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SAD-Flower: Flow Matching for Safe, Admissible, and Dynamically Consistent Planning

Published: November 7, 2025 | arXiv ID: 2511.05355v1

By: Tzu-Yuan Huang , Armin Lederer , Dai-Jie Wu and more

Potential Business Impact:

Makes robots move safely and correctly.

Business Areas:
Flowers Consumer Goods

Flow matching (FM) has shown promising results in data-driven planning. However, it inherently lacks formal guarantees for ensuring state and action constraints, whose satisfaction is a fundamental and crucial requirement for the safety and admissibility of planned trajectories on various systems. Moreover, existing FM planners do not ensure the dynamical consistency, which potentially renders trajectories inexecutable. We address these shortcomings by proposing SAD-Flower, a novel framework for generating Safe, Admissible, and Dynamically consistent trajectories. Our approach relies on an augmentation of the flow with a virtual control input. Thereby, principled guidance can be derived using techniques from nonlinear control theory, providing formal guarantees for state constraints, action constraints, and dynamic consistency. Crucially, SAD-Flower operates without retraining, enabling test-time satisfaction of unseen constraints. Through extensive experiments across several tasks, we demonstrate that SAD-Flower outperforms various generative-model-based baselines in ensuring constraint satisfaction.

Page Count
21 pages

Category
Computer Science:
Machine Learning (CS)