Motion planning is a fundamental problem in autonomous robotics that requires finding a path to a specified goal that avoids obstacles and takes into account a robot's limitations and constraints. It is often desirable for this path to also optimize a cost function, such as path length. Formal path-quality guarantees for continuously valued search spaces are an active area of research interest. Recent results have proven that some sampling-based planning methods probabilistically converge toward the optimal solution as computational effort approaches infinity. This survey summarizes the assumptions behind these popular asymptotically optimal techniques and provides an introduction to the significant ongoing research on this topic.
翻译:机动性规划是自主机器人的一个根本问题,需要找到一条通往特定目标的道路,避免障碍,并考虑到机器人的局限性和制约因素。这条道路往往也有必要优化成本功能,例如路径长度。对持续估价搜索空间的正式路径质量保障是一个积极的研究领域。最近的结果证明,一些抽样规划方法有可能随着计算努力的无限化而趋于最佳解决方案。这项调查总结了这些广受欢迎的非现成最佳技术背后的假设,并介绍了目前关于这一专题的重要研究。