Function-Space Diffusion for Motion Planning
arXiv:2607.02977v1 Announce Type: new Abstract: Diffusion-based motion planners have demonstrated strong performance in generating diverse and high-quality robot trajectories in cluttered environments with multiple feasible solutions. However, existing approaches typically operate on fixed-length waypoint sequences, making the learned model resolution-dependent, thereby preventing zero-shot generalization across resolutions. In this work, we propose Function-Space Diffusion for Motion Planning (...
arXiv cs.RO
·Zinuo Chang, Yipu Chen, Byoungwoo Park, Hongzhe Yu, Yongxin Chen
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