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Main Authors: Beltrame, Lorenzo, Salzinger, Jules, Svoboda, Filip, Lampert, Jasmin, Fanta-Jende, Phillipp, Timofte, Radu, Körner, Marco
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2604.16177
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author Beltrame, Lorenzo
Salzinger, Jules
Svoboda, Filip
Lampert, Jasmin
Fanta-Jende, Phillipp
Timofte, Radu
Körner, Marco
author_facet Beltrame, Lorenzo
Salzinger, Jules
Svoboda, Filip
Lampert, Jasmin
Fanta-Jende, Phillipp
Timofte, Radu
Körner, Marco
contents We present a three-stage progressive shadow-removal pipeline for the CVPR2026 NTIRE WSRD+ challenge. Built on OmniSR, our method treats deshadowing as iterative direct refinement, where later stages correct residual artefacts left by earlier predictions. The model combines RGB appearance with frozen DINOv2 semantic guidance and geometric cues from monocular depth and surface normals, reused across all stages. To stabilise multi-stage optimisation, we introduce a contraction-constrained objective that encourages non-increasing reconstruction error across the cascade. A staged training pipeline transfers from earlier WSRD pretraining to WSRD+ supervision and final WSRD+ 2026 adaptation with cosine-annealed checkpoint ensembling. On the official WSRD+ 2026 hidden test set, our final ensemble achieved 26.680 PSNR, 0.8740 SSIM, 0.0578 LPIPS, and 26.135 FID, ranked first overall, and won the NTIRE 2026 Image Shadow Removal Challenge. The strong performance of the proposed model is further validated on the ISTD+ and UAV-SC+ datasets.
format Preprint
id arxiv_https___arxiv_org_abs_2604_16177
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Winner of CVPR2026 NTIRE Challenge on Image Shadow Removal: Semantic and Geometric Guidance for Shadow Removal via Cascaded Refinement
Beltrame, Lorenzo
Salzinger, Jules
Svoboda, Filip
Lampert, Jasmin
Fanta-Jende, Phillipp
Timofte, Radu
Körner, Marco
Computer Vision and Pattern Recognition
We present a three-stage progressive shadow-removal pipeline for the CVPR2026 NTIRE WSRD+ challenge. Built on OmniSR, our method treats deshadowing as iterative direct refinement, where later stages correct residual artefacts left by earlier predictions. The model combines RGB appearance with frozen DINOv2 semantic guidance and geometric cues from monocular depth and surface normals, reused across all stages. To stabilise multi-stage optimisation, we introduce a contraction-constrained objective that encourages non-increasing reconstruction error across the cascade. A staged training pipeline transfers from earlier WSRD pretraining to WSRD+ supervision and final WSRD+ 2026 adaptation with cosine-annealed checkpoint ensembling. On the official WSRD+ 2026 hidden test set, our final ensemble achieved 26.680 PSNR, 0.8740 SSIM, 0.0578 LPIPS, and 26.135 FID, ranked first overall, and won the NTIRE 2026 Image Shadow Removal Challenge. The strong performance of the proposed model is further validated on the ISTD+ and UAV-SC+ datasets.
title Winner of CVPR2026 NTIRE Challenge on Image Shadow Removal: Semantic and Geometric Guidance for Shadow Removal via Cascaded Refinement
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2604.16177