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Generative Control as Optimization: Time Unconditional Flow Matching for Adaptive and Robust Robotic Control

Description

Diffusion models and flow matching have become a cornerstone of robotic imitation learning, yet they suffer from a structural inefficiency where inference is often bound to a fixed integration schedule that is agnostic to state complexity. This paradigm forces the policy to expend the same computational budget on trivial motions as it does on complex tasks. We introduce Generative Control as Optimization (GeCO), a time-unconditional framework that transforms action synthesis from trajectory inte

Source

http://arxiv.org/abs/2603.17834v1