自动驾驶汽车的不确定性感知运动规划:综述

Haodong Lu, Haoran Xu
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引用次数: 0

摘要

本文回顾了最近开发的一种不确定性感知运动规划算法,该算法被广泛应用于自动驾驶汽车。许多汽车制造商将重点从提高汽车能源转换效率转向自动驾驶,旨在为驾驶者带来更好、更轻松的驾驶体验。然而,过去许多用于自动驾驶的运动规划算法并不成熟,因此出现了许多错误。这些错误可能会危及人类驾驶员的生命安全。不确定性感知运动规划算法由两个相互连接的系统组成,并由一个训练有素的图神经网络提供支持,该算法利用两个相关的子系统来预测周围物体的运动,并相应地做出必要的操作。通过许多研究论文的论证,不确定性感知运动算法是解决车辆对周围环境考虑不足的一种高效、安全的方法。尽管其能力主要受限于传感器的精度和背景的复杂性,但该算法的独特优势为自动驾驶汽车算法的发展提供了另一个方向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Uncertainty-aware motion planning for autonomous vehicle: A review
This paper reviews a recently developed uncertainty-aware motion planning algorithm vastly applied to autonomous vehicles. Many vehicle manufacturers shifted their focus from improving vehicle energy conversion efficiency to autonomous driving, aiming to bring a better and more relaxed driving experience to drivers. However, many past motion planning algorithms used for autonomous driving were immature, so many errors were reported. These errors may put human drivers in life-threatening danger. Consisting of two connected systems supported by a well-trained graph neural network, the uncertainty-aware motion planning algorithm uses two related sub-systems to predict the motion of surrounding object and make necessary maneuvers accordingly. Using evidence from many research papers, an uncertainty-aware motion algorithm is an efficient and safe solution to insufficient consideration of the surrounding environment of vehicles. Even though its ability is primarily limited by the accuracy of sensors and the complexity of background, the unique advantage of this algorithm gives an alternative direction to the development of algorithms in autonomous vehicles.
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