Search-Based Robot Motion Planning With Distance-Based Adaptive Motion Primitives
Search-Based Robot Motion Planning With Distance-Based Adaptive Motion Primitives
This work proposes a motion planning algorithm for robotic manipulators that combines sampling-based and search-based planning methods. The core contribution of the proposed approach is the usage of burs of free configuration space (C-space) as adaptive motion primitives within the graph search algorithm. Due to their feature to adaptively expand in free C-space, burs enable more efficient exploration of the configuration space compared to fixed-sized motion primitives, significantly reducing the time to find a valid path and the number of required expansions. The algorithm is implemented within the existing SMPL (Search-Based Motion Planning Library) library and evaluated through a series of different scenarios involving manipulators with varying number of degrees-of-freedom (DoF) and environment complexity. Results demonstrate that the bur-based approach outperforms fixed-primitive planning in complex scenarios, particularly for high DoF manipulators, while achieving comparable performance in simpler scenarios.
Benjamin Kraljusic、Zlatan Ajanovic、Nermin Covic、Bakir Lacevic
自动化基础理论自动化技术、自动化技术设备
Benjamin Kraljusic,Zlatan Ajanovic,Nermin Covic,Bakir Lacevic.Search-Based Robot Motion Planning With Distance-Based Adaptive Motion Primitives[EB/OL].(2025-07-01)[2025-07-20].https://arxiv.org/abs/2507.01198.点此复制
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