GMODiff: One-Step Gain Map Refinement with Diffusion Priors for HDR Reconstruction
Tao Hu, Weiyu Zhou, Yanjie Tu, Peng Wu, Wei Dong, Qingsen Yan, Yanning Zhang

TL;DR
GMODiff introduces a one-step diffusion approach using gain maps for HDR reconstruction, significantly improving speed and fidelity by guiding the process with regression priors and reducing hallucinations.
Contribution
The paper proposes GMODiff, a novel one-step diffusion framework that reformulates HDR reconstruction as gain map estimation, overcoming limitations of existing LDM-based methods.
Findings
Outperforms state-of-the-art HDR methods in quality.
Achieves 100x faster inference than previous LDM-based approaches.
Effectively suppresses hallucinations while maintaining structural accuracy.
Abstract
Pre-trained Latent Diffusion Models (LDMs) have recently shown strong perceptual priors for low-level vision tasks, making them a promising direction for multi-exposure High Dynamic Range (HDR) reconstruction. However, directly applying LDMs to HDR remains challenging due to: (1) limited dynamic-range representation caused by 8-bit latent compression, (2) high inference cost from multi-step denoising, and (3) content hallucination inherent to generative nature. To address these challenges, we introduce GMODiff, a gain map-driven one-step diffusion framework for multi-exposure HDR reconstruction. Instead of reconstructing full HDR content, we reformulate HDR reconstruction as a conditionally guided Gain Map (GM) estimation task, where the GM encodes the extended dynamic range while retaining the same bit depth as LDR images. We initialize the denoising process from an informative…
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Taxonomy
TopicsImage Enhancement Techniques · Generative Adversarial Networks and Image Synthesis · Advanced Image Processing Techniques
