FreeFix: Boosting 3D Gaussian Splatting via Fine-Tuning-Free Diffusion Models
Hongyu Zhou, Zisen Shao, Sheng Miao, Pan Wang, Dongfeng Bai, Bingbing Liu, Yiyi Liao

TL;DR
FreeFix introduces a novel fine-tuning-free method that leverages pretrained diffusion models to enhance 3D Gaussian Splatting, improving extrapolated view synthesis without overfitting or sacrificing generalization.
Contribution
It presents an interleaved 2D-3D refinement strategy using pretrained diffusion models, avoiding costly fine-tuning while boosting rendering quality and consistency.
Findings
Improves multi-frame consistency in 3D rendering.
Achieves comparable or better performance than fine-tuning methods.
Retains strong generalization ability across datasets.
Abstract
Neural Radiance Fields and 3D Gaussian Splatting have advanced novel view synthesis, yet still rely on dense inputs and often degrade at extrapolated views. Recent approaches leverage generative models, such as diffusion models, to provide additional supervision, but face a trade-off between generalization and fidelity: fine-tuning diffusion models for artifact removal improves fidelity but risks overfitting, while fine-tuning-free methods preserve generalization but often yield lower fidelity. We introduce FreeFix, a fine-tuning-free approach that pushes the boundary of this trade-off by enhancing extrapolated rendering with pretrained image diffusion models. We present an interleaved 2D-3D refinement strategy, showing that image diffusion models can be leveraged for consistent refinement without relying on costly video diffusion models. Furthermore, we take a closer look at the…
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Taxonomy
TopicsGenerative Adversarial Networks and Image Synthesis · Computer Graphics and Visualization Techniques · Domain Adaptation and Few-Shot Learning
