Retinex-Diffusion: On Controlling Illumination Conditions in Diffusion Models via Retinex Theory
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This paper introduces a novel approach to illumination manipulation in diffusion models, addressing the gap in conditional image generation with a focus on lighting conditions. We conceptualize the diffusion model as a black-box image render and strategically decompose its energy function in alignment with the image formation model. Our method effectively separates and controls illumination-related properties during the generative process. It generates images with realistic illumination effects, including cast shadow, soft shadow, and inter-reflections. Remarkably, it achieves this without the necessity for learning intrinsic decomposition, finding directions in latent space, or undergoing additional training with new datasets.
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LumiCtrl : Learning Illuminant Prompts for Lighting Control in Personalized Text-to-Image Models
LumiCtrl learns illuminant prompts from one image using physics-based augmentation, edge-guided disentanglement, and masked reconstruction to control lighting in T2I models with better fidelity than baselines.
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