EPISODE · Apr 22, 2026 · 21 MIN
MultiWorld: Scalable Multi-Agent Multi-View Video World Models
from Daily Paper Cast · host Jingwen Liang, Gengyu Wang
🤗 Upvotes: 36 | cs.CV Authors: Haoyu Wu, Jiwen Yu, Yingtian Zou, Xihui Liu Title: MultiWorld: Scalable Multi-Agent Multi-View Video World Models Arxiv: http://arxiv.org/abs/2604.18564v2 Abstract: Video world models have achieved remarkable success in simulating environmental dynamics in response to actions by users or agents. They are modeled as action-conditioned video generation models that take historical frames and current actions as input to predict future frames. Yet, most existing approaches are limited to single-agent scenarios and fail to capture the complex interactions inherent in real-world multi-agent systems. We present \textbf{MultiWorld}, a unified framework for multi-agent multi-view world modeling that enables accurate control of multiple agents while maintaining multi-view consistency. We introduce the Multi-Agent Condition Module to achieve precise multi-agent controllability, and the Global State Encoder to ensure coherent observations across different views. MultiWorld supports flexible scaling of agent and view counts, and synthesizes different views in parallel for high efficiency. Experiments on multi-player game environments and multi-robot manipulation tasks demonstrate that MultiWorld outperforms baselines in video fidelity, action-following ability, and multi-view consistency. Project page: https://multi-world.github.io/
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🤗 Upvotes: 36 | cs.CV Authors: Haoyu Wu, Jiwen Yu, Yingtian Zou, Xihui Liu Title: MultiWorld: Scalable Multi-Agent Multi-View Video World Models Arxiv: http://arxiv.org/abs/2604.18564v2 Abstract: Video world models have achieved remarkable success in simulating environmental dynamics in response to actions by users or agents. They are modeled as action-conditioned video generation models that take historical frames and current actions as input to predict future frames. Yet, most existing approaches are limited to single-agent scenarios and fail to capture the complex interactions inherent in real-world multi-agent systems. We present \textbf{MultiWorld}, a unified framework for multi-agent multi-view world modeling that enables accurate control of multiple agents while maintaining multi-view consistency. We introduce the Multi-Agent Condition Module to achieve precise multi-agent controllability, and the Global State Encoder to ensure coherent observations across different views. MultiWorld supports flexible scaling of agent and view counts, and synthesizes different views in parallel for high efficiency. Experiments on multi-player game environments and multi-robot manipulation tasks demonstrate that MultiWorld outperforms baselines in video fidelity, action-following ability, and multi-view consistency. Project page: https://multi-world.github.io/
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MultiWorld: Scalable Multi-Agent Multi-View Video World Models
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