ArXiv

Unified Noise Steering for Efficient Human-Guided VLA Adaptation

Authors
Junjie Lu, Xinyao Qin, Yuhua Jiang...
Categories
cs.RO
arXiv
https://arxiv.org/abs/2605.10821v1
PDF
https://arxiv.org/pdf/2605.10821v1

Brief

UniSteer tackles efficient real‑world adaptation of diffusion-based vision‑language‑action models by combining human corrective interventions with noise‑space RL. The method inverts a frozen flow‑matching decoder to convert human actions into supervision for a noise‑predicting actor, which is concurrently improved with RL. Real‑world tests on four manipulation tasks show a jump from 20% to 90% success in 66 minutes on average. Full paper was not available, summary based on the abstract.

Why it matters

UniSteer unifies human corrective actions with noise-space RL by approximately inverting a frozen flow‑matching decoder to map corrective actions to noise targets, providing supervised guidance for a lightweight noise‑predicting actor while that actor is simultaneously optimized with RL.

Key details

  • On four real‑world manipulation adaptation tasks, UniSteer raised success rates from 20% to 90% on average in 66 minutes and outperformed strong noise‑space RL and action‑space human‑in‑the‑loop baselines.
  • Paper by Junjie Lu et al., posted to arXiv (cs.RO) on 2026-05-11; summary based on the abstract (full text not available here).
Source evidence

Abstract

Diffusion-based vision-language-action (VLA) models have emerged as strong priors for robotic manipulation, yet adapting them to real-world distributions remains challenging. In particular, on-robot reinforcement learning (RL) is expensive and time-consuming, so effective adaptation depends on efficient policy improvement within a limited budget of real-world interactions. Noise-space RL lowers the cost by keeping the pretrained VLA fixed as a denoising generator while updating only a lightweight actor that predicts the noise. However, its performance is still limited due to inefficient autonomous exploration. Human corrective interventions can reduce this exploration burden, but they are naturally provided in action space, whereas noise-space finetuning requires supervision over noise variables. To address these challenges, we propose UniSteer, a Unified Noise Steering framework that combines human corrective guidance with noise-space RL through approximate action-to-noise inversion. Given a human corrective action, UniSteer inverts the frozen flow-matching decoder to recover a noise target, which provides supervised guidance for the same noise actor that is simultaneously optimized via reinforcement learning. Real-world experiments on diverse manipulation tasks show that UniSteer adapts more efficiently than strong noise-space RL and action-space human-in-the-loop baselines, improving the success rate from 20% to 90% in 66 minutes on average across four real-world adaptation tasks.