AI Agents 相关度: 7/10

Toward Generalist Neural Motion Planners for Robotic Manipulators: Challenges and Opportunities

Davood Soleymanzadeh, Ivan Lopez-Sanchez, Hao Su, Yunzhu Li, Xiao Liang, Minghui Zheng
arXiv: 2603.24318v1 发布: 2026-03-25 更新: 2026-03-25

AI 摘要

探讨神经运动规划器在机器人操作中的泛化问题,分析现有方法的局限性并展望未来方向。

主要贡献

  • 综述神经运动规划器
  • 分析现有方法的优缺点
  • 提出通用神经运动规划器的发展方向

方法论

回顾和分析现有神经运动规划器,对比其性能,并基于此提出改进方向。

原文摘要

State-of-the-art generalist manipulation policies have enabled the deployment of robotic manipulators in unstructured human environments. However, these frameworks struggle in cluttered environments primarily because they utilize auxiliary modules for low-level motion planning and control. Motion planning remains challenging due to the high dimensionality of the robot's configuration space and the presence of workspace obstacles. Neural motion planners have enhanced motion planning efficiency by offering fast inference and effectively handling the inherent multi-modality of the motion planning problem. Despite such benefits, current neural motion planners often struggle to generalize to unseen, out-of-distribution planning settings. This paper reviews and analyzes the state-of-the-art neural motion planners, highlighting both their benefits and limitations. It also outlines a path toward establishing generalist neural motion planners capable of handling domain-specific challenges. For a list of the reviewed papers, please refer to https://davoodsz.github.io/planning-manip-survey.github.io/.

标签

机器人 运动规划 神经网络 泛化 操作

arXiv 分类

cs.RO cs.AI