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Autori principali: Nalcakan, Yagiz, Ju, Hyeongjin, Park, Incheol, Yeo, Sanghyeop, Jin, Youngwan, Kim, Shiho
Natura: Preprint
Pubblicazione: 2026
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Accesso online:https://arxiv.org/abs/2605.02258
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author Nalcakan, Yagiz
Ju, Hyeongjin
Park, Incheol
Yeo, Sanghyeop
Jin, Youngwan
Kim, Shiho
author_facet Nalcakan, Yagiz
Ju, Hyeongjin
Park, Incheol
Yeo, Sanghyeop
Jin, Youngwan
Kim, Shiho
contents Vision Foundation Models (VFMs) pretrained on large-scale RGB data have demonstrated remarkable representation quality, yet their applicability to multispectral imaging spanning Near-Infrared (NIR), Short-Wave Infrared (SWIR), and Long-Wave Infrared (LWIR) remains largely unexplored. These spectral modalities offer complementary sensing capabilities critical for robust perception in adverse conditions, but present a fundamental domain gap relative to RGB-centric pretrained models. We present SpectraDINO, a multispectral VFM that bridges this spectral gap by extending DINOv2 ViT backbones to beyond-visible modalities through lightweight, per-modality bottleneck adapters, while preserving the rich representations of the frozen RGB backbone. We introduce a multi-stage teacher-student training protocol in which a frozen DINOv2 teacher guides a spectral student via cosine distillation, symmetric contrastive loss, patch-level alignment, and a novel neighborhood-structure-preservation loss. This staged curriculum enables strong cross-modal alignment without catastrophic forgetting of RGB priors. We evaluate SpectraDINO on multispectral object detection and semantic segmentation across challenging NIR, SWIR, and LWIR benchmarks using widely adopted fusion strategies. SpectraDINO achieves state-of-the-art performance across most benchmarks, validating its effectiveness as a general-purpose backbone for spectral generalization. The code and weights for model variants are available at https://github.com/Yonsei-STL/SpectraDINO.
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spellingShingle SpectraDINO: Bridging the Spectral Gap in Vision Foundation Models via Lightweight Adapters
Nalcakan, Yagiz
Ju, Hyeongjin
Park, Incheol
Yeo, Sanghyeop
Jin, Youngwan
Kim, Shiho
Computer Vision and Pattern Recognition
Vision Foundation Models (VFMs) pretrained on large-scale RGB data have demonstrated remarkable representation quality, yet their applicability to multispectral imaging spanning Near-Infrared (NIR), Short-Wave Infrared (SWIR), and Long-Wave Infrared (LWIR) remains largely unexplored. These spectral modalities offer complementary sensing capabilities critical for robust perception in adverse conditions, but present a fundamental domain gap relative to RGB-centric pretrained models. We present SpectraDINO, a multispectral VFM that bridges this spectral gap by extending DINOv2 ViT backbones to beyond-visible modalities through lightweight, per-modality bottleneck adapters, while preserving the rich representations of the frozen RGB backbone. We introduce a multi-stage teacher-student training protocol in which a frozen DINOv2 teacher guides a spectral student via cosine distillation, symmetric contrastive loss, patch-level alignment, and a novel neighborhood-structure-preservation loss. This staged curriculum enables strong cross-modal alignment without catastrophic forgetting of RGB priors. We evaluate SpectraDINO on multispectral object detection and semantic segmentation across challenging NIR, SWIR, and LWIR benchmarks using widely adopted fusion strategies. SpectraDINO achieves state-of-the-art performance across most benchmarks, validating its effectiveness as a general-purpose backbone for spectral generalization. The code and weights for model variants are available at https://github.com/Yonsei-STL/SpectraDINO.
title SpectraDINO: Bridging the Spectral Gap in Vision Foundation Models via Lightweight Adapters
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2605.02258