AI RESEARCH

Sum of Costs Diffusion with Dynamic Guidance for Motion Planning

arXiv CS.LG

ArXi:2605.24690v1 Announce Type: cross The motion planning problem for robotic manipulation can be addressed through classical or deep learning approaches. Existing methods face significant challenges in generalizing to diverse settings. In this study, we present a method with high generalization capability that generates collision-free trajectories using diffusion models where the denoising process is guided by the gradient of the total collision cost. We are also presenting a dynamic approach for choosing start step of the gradient guidance.