A new belief space planning algorithm, called covariance steering Belief RoadMap (CS-BRM), is introduced, which is a multi-query algorithm for motion planning of dynamical systems under simultaneous motion and observation uncertainties. CS-BRM extends the probabilistic roadmap (PRM) approach to belief spaces and is based on the recently developed theory of covariance steering (CS) that enables guaranteed satisfaction of terminal belief constraints in finite-time. The nodes in the CS-BRM are sampled in belief space and represent distributions of the system states. A covariance steering controller steers the system from one BRM node to another, thus acting as an edge controller of the corresponding belief graph that ensures belief constraint satisfaction. After the edge controller is computed, a specific edge cost is assigned to that edge. The CS-BRM algorithm allows the sampling of non-stationary belief nodes, and thus is able to explore the velocity space and find efficient motion plans. The performance of CS-BRM is evaluated and compared to a previous belief space planning method, demonstrating the benefits of the proposed approach.
翻译:引入了新的信仰空间规划算法,称为“共变指导信仰路图”,这是同时运动和观察不确定性下动态系统运动规划的多细算法。CS-BRM将概率路线图(PRM)方法扩大到信仰空间,并基于最近开发的共变指导理论(CS),该理论能够保证在有限时间内满足终极信仰限制。CS-BRM的节点是信仰空间的样本,代表系统状态的分布。CS-BRM的常变指导控制器将系统从一个BRM节点引导到另一个节点,从而作为确保信仰受限满意度的相应信仰图的边缘控制器。在计算边缘控制器之后,为这一边缘指定了具体的边价。CS-BRM算法允许对非静止信仰节点进行取样,从而能够探索速度空间并找到高效的移动计划。CS-BRM的性能被评估,并与先前的信仰空间规划方法进行比较,展示了拟议方法的效益。