Learned Spectral and Spatial Transforms for Multispectral Remote Sensing Data Compression

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Resum

As more and more multispectral and hyperspectral platforms are deployed for Earth Observation, limited downlink capacity increases the pressure for more efficient data compression algorithms. Machine Learning (ML) has been successfully applied to produce highly competitive compression models, though this performance has typically been at the cost of high computational complexity, a crucial limitation for on board remote sensing data compression. To address these issues, a reduced-complexity multispectral and hyperspectral data compression architecture is proposed. Using separate spectral and spatial transforms, the complexity of the proposed models is scalable on the number of bands, regardless of the compression ratios. This proposal outperforms state-of-the-art ML compression models as well as established lossy compression methods such as JPEG 2000 prepended with a spectral Karhunen-Lo‘eve Transform (KLT) on a variety of remote sensing data sources. The performance improvement is achieved with a lower complexity than said ML models. To reproduce our results, training and test data is publicly available at https://gici.uab.cat/GiciWebPage/datasets.php and source code at https://github.com/smijares/mbhs2025.
Idioma originalAnglès
Número d’article5001005
Pàgines (de-a)1-5
Nombre de pàgines5
RevistaIEEE Geoscience and Remote Sensing Letters
Volum22
DOIs
Estat de la publicacióPublicada - 24 de març 2025

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