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Poster

Learn to Optimize Denoising Scores: A Unified and Improved Diffusion Prior for 3D Generation

Xiaofeng Yang · Yiwen Chen · Cheng Chen · Chi Zhang · Yi Xu · Xulei Yang · Fayao Liu · Guosheng Lin

# 239
[ ] [ Paper PDF ]
Thu 3 Oct 7:30 a.m. PDT — 9:30 a.m. PDT

Abstract:

In this paper, we propose a unified framework aimed at enhancing the diffusion priors for 3D generation tasks. Despite the critical importance of these tasks, existing methodologies often struggle to generate high-caliber results. We begin by examining the inherent limitations in previous diffusion priors. We identify a divergence between the diffusion priors and the training procedures of diffusion models that substantially impairs the quality of 3D generation. To address this issue, we propose a novel, unified framework that iteratively optimizes both the 3D model and the diffusion prior. Leveraging the different learnable parameters of the diffusion prior, our approach offers multiple configurations, affording various trade-offs between performance and implementation complexity. Notably, our experimental results demonstrate that our method markedly surpasses existing techniques, establishing new state-of-the-art in the realm of text-to-3D generation. Additionally, our framework yields insightful contributions to the understanding of recent score distillation methods, such as the VSD loss and CSD loss.

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