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arxiv:2603.19708

WorldAgents: Can Foundation Image Models be Agents for 3D World Models?

Published on Mar 20
· Submitted by
taesiri
on Mar 23
Authors:
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Abstract

2D image models possess inherent 3D world modeling capabilities that can be harnessed through an agentic framework for 3D scene synthesis and reconstruction.

AI-generated summary

Given the remarkable ability of 2D foundation image models to generate high-fidelity outputs, we investigate a fundamental question: do 2D foundation image models inherently possess 3D world model capabilities? To answer this, we systematically evaluate multiple state-of-the-art image generation models and Vision-Language Models (VLMs) on the task of 3D world synthesis. To harness and benchmark their potential implicit 3D capability, we propose an agentic framing to facilitate 3D world generation. Our approach employs a multi-agent architecture: a VLM-based director that formulates prompts to guide image synthesis, a generator that synthesizes new image views, and a VLM-backed two-step verifier that evaluates and selectively curates generated frames from both 2D image and 3D reconstruction space. Crucially, we demonstrate that our agentic approach provides coherent and robust 3D reconstruction, producing output scenes that can be explored by rendering novel views. Through extensive experiments across various foundation models, we demonstrate that 2D models do indeed encapsulate a grasp of 3D worlds. By exploiting this understanding, our method successfully synthesizes expansive, realistic, and 3D-consistent worlds.

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Paper submitter

Shows that 2D foundation image models encode 3D world understanding, enabling a multi-agent Director-Generator-Verifier system to synthesize coherent, 3D-consistent scenes and novel-view reconstructions.

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