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arxiv: 2603.19216 · v2 · pith:52LSO75E · submitted 2026-03-19 · cs.CV · cs.AI· cs.LG

DreamPartGen: Semantically Grounded Part-Level 3D Generation via Collaborative Latent Denoising

Reviewed by Pithpith:52LSO75Eopen to challenge →

classification cs.CV cs.AIcs.LG
keywords dreampartgensemanticpartsgenerationgeometricgroundedinter-partlatents
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Understanding and generating 3D objects as compositions of meaningful parts is fundamental to human perception and reasoning. However, most text-to-3D methods overlook the semantic and functional structure of parts. While recent part-aware approaches introduce decomposition, they remain largely geometry-focused, lacking semantic grounding and failing to model how parts align with textual descriptions or their inter-part relations. We propose DreamPartGen, a framework for semantically grounded, part-aware text-to-3D generation. DreamPartGen introduces Duplex Part Latents (DPLs) that jointly model each part's geometry and appearance, and Relational Semantic Latents (RSLs) that capture inter-part dependencies derived from language. A synchronized co-denoising process enforces mutual geometric and semantic consistency, enabling coherent, interpretable, and text-aligned 3D synthesis. Across multiple benchmarks, DreamPartGen delivers state-of-the-art performance in geometric fidelity and text-shape alignment.

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