原因,必须考虑当前的视野,以确保舒适性并避免意外和苛刻的反应。不幸的是,由于停在的车辆和结构,停车场的视野不足以考虑从遮挡区域出现的新障碍物。为了解决这个问题,我们提出了一种通过考虑最坏情况假设来估计不可见障碍物风险的方法。通过这种方法,我们可以在安全行驶的同时确保不过分谨慎。因此,所提出的方法可以作为一种主动方法来考虑停车场中遇到的有限可见度。在所提出的方法中,可以在规划过程中有效地反映遮挡。在各种模拟中评估了所提出方法的潜力。