ArXiv TLDR

Guiding Vector Field Generation via Score-based Diffusion Model

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2604.24487

Zirui Chen, Shiliang Guo, Shiyu Zhao

cs.RO

TLDR

SGVF uses score-based diffusion models to generate guiding vector fields for robust robotic path following on complex, multi-branch, and unordered paths.

Key contributions

  • Introduces Score-Induced Guiding Vector Field (SGVF) using score-based generative modeling directly from data distributions.
  • Learns tangent fields from point clouds with unit-norm, orthogonality, and directional-consistency losses for geometric fidelity.
  • Enables robust robotic path following on complex topologies like branching and pseudo-manifolds, where classical GVFs fail.

Why it matters

This paper bridges generative modeling and geometric control, addressing a key limitation of classical Guiding Vector Fields. It allows robots to navigate complex, non-smooth paths, opening new possibilities for autonomous systems.

Original Abstract

Guiding Vector Fields (GVFs) are a powerful tool for robotic path following. However, classical methods assume smooth, ordered curves and fail when paths are unordered, multi-branch, or generated by probabilistic models. We propose a unified framework, termed the Score-Induced Guiding Vector Field (SGVF), which leverages score-based generative modeling to construct vector fields directly from data distributions. SGVF learns tangent fields from point clouds with unit-norm, orthogonality, and directional-consistency losses, ensuring geometric fidelity and control feasibility. This approach removes the reliance on ad-hoc path segmentation and enables guidance along complex topologies such as branching and pseudo-manifolds. The study establishes a correspondence between score vanishing in diffusion models and GVF singularities and highlights representational capacity near sharp path curvatures. Experiments on robotic navigation in planar environments demonstrate that SGVF achieves reliable path following in scenarios where classical GVFs fail, underscoring its potential as a bridge between generative modeling and geometric control. Code and experiment video are available at https://github.com/czr-gif/Guiding-Vector-Field-Generation-via-Score-based-Diffusion-Model.

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