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Autori principali: Zhen, Haoyu, Gao, Zixian, Sun, Qiao, Zhao, Yilin, Yang, Yuncong, Du, Yilun, Guo, Pengsheng, Wang, Tsun-Hsuan, Qiao, Yi-Ling, Gan, Chuang
Natura: Preprint
Pubblicazione: 2026
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Accesso online:https://arxiv.org/abs/2604.06168
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author Zhen, Haoyu
Gao, Zixian
Sun, Qiao
Zhao, Yilin
Yang, Yuncong
Du, Yilun
Guo, Pengsheng
Wang, Tsun-Hsuan
Qiao, Yi-Ling
Gan, Chuang
author_facet Zhen, Haoyu
Gao, Zixian
Sun, Qiao
Zhao, Yilin
Yang, Yuncong
Du, Yilun
Guo, Pengsheng
Wang, Tsun-Hsuan
Qiao, Yi-Ling
Gan, Chuang
contents World action models (WAMs) have emerged as a promising direction for robot policy learning, as they can leverage powerful video backbones to model the future states. However, existing approaches often rely on separate action modules, or use action representations that are not pixel-grounded, making it difficult to fully exploit the pretrained knowledge of video models and limiting transfer across viewpoints and environments. In this work, we present Action Images, a unified world action model that formulates policy learning as multiview video generation. Instead of encoding control as low-dimensional tokens, we translate 7-DoF robot actions into interpretable action images: multi-view action videos that are grounded in 2D pixels and explicitly track robot-arm motion. This pixel-grounded action representation allows the video backbone itself to act as a zero-shot policy, without a separate policy head or action module. Beyond control, the same unified model supports video-action joint generation, action-conditioned video generation, and action labeling under a shared representation. On RLBench and real-world evaluations, our model achieves the strongest zero-shot success rates and improves video-action joint generation quality over prior video-space world models, suggesting that interpretable action images are a promising route to policy learning.
format Preprint
id arxiv_https___arxiv_org_abs_2604_06168
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Action Images: End-to-End Policy Learning via Multiview Video Generation
Zhen, Haoyu
Gao, Zixian
Sun, Qiao
Zhao, Yilin
Yang, Yuncong
Du, Yilun
Guo, Pengsheng
Wang, Tsun-Hsuan
Qiao, Yi-Ling
Gan, Chuang
Computer Vision and Pattern Recognition
Robotics
World action models (WAMs) have emerged as a promising direction for robot policy learning, as they can leverage powerful video backbones to model the future states. However, existing approaches often rely on separate action modules, or use action representations that are not pixel-grounded, making it difficult to fully exploit the pretrained knowledge of video models and limiting transfer across viewpoints and environments. In this work, we present Action Images, a unified world action model that formulates policy learning as multiview video generation. Instead of encoding control as low-dimensional tokens, we translate 7-DoF robot actions into interpretable action images: multi-view action videos that are grounded in 2D pixels and explicitly track robot-arm motion. This pixel-grounded action representation allows the video backbone itself to act as a zero-shot policy, without a separate policy head or action module. Beyond control, the same unified model supports video-action joint generation, action-conditioned video generation, and action labeling under a shared representation. On RLBench and real-world evaluations, our model achieves the strongest zero-shot success rates and improves video-action joint generation quality over prior video-space world models, suggesting that interpretable action images are a promising route to policy learning.
title Action Images: End-to-End Policy Learning via Multiview Video Generation
topic Computer Vision and Pattern Recognition
Robotics
url https://arxiv.org/abs/2604.06168