RealOSR: Latent Guidance Boosts Diffusion-based Real-world Omnidirectional Image Super-Resolutions
Xuhan Sheng, Runyi Li, Bin Chen, Weiqi Li, Xu Jiang, Jian Zhang

TL;DR
RealOSR introduces a diffusion-based approach with latent guidance for real-world omnidirectional image super-resolution, achieving high quality and over 200 times faster inference than previous methods.
Contribution
The paper proposes RealOSR, a novel diffusion framework with a lightweight latent guidance module, enabling efficient one-step denoising for real-world ODISR.
Findings
Significant visual quality improvements over existing methods.
Over 200x faster inference compared to recent diffusion-based approaches.
Effective pixel-latent interactions via LaGAR module.
Abstract
Omnidirectional image super-resolution (ODISR) aims to upscale low-resolution (LR) omnidirectional images (ODIs) to high-resolution (HR), catering to the growing demand for detailed visual content across a viewport. Existing ODISR methods are limited by simplified degradation assumptions (e.g., bicubic downsampling), failing to model and exploit the real-world degradation information. Recent latent-based diffusion approaches using condition guidance suffer from slow inference due to their hundreds of updating steps and frequent use of VAE. To tackle these challenges, we propose \textbf{RealOSR}, a diffusion-based framework tailored for real-world ODISR, featuring efficient latent-based condition guidance within a one-step denoising paradigm. Central to efficient latent-based condition guidance is the proposed \textbf{Latent Gradient Alignment Routing…
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Taxonomy
TopicsAdvanced Image Processing Techniques · Advanced Vision and Imaging · Image and Signal Denoising Methods
MethodsDiffusion
