DreamCatalyst: Fast and High-Quality 3D Editing via Controlling Editability and Identity Preservation
Jiwook Kim, Seonho Lee, Jaeyo Shin, Jiho Choi, and Hyunjung Shim

TL;DR
DreamCatalyst introduces a diffusion-based 3D editing framework that significantly reduces training time and enhances quality by aligning with diffusion sampling dynamics, outperforming existing methods in speed and fidelity.
Contribution
It proposes a novel diffusion reverse process approach for 3D editing, addressing SDS limitations and improving efficiency and quality over prior methods.
Findings
23x faster NeRF editing in fast mode
8x faster high-quality NeRF editing
Outperforms state-of-the-art in speed and quality
Abstract
Score distillation sampling (SDS) has emerged as an effective framework in text-driven 3D editing tasks, leveraging diffusion models for 3D-consistent editing. However, existing SDS-based 3D editing methods suffer from long training times and produce low-quality results. We identify that the root cause of this performance degradation is \textit{their conflict with the sampling dynamics of diffusion models}. Addressing this conflict allows us to treat SDS as a diffusion reverse process for 3D editing via sampling from data space. In contrast, existing methods naively distill the score function using diffusion models. From these insights, we propose DreamCatalyst, a novel framework that considers these sampling dynamics in the SDS framework. Specifically, we devise the optimization process of our DreamCatalyst to approximate the diffusion reverse process in editing tasks, thereby aligning…
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Taxonomy
Topics3D Shape Modeling and Analysis · Computer Graphics and Visualization Techniques · Image Processing and 3D Reconstruction
MethodsDiffusion
