Inference-Time Robot Behavior Steering through Physically-Aware Reconfiguration of Task-Structure
摘要
A central challenge in deploying learned robot policies is inference-time behavior steering: redirecting a policy at test time to satisfy user preferences not anticipated during training, without retraining. Existing methods fail in two modes: end-to-end methods require fine-tuning or expert-level guidance, while neuro-symbolic methods rely on predefined symbols whose edits can result in logically reasonable but physically infeasible plans. To address this challenge, we propose ReStruct, which builds upon a neural automaton policy that decomposes a visuomotor policy into a high-level state-machine skeleton capturing task structure and a low-level continuous controller represented as a residual policy. Specifically, ReStruct adopts the automaton to represent the preference and incorporates it into the skeleton through a synchronous product, thereby reconfiguring the task structure. With the controller kept frozen, the action priors provided by the skeleton are updated accordingly to enable physically-aware control under a modified task structure. Extensive experiments from simulation and real-world show that ReStruct steers a wide range of preferences, from object-centric specifications to temporal-logic constraints, and after steering surpasses existing methods, exceeding VLA models in both task success and preference-following by up to 25%.
引用
@article{arxiv.2606.26588,
title = {Inference-Time Robot Behavior Steering through Physically-Aware Reconfiguration of Task-Structure},
author = {Yiyuan Pan and Hanjiang Hu and Shangtao Li and Xusheng Luo and Changliu Liu},
journal= {arXiv preprint arXiv:2606.26588},
year = {2026}
}