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Large-scale hyperspectral image compression via sparse representations based on online learning

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Date

2018

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Univ Zielona Gora Press

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Abstract

In this study, proximity based optimization algorithms are used for lossy compression of hyperspectral images that are inherently large scale. This is the first time that such proximity based optimization algorithms are implemented with an online dictionary learning method. Compression performances are compared with the one obtained by various sparse representation algorithms. As a result, proximity based optimization algorithms are listed among the three best ones in terms of compression performance values for all hyperspectral images. Additionally, the applicability of anomaly detection is tested on the reconstructed images.

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Keywords

Hyperspectral Imaging, Compression Algorithms, Dictionary Learning, Sparse Coding

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Citation

Ülkü, İ., Kizgut, E. (2018). Large-scale hyperspectral image compression via sparse representations based on online learning. International Journal Of Applied Mathematics And Computer Science, 28(1), 197-207. http://dx.doi.org/10.2478/amcs-2018-0015

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International Journal Of Applied Mathematics And Computer Science

Volume

28

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1

Start Page

197

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207