Saved in:
Bibliographic Details
Main Authors: Yin, Ze-Xin, Qiu, Jiaxiong, Liu, Liu, Wang, Xinjie, Sui, Wei, Su, Zhizhong, Yang, Jian, Xie, Jin
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2509.07435
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866913006309343232
author Yin, Ze-Xin
Qiu, Jiaxiong
Liu, Liu
Wang, Xinjie
Sui, Wei
Su, Zhizhong
Yang, Jian
Xie, Jin
author_facet Yin, Ze-Xin
Qiu, Jiaxiong
Liu, Liu
Wang, Xinjie
Sui, Wei
Su, Zhizhong
Yang, Jian
Xie, Jin
contents The labor- and experience-intensive creation of 3D assets with physically based rendering (PBR) materials demands an autonomous 3D asset creation pipeline. However, most existing 3D generation methods focus on geometry modeling, either baking textures into simple vertex colors or leaving texture synthesis to post-processing with image diffusion models. To achieve end-to-end PBR-ready 3D asset generation, we present Lightweight Gaussian Asset Adapter (LGAA), a novel framework that unifies the modeling of geometry and PBR materials by exploiting multi-view (MV) diffusion priors from a novel perspective. The LGAA features a modular design with three components. Specifically, the LGAA Wrapper reuses and adapts network layers from MV diffusion models, which encapsulate knowledge acquired from billions of images, enabling better convergence in a data-efficient manner. To incorporate multiple diffusion priors for geometry and PBR synthesis, the LGAA Switcher aligns multiple LGAA Wrapper layers encapsulating different knowledge. Then, a tamed variational autoencoder (VAE), termed LGAA Decoder, is designed to predict 2D Gaussian Splatting (2DGS) with PBR channels. Finally, we introduce a dedicated post-processing procedure to effectively extract high-quality, relightable mesh assets from the resulting 2DGS. Extensive quantitative and qualitative experiments demonstrate the superior performance of LGAA with both text- and image-conditioned MV diffusion models. Additionally, the modular design enables flexible incorporation of multiple diffusion priors, and the knowledge-preserving scheme effectively preseves the 2D priors learned on massive image dataset, which leads to data efficient finetuning to lift the MV diffuison models for 3D generation with merely 69k multi-view instances.
format Preprint
id arxiv_https___arxiv_org_abs_2509_07435
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle DreamLifting: A Plug-in Module Lifting MV Diffusion Models for 3D Asset Generation
Yin, Ze-Xin
Qiu, Jiaxiong
Liu, Liu
Wang, Xinjie
Sui, Wei
Su, Zhizhong
Yang, Jian
Xie, Jin
Computer Vision and Pattern Recognition
The labor- and experience-intensive creation of 3D assets with physically based rendering (PBR) materials demands an autonomous 3D asset creation pipeline. However, most existing 3D generation methods focus on geometry modeling, either baking textures into simple vertex colors or leaving texture synthesis to post-processing with image diffusion models. To achieve end-to-end PBR-ready 3D asset generation, we present Lightweight Gaussian Asset Adapter (LGAA), a novel framework that unifies the modeling of geometry and PBR materials by exploiting multi-view (MV) diffusion priors from a novel perspective. The LGAA features a modular design with three components. Specifically, the LGAA Wrapper reuses and adapts network layers from MV diffusion models, which encapsulate knowledge acquired from billions of images, enabling better convergence in a data-efficient manner. To incorporate multiple diffusion priors for geometry and PBR synthesis, the LGAA Switcher aligns multiple LGAA Wrapper layers encapsulating different knowledge. Then, a tamed variational autoencoder (VAE), termed LGAA Decoder, is designed to predict 2D Gaussian Splatting (2DGS) with PBR channels. Finally, we introduce a dedicated post-processing procedure to effectively extract high-quality, relightable mesh assets from the resulting 2DGS. Extensive quantitative and qualitative experiments demonstrate the superior performance of LGAA with both text- and image-conditioned MV diffusion models. Additionally, the modular design enables flexible incorporation of multiple diffusion priors, and the knowledge-preserving scheme effectively preseves the 2D priors learned on massive image dataset, which leads to data efficient finetuning to lift the MV diffuison models for 3D generation with merely 69k multi-view instances.
title DreamLifting: A Plug-in Module Lifting MV Diffusion Models for 3D Asset Generation
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2509.07435