ROMay 27

Natural Functional Gradients for Smooth Trajectory Optimization

arXiv:2605.2820219.9
Predicted impact top 75% in RO · last 90 daysOriginality Incremental advance
AI Analysis

For robotic manipulation, this method addresses the challenge of generating smooth, collision-free trajectories in narrow passages where feasible regions are highly constrained.

The paper proposes a trajectory optimization framework using natural functional gradients to generate collision-free and smooth motions in cluttered environments. The method improves trajectory feasibility and produces smoother motions than baselines in constrained manipulation tasks.

Generating collision-free and smooth motions remains a central challenge in robotic manipulation, particularly in cluttered environments and narrow passages where feasible regions are highly constrained and fragmented. We propose a trajectory optimization framework that performs geometry-aware updates directly in function space using natural functional gradients. The method optimizes a Gaussian-smoothed surrogate objective that regularizes the optimization landscape through smooth trajectory perturbations while preserving trajectory-level structure. Because the updates are defined intrinsically in function space, trajectory regularity can be controlled independently of a particular time discretization. We derive a practical Monte-Carlo estimator of the natural functional gradient that requires only black-box trajectory evaluations, making the method applicable when analytic gradients are unavailable or unreliable due to collision checking and contact-rich simulation. Experiments on constrained robotic manipulation tasks demonstrate that the proposed method improves trajectory feasibility and produces smoother motions than representative planning and trajectory optimization baselines in environments with narrow geometric clearances. Additional results, videos, and implementation details are available at the project page: https://kisangpark.github.io/natural-functional-gradient/

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes