DreamSparse: Escaping from Plato's Cave with 2D Frozen Diffusion Model Given Sparse Views
Paul Yoo, Jiaxian Guo, Yutaka Matsuo, Shixiang Shane Gu

TL;DR
DreamSparse leverages pre-trained 2D diffusion models with a novel geometry module to synthesize high-quality, geometry and identity-consistent novel views from sparse inputs without tuning the diffusion model.
Contribution
The paper introduces DreamSparse, a framework that integrates a 3D prior into frozen pre-trained diffusion models for novel view synthesis from sparse views.
Findings
Outperforms baseline methods in quality and consistency.
Capable of synthesizing views for both objects and scenes.
Generalizes well to open-set images.
Abstract
Synthesizing novel view images from a few views is a challenging but practical problem. Existing methods often struggle with producing high-quality results or necessitate per-object optimization in such few-view settings due to the insufficient information provided. In this work, we explore leveraging the strong 2D priors in pre-trained diffusion models for synthesizing novel view images. 2D diffusion models, nevertheless, lack 3D awareness, leading to distorted image synthesis and compromising the identity. To address these problems, we propose DreamSparse, a framework that enables the frozen pre-trained diffusion model to generate geometry and identity-consistent novel view image. Specifically, DreamSparse incorporates a geometry module designed to capture 3D features from sparse views as a 3D prior. Subsequently, a spatial guidance model is introduced to convert these 3D feature maps…
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Taxonomy
TopicsGenerative Adversarial Networks and Image Synthesis · Advanced Vision and Imaging · Advanced Image and Video Retrieval Techniques
MethodsDiffusion
