基于学习的自动驾驶多车碰撞威胁评估概念框架

Abu Jafar Md Muzahid, S. F. Kamarulzaman, M. Rahim
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引用次数: 6

摘要

自动驾驶越来越多,推动和预示着完全自动驾驶的未来,相应地在安全保障领域提出了新的挑战。意外、突然变道是造成交通事故的严重原因,这种事故方案导致多车碰撞。通过对近期碰撞数据的广泛评估,我们发现了一个关键的迹象,即自动驾驶系统最容易发生追尾事故,而追尾事故是连锁碰撞的主要因素。基于学习的自我发展评估帮助操作员提供必要的预测操作,甚至取代它们。本文提出了一种基于强化学习的威胁评估系统概念框架,并对自动驾驶中导致多车碰撞的关键情况进行了分析。这篇论文将鼓励我们的交通社区重新思考现有的自动驾驶模型,并与其他学科,特别是机器人和机器学习联系起来,共同创造一个安全有效的系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Learning-Based Conceptual framework for Threat Assessment of Multiple Vehicle Collision in Autonomous Driving
The autonomous driving is increasingly mounting, promoting, and promising the future of fully autonomous and, correspondingly presenting new challenges in the field of safety assurance. The unexpected and sudden lane change are extremely serious causes of traffic accident and, such an accident scheme leads the multiple vehicle collisions. Extensive evaluation of recent crash data we found a crucial indication that autonomous driving systems are most prone to rear-end collision, which is the leading factor of chain crash. Learning based self-developing assessment assists the operators in providing the necessary prediction operations or even replace them. Here we proposed a Reinforcement learning-based conceptual framework for threat assessment system and scrutinize critical situations that leads to multiple vehicle collisions in autonomous driving. This paper will encourage our transport community to rethink the existing autonomous driving models and reach out to other disciplines, particularly robotics and machine learning, to join forces to create a secure and effective system.
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