English

MoVie: Visual Model-Based Policy Adaptation for View Generalization

Machine Learning 2023-09-28 v3 Computer Vision and Pattern Recognition Robotics

Abstract

Visual Reinforcement Learning (RL) agents trained on limited views face significant challenges in generalizing their learned abilities to unseen views. This inherent difficulty is known as the problem of view generalization\textit{view generalization}. In this work, we systematically categorize this fundamental problem into four distinct and highly challenging scenarios that closely resemble real-world situations. Subsequently, we propose a straightforward yet effective approach to enable successful adaptation of visual Mo\textbf{Mo}del-based policies for Vie\textbf{Vie}w generalization (MoVie\textbf{MoVie}) during test time, without any need for explicit reward signals and any modification during training time. Our method demonstrates substantial advancements across all four scenarios encompassing a total of 18\textbf{18} tasks sourced from DMControl, xArm, and Adroit, with a relative improvement of 33\mathbf{33}%, 86\mathbf{86}%, and 152\mathbf{152}% respectively. The superior results highlight the immense potential of our approach for real-world robotics applications. Videos are available at https://yangsizhe.github.io/MoVie/ .

Keywords

Cite

@article{arxiv.2307.00972,
  title  = {MoVie: Visual Model-Based Policy Adaptation for View Generalization},
  author = {Sizhe Yang and Yanjie Ze and Huazhe Xu},
  journal= {arXiv preprint arXiv:2307.00972},
  year   = {2023}
}

Comments

Accepted in NeurIPS 2023. The first two authors contribute equally

R2 v1 2026-06-28T11:20:42.537Z