Keywords: Embodied AI; Multi-agent Planning; Compositional World Model
TL;DR: We learn a compositional world model for multi-agent cooperation by factorizing the joint actions of multiple agents and compositionally generating the video. In combination with VLMs, a tree search procedure enables online cooperative planning.
Abstract: In this paper, we investigate the problem of embodied multi-agent cooperation, where decentralized agents must cooperate given only egocentric views of the world. To effectively plan in this setting, in contrast to learning world dynamics in a single-agent scenario, we must simulate world dynamics conditioned on an arbitrary number of agents' actions given only partial egocentric visual observations of the world. To address this issue of partial observability, we first train generative models to estimate the overall world state given partial egocentric observations. To enable accurate simulation of multiple sets of actions on this world state, we then propose to learn a compositional world model for multi-agent cooperation by factorizing the naturally composable joint actions of multiple agents and compositionally generating the video conditioned on the world state. By leveraging this compositional world model, in combination with Vision Language Models to infer the actions of other agents, we can use a tree search procedure to integrate these modules and facilitate online cooperative planning. We evaluate our methods on three challenging benchmarks with 2-4 agents. The results show our compositional world model is effective and the framework enables the embodied agents to cooperate efficiently with different agents across various tasks and an arbitrary number of agents, showing the promising future of our proposed methods. More videos can be found at \url{https://combo-iclr.github.io/COMBO/}.
Supplementary Material: zip
Primary Area: applications to robotics, autonomy, planning
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Submission Number: 238
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