Saved in:
Bibliographic Details
Main Authors: Zhang, Zijian, Jiang, Yuqing, Cheng, Qian, Li, Xiaofan, Liu, Si, Zhao, Ding, Luo, Ping, Zhou, Weitao, Yu, Haibao
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2605.20752
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866914614086729728
author Zhang, Zijian
Jiang, Yuqing
Cheng, Qian
Li, Xiaofan
Liu, Si
Zhao, Ding
Luo, Ping
Zhou, Weitao
Yu, Haibao
author_facet Zhang, Zijian
Jiang, Yuqing
Cheng, Qian
Li, Xiaofan
Liu, Si
Zhao, Ding
Luo, Ping
Zhou, Weitao
Yu, Haibao
contents Vision-language-action (VLA) policies have advanced language-conditioned robotic manipulation by transferring semantic priors from pretrained vision-language models to action generation. However, standard action-imitation learning often lacks sufficient modeling of explicit 3D spatial information, dense geometric supervision, and future environment evolution, all critical for precise robotic interaction. To address this, we propose \textbf{GaussianDream}, a feed-forward 3D Gaussian world-model plug-in. Specifically, we introduce learnable GaussianDream Queries in the encoder, enabling the model to capture current-frame 3D spatial structure and short-horizon future evolution. During training, the latent GaussianDream prefix is processed by a static reconstruction head and a future prediction head to produce current 3D Gaussian scene states and future Gaussian evolution states. The current branch is supervised by RGB rendering and depth, while the future branch uses future RGB, depth, and pseudo 3D scene-flow signals. During inference, GaussianDream discards all auxiliary heads and retains only the learned prefix to condition action generation, without test-time Gaussian reconstruction or future prediction. Experimental results demonstrate that GaussianDream achieves state-of-the-art performance across multiple robotic manipulation benchmarks, reaching \textbf{98.4\%} on LIBERO, \textbf{54.8\%} on RoboCasa Human-50, and \textbf{50.0\%} on real-robot tasks. Compared with existing 3D-enhanced VLA methods, GaussianDream achieves strong accuracy while providing higher inference efficiency than video-based world-model approaches.
format Preprint
id arxiv_https___arxiv_org_abs_2605_20752
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle GaussianDream: A Feed-Forward 3D Gaussian World Model for Robotic Manipulation
Zhang, Zijian
Jiang, Yuqing
Cheng, Qian
Li, Xiaofan
Liu, Si
Zhao, Ding
Luo, Ping
Zhou, Weitao
Yu, Haibao
Robotics
Vision-language-action (VLA) policies have advanced language-conditioned robotic manipulation by transferring semantic priors from pretrained vision-language models to action generation. However, standard action-imitation learning often lacks sufficient modeling of explicit 3D spatial information, dense geometric supervision, and future environment evolution, all critical for precise robotic interaction. To address this, we propose \textbf{GaussianDream}, a feed-forward 3D Gaussian world-model plug-in. Specifically, we introduce learnable GaussianDream Queries in the encoder, enabling the model to capture current-frame 3D spatial structure and short-horizon future evolution. During training, the latent GaussianDream prefix is processed by a static reconstruction head and a future prediction head to produce current 3D Gaussian scene states and future Gaussian evolution states. The current branch is supervised by RGB rendering and depth, while the future branch uses future RGB, depth, and pseudo 3D scene-flow signals. During inference, GaussianDream discards all auxiliary heads and retains only the learned prefix to condition action generation, without test-time Gaussian reconstruction or future prediction. Experimental results demonstrate that GaussianDream achieves state-of-the-art performance across multiple robotic manipulation benchmarks, reaching \textbf{98.4\%} on LIBERO, \textbf{54.8\%} on RoboCasa Human-50, and \textbf{50.0\%} on real-robot tasks. Compared with existing 3D-enhanced VLA methods, GaussianDream achieves strong accuracy while providing higher inference efficiency than video-based world-model approaches.
title GaussianDream: A Feed-Forward 3D Gaussian World Model for Robotic Manipulation
topic Robotics
url https://arxiv.org/abs/2605.20752