The motion objectives of a planning as inference problem are formulated as a joint distribution over coupled random variables on a factor graph. Leveraging optimization-inference duality, a fast solution to the maximum a posteriori estimation of the factor graph can be obtained via least-squares optimization. The computational efficiency of this approach can be used in competitive autonomous racing for finding the minimum curvature raceline. Finding the raceline is classified as a global planning problem that entails the computation of a minimum curvature path for a racecar which offers highest cornering speed for a given racetrack resulting in reduced lap time. This work introduces a novel methodology for formulating the minimum curvature raceline planning problem as probabilistic inference on a factor graph. By exploiting the tangential geometry and structural properties inherent in the minimum curvature planning problem, we represent it on a factor graph, which is subsequently solved via sparse least-squares optimization. The results obtained by performing comparative analysis with the quadratic programming-based methodology, the proposed approach demonstrated the superior computing performance, as it provides comparable lap time reduction while achieving fourfold improvement in computational efficiency.
翻译:摘要:规划作为推断问题的运动目标被制定为一个因子图上的随机变量的联合分布。通过优化推断对偶性,可以通过最小二乘优化快速解决因子图的最大后验估计。这种方法的计算效率可用于竞技自动驾驶赛车找到最小曲率赛道线。寻找赛道线被归类为全局规划问题,这需要计算赛车最小曲率路径,从而为给定赛道提供最高的进入弯道速度,从而降低圈速。本研究提出了一种新的方法,将最小曲率赛道线规划问题表示为因子图上的概率推断。通过利用最小曲率规划问题固有的切向几何和结构特性,在因子图上表示它,随后通过稀疏最小二乘优化求解。通过与基于二次规划的方法进行比较分析,所提出的方法展示了更高的计算性能,它在实现可比的圈速降低的同时,实现了计算效率的四倍提升。