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Hauptverfasser: Laprade, William Michael, Westergaard, Jesper Cairo, Christensen, Svend, Nielsen, Mads, Dahl, Anders Bjorholm
Format: Preprint
Veröffentlicht: 2025
Schlagworte:
Online-Zugang:https://arxiv.org/abs/2503.01628
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author Laprade, William Michael
Westergaard, Jesper Cairo
Christensen, Svend
Nielsen, Mads
Dahl, Anders Bjorholm
author_facet Laprade, William Michael
Westergaard, Jesper Cairo
Christensen, Svend
Nielsen, Mads
Dahl, Anders Bjorholm
contents Spectral imaging data acquired via multispectral and hyperspectral cameras can have hundreds of channels, where each channel records the reflectance at a specific wavelength and bandwidth. Time and resource constraints limit our ability to collect large spectral datasets, making it difficult to build and train predictive models from scratch. In the RGB domain, we can often alleviate some of the limitations of smaller datasets by using pretrained foundational models as a starting point. However, most existing foundation models are pretrained on large datasets of 3-channel RGB images, severely limiting their effectiveness when used with spectral imaging data. The few spectral foundation models that do exist usually have one of two limitations: (1) they are built and trained only on remote sensing data limiting their application in proximal spectral imaging, (2) they utilize the more widely available multispectral imaging datasets with less than 15 channels restricting their use with hundred-channel hyperspectral images. To alleviate these issues, we propose a large-scale foundational model and dataset built upon the masked autoencoder architecture that takes advantage of spectral channel encoding, spatial-spectral masking and ImageNet pretraining for an adaptable and robust model for downstream spectral imaging tasks.
format Preprint
id arxiv_https___arxiv_org_abs_2503_01628
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle A General Purpose Spectral Foundational Model for Both Proximal and Remote Sensing Spectral Imaging
Laprade, William Michael
Westergaard, Jesper Cairo
Christensen, Svend
Nielsen, Mads
Dahl, Anders Bjorholm
Computer Vision and Pattern Recognition
Spectral imaging data acquired via multispectral and hyperspectral cameras can have hundreds of channels, where each channel records the reflectance at a specific wavelength and bandwidth. Time and resource constraints limit our ability to collect large spectral datasets, making it difficult to build and train predictive models from scratch. In the RGB domain, we can often alleviate some of the limitations of smaller datasets by using pretrained foundational models as a starting point. However, most existing foundation models are pretrained on large datasets of 3-channel RGB images, severely limiting their effectiveness when used with spectral imaging data. The few spectral foundation models that do exist usually have one of two limitations: (1) they are built and trained only on remote sensing data limiting their application in proximal spectral imaging, (2) they utilize the more widely available multispectral imaging datasets with less than 15 channels restricting their use with hundred-channel hyperspectral images. To alleviate these issues, we propose a large-scale foundational model and dataset built upon the masked autoencoder architecture that takes advantage of spectral channel encoding, spatial-spectral masking and ImageNet pretraining for an adaptable and robust model for downstream spectral imaging tasks.
title A General Purpose Spectral Foundational Model for Both Proximal and Remote Sensing Spectral Imaging
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2503.01628