msfouda / ASPS_MN

Band Selection

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ASPS_MN

This is an implementation of Hyperspectral Band Selection via Adaptive Subspace Partition Strategy.

Dataset

Three public datasets, i.e., Indian Pines, Pavia University, and Salinas, are employed to verify the effectiveness of the proposed ASPS_MN.

Requirement

MATLAB

Implementation

With respect to ASPS_MN algorithm, to run the code, please perform 'main.m'.

Result

To qualitatively measure the proposed ASPS_MN, four classifiers are employed to verify the effectiveness of the algorithm.

Classification Performance

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Computational Time

Dataset TOF MDSR WaLuDi RMBS UBS ASPS_MN (10%) ASPS_MN (100%)
Indian Pines (15 bands) 0.649 0.205 7.507 43.618 0.009 0.915 6.785
Pavia University (10 bands) 0.741 0.208 26.775 200.396 0.009 0.895 3.440
Salinas (15 bands) 1.356 0.313 40.357 265.555 0.003 1.128 5.884

Citation

Please consider cite this paper if you find it helpful.

@article{Wang2019Hyper,
title={Hyperspectral Band Selection via Adaptive Subspace Partition Strategy},
author={Q. Wang, Q. Li, and X. Li},
journal={IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing},
year={2019},
DOI={10.1109/JSTARS.2019.2941454},
publisher={IEEE}
}


If you has any questions, please send e-mail to liqmges@gmail.com.

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Band Selection


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Language:MATLAB 100.0%