基于因子图的规划作为自动驾驶汽车竞赛的推理方法

IF 4.6 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Salman Bari;Xiagong Wang;Ahmad Schoha Haidari;Dirk Wollherr
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引用次数: 0

摘要

因子图作为一种双向图模型,通过揭示图节点之间的局部联系,提供了一种结构化的表示方法。本研究探索了因子图在自主赛车规划问题建模中的应用,为传统的基于优化的表述提供了另一种视角。我们将规划问题建模为因子图上的概率推理,因子节点捕捉运动目标的联合分布。利用优化和推理之间的二元性,我们通过最小二乘优化获得了因子图最大后验估计的快速解决方案。这种表述方式所固有的局部设计思想确保了运动目标只取决于一小部分变量。我们利用因子图结构的局部性特征,将最小曲率路径和局部规划计算整合到一个统一的算法中。这有别于传统的全局和局部规划模块分离的做法,即曲率最小化发生在全局层面。对提出的框架进行的评估表明,该框架在赛道的累积曲率和平均速度方面表现出色。此外,评估结果还凸显了我们方法的计算效率。在肯定所提方法的结构设计优势和计算效率的同时,我们也指出了其局限性,并概述了未来研究的潜在方向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Factor Graph-Based Planning as Inference for Autonomous Vehicle Racing
Factor graph, as a bipartite graphical model, offers a structured representation by revealing local connections among graph nodes. This study explores the utilization of factor graphs in modeling the autonomous racecar planning problem, presenting an alternate perspective to the traditional optimizationbased formulation. We model the planning problem as a probabilistic inference over a factor graph, with factor nodes capturing the joint distribution of motion objectives. By leveraging the duality between optimization and inference, a fast solution to the maximum a posteriori estimation of the factor graph is obtained via least-squares optimization. The localized design thinking inherent in this formulation ensures that motion objectives depend on a small subset of variables. We exploit the locality feature of the factor graph structure to integrate the minimum curvature path and local planning computations into a unified algorithm. This diverges from the conventional separation of global and local planning modules, where curvature minimization occurs at the global level. The evaluation of the proposed framework demonstrated superior performance for cumulative curvature and average speed across the racetrack. Furthermore, the results highlight the computational efficiency of our approach. While acknowledging the structural design advantages and computational efficiency of the proposed methodology, we also address its limitations and outline potential directions for future research.
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CiteScore
5.40
自引率
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