English

Normalizing Flows are Capable Models for Bi-manual Visuomotor Policy

Robotics 2026-02-26 v2

Abstract

The field of general-purpose robotics has recently embraced powerful probabilistic diffusion-based models to learn the complex embodiment behaviours. However, existing models often come with significant trade-offs, namely high computational costs for inference and a fundamental inability to quantify output uncertainty. We introduce Normalizing Flows Policy (NF-P), a conditional normalizing flow-based visuomotor policy for bi-manual manipulation. NF-P learns a conditional density over action sequences and enables single-pass generative sampling with tractable likelihood computation. Using this property, we propose two inference-time optimization strategies: Stochastic Batch Selection, which selects the highest-likelihood trajectory among sampled candidates, and Gradient Refinement, which directly ascends the log-likelihood to improve action quality. In both simulation and real robot experiments, NF-P achieves promising success rates compared to the baseline. In addition to improved task performance, NF-P demonstrates faster training and lower inference latency. These results establish normalizing flows as a competitive and computationally efficient visuomotor policy, particularly for real-time, uncertainty-aware robotic control.

Keywords

Cite

@article{arxiv.2509.21073,
  title  = {Normalizing Flows are Capable Models for Bi-manual Visuomotor Policy},
  author = {Jialong Li and Simon Kristoffersson Lind and Wenrui Xie and Maj Stenmark and Volker Krüger},
  journal= {arXiv preprint arXiv:2509.21073},
  year   = {2026}
}
R2 v1 2026-07-01T05:55:59.116Z