DINOLight: Robust Ambient Light Normalization with Self-supervised Visual Prior Integration
arXiv cs.CV / 3/16/2026
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Key Points
- DINOLight introduces a new ambient light normalization framework that uses DINOv2's self-supervised features as a visual prior for restoration.
- It features an adaptive feature fusion module that combines DINOv2 multi-layer features using a point-wise softmax mask.
- The fused features are integrated into the restoration network in both spatial and frequency domains via an auxiliary cross-attention mechanism.
- Experiments on Ambient6K show state-of-the-art performance with competitive results on shadow-removal benchmarks, and code will be released upon acceptance.
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