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arxiv:2604.16299

Repurposing 3D Generative Model for Autoregressive Layout Generation

Published on Apr 17
· Submitted by
Haoran Feng
on Apr 20
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Abstract

LaviGen introduces a 3D layout generation framework that uses an adapted 3D diffusion model with dual-guidance self-rollout distillation for improved efficiency and spatial accuracy.

AI-generated summary

We introduce LaviGen, a framework that repurposes 3D generative models for 3D layout generation. Unlike previous methods that infer object layouts from textual descriptions, LaviGen operates directly in the native 3D space, formulating layout generation as an autoregressive process that explicitly models geometric relations and physical constraints among objects, producing coherent and physically plausible 3D scenes. To further enhance this process, we propose an adapted 3D diffusion model that integrates scene, object, and instruction information and employs a dual-guidance self-rollout distillation mechanism to improve efficiency and spatial accuracy. Extensive experiments on the LayoutVLM benchmark show LaviGen achieves superior 3D layout generation performance, with 19% higher physical plausibility than the state of the art and 65% faster computation. Our code is publicly available at https://github.com/fenghora/LaviGen.

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Accepted by CVPR 2026

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