SIMART: Decomposing Monolithic Meshes into Sim-ready Articulated Assets via MLLM
Abstract
A unified multimodal large language model framework called SIMART is proposed for generating articulated 3D assets with reduced tokenization overhead and improved simulation readiness.
High-quality articulated 3D assets are indispensable for embodied AI and physical simulation, yet 3D generation still focuses on static meshes, leaving a gap in "sim-ready" interactive objects. Most recent articulated object creation methods rely on multi-stage pipelines that accumulate errors across decoupled modules. Alternatively, unified MLLMs offer a single-stage path to joint static asset understanding and sim-ready asset generation. However dense voxel-based 3D tokenization yields long 3D token sequences and high memory overhead, limiting scalability to complex articulated objects. To address this, we propose SIMART, a unified MLLM framework that jointly performs part-level decomposition and kinematic prediction. By introducing a Sparse 3D VQ-VAE, SIMART reduces token counts by 70% vs. dense voxel tokens, enabling high-fidelity multi-part assemblies. SIMART achieves state-of-the-art performance on PartNet-Mobility and in-the-wild AIGC datasets, and enables physics-based robotic simulation.
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arxiv: https://arxiv.org/pdf/2603.23386
video demo: https://www.youtube.com/watch?v=Facqav-LthQ
project page: https://simart-mllm.github.io/
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