Toward Asymptotically-Optimal Inspection Planning via Efficient Near-Optimal Graph Search.

Mengyu Fu, Alan Kuntz, Oren Salzman, Ron Alterovitz
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引用次数: 24

Abstract

Inspection planning, the task of planning motions that allow a robot to inspect a set of points of interest, has applications in domains such as industrial, field, and medical robotics. Inspection planning can be computationally challenging, as the search space over motion plans grows exponentially with the number of points of interest to inspect. We propose a novel method, Incremental Random Inspection-roadmap Search (IRIS), that computes inspection plans whose length and set of successfully inspected points asymptotically converge to those of an optimal inspection plan. IRIS incrementally densifies a motion planning roadmap using sampling-based algorithms, and performs efficient near-optimal graph search over the resulting roadmap as it is generated. We demonstrate IRIS's efficacy on a simulated planar 5DOF manipulator inspection task and on a medical endoscopic inspection task for a continuum parallel surgical robot in cluttered anatomy segmented from patient CT data. We show that IRIS computes higher-quality inspection plans orders of magnitudes faster than a prior state-of-the-art method.

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基于高效近最优图搜索的渐近最优检测规划。
检查计划,即规划运动的任务,允许机器人检查一组感兴趣的点,在工业、现场和医疗机器人等领域都有应用。检查计划在计算上具有挑战性,因为运动计划的搜索空间随着要检查的兴趣点的数量呈指数级增长。我们提出了一种新的方法——增量随机检查路线图搜索(IRIS),它计算出成功检查点的长度和集合渐近收敛于最优检查计划的长度和集合。IRIS使用基于采样的算法逐步强化运动规划路线图,并在生成结果路线图时对其执行高效的近最优图搜索。我们展示了IRIS在模拟平面5DOF机械臂检测任务和连续平行手术机器人的医学内窥镜检查任务中的有效性,该任务是在从患者CT数据中分割的混乱解剖中进行的。我们表明,IRIS计算更高质量的检查计划的数量级比先前的最先进的方法快。
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