CVJan 29

PI-Light: Physics-Inspired Diffusion for Full-Image Relighting

arXiv:2601.22135v12 citationsh-index: 4
Originality Incremental advance
AI Analysis

This work addresses the problem of realistic image editing for computer vision and graphics applications, but it appears incremental as it builds on existing diffusion models with physics-inspired enhancements.

The paper tackles the problem of full-image relighting by addressing challenges in data collection, physical plausibility, and generalizability, introducing a two-stage physics-inspired diffusion framework that achieves superior generalization to real-world scenes compared to prior approaches.

Full-image relighting remains a challenging problem due to the difficulty of collecting large-scale structured paired data, the difficulty of maintaining physical plausibility, and the limited generalizability imposed by data-driven priors. Existing attempts to bridge the synthetic-to-real gap for full-scene relighting remain suboptimal. To tackle these challenges, we introduce Physics-Inspired diffusion for full-image reLight ($π$-Light, or PI-Light), a two-stage framework that leverages physics-inspired diffusion models. Our design incorporates (i) batch-aware attention, which improves the consistency of intrinsic predictions across a collection of images, (ii) a physics-guided neural rendering module that enforces physically plausible light transport, (iii) physics-inspired losses that regularize training dynamics toward a physically meaningful landscape, thereby enhancing generalizability to real-world image editing, and (iv) a carefully curated dataset of diverse objects and scenes captured under controlled lighting conditions. Together, these components enable efficient finetuning of pretrained diffusion models while also providing a solid benchmark for downstream evaluation. Experiments demonstrate that $π$-Light synthesizes specular highlights and diffuse reflections across a wide variety of materials, achieving superior generalization to real-world scenes compared with prior approaches.

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