CVApr 3, 2025

Comprehensive Relighting: Generalizable and Consistent Monocular Human Relighting and Harmonization

arXiv:2504.03011v110 citationsh-index: 7CVPR
Originality Incremental advance
AI Analysis

This addresses the challenge of controlling and harmonizing lighting for humans in arbitrary scenes, which is incremental as it builds on pre-trained diffusion models and coarse-to-fine frameworks.

The paper tackles the problem of generalizable and consistent monocular human relighting and harmonization from images or videos, achieving strong generalizability and lighting temporal coherence that outperforms existing methods.

This paper introduces Comprehensive Relighting, the first all-in-one approach that can both control and harmonize the lighting from an image or video of humans with arbitrary body parts from any scene. Building such a generalizable model is extremely challenging due to the lack of dataset, restricting existing image-based relighting models to a specific scenario (e.g., face or static human). To address this challenge, we repurpose a pre-trained diffusion model as a general image prior and jointly model the human relighting and background harmonization in the coarse-to-fine framework. To further enhance the temporal coherence of the relighting, we introduce an unsupervised temporal lighting model that learns the lighting cycle consistency from many real-world videos without any ground truth. In inference time, our temporal lighting module is combined with the diffusion models through the spatio-temporal feature blending algorithms without extra training; and we apply a new guided refinement as a post-processing to preserve the high-frequency details from the input image. In the experiments, Comprehensive Relighting shows a strong generalizability and lighting temporal coherence, outperforming existing image-based human relighting and harmonization methods.

Foundations

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