Overlap-based feature weighting: The feature extraction of Hyperspectral remote sensing imagery
Hyperspectral sensors provide a large number of spectral bands. This massive and complex data structure of hyperspectral images presents a challenge to traditional data processing techniques. Therefore, reducing the dimensionality of hyperspectral images without losing important information is a ver...
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doaj-2e7f2ee1b41a47569ff940cdc1c0b57d2020-11-24T22:20:08ZengShahrood University of TechnologyJournal of Artificial Intelligence and Data Mining2322-52112322-44442015-10-013218119010.5829/idosi.JAIDM.2015.03.02.07498Overlap-based feature weighting: The feature extraction of Hyperspectral remote sensing imageryM. Imani0H. Ghassemian1Faculty of Electrical & Computer Engineering, Tarbiat Modares University, Tehran, Iran.Faculty of Electrical & Computer Engineering, Tarbiat Modares University, Tehran, Iran.Hyperspectral sensors provide a large number of spectral bands. This massive and complex data structure of hyperspectral images presents a challenge to traditional data processing techniques. Therefore, reducing the dimensionality of hyperspectral images without losing important information is a very important issue for the remote sensing community. We propose to use overlap-based feature weighting (OFW) for supervised feature extraction of hyperspectral data. In the OFW method, the feature vector of each pixel of hyperspectral image is divided to some segments. The weighted mean of adjacent spectral bands in each segment is calculated as an extracted feature. The less the overlap between classes is, the more the class discrimination ability will be. Therefore, the inverse of overlap between classes in each band (feature) is considered as a weight for that band. The superiority of OFW, in terms of classification accuracy and computation time, over other supervised feature extraction methods is established on three real hyperspectral images in the small sample size situation.http://jad.shahroodut.ac.ir/article_498_6c9670c350b92c91437102f7c03b987a.pdfClass DiscriminationOverlapFeature WeightingFeature extractionHyperspectral |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
M. Imani H. Ghassemian |
spellingShingle |
M. Imani H. Ghassemian Overlap-based feature weighting: The feature extraction of Hyperspectral remote sensing imagery Journal of Artificial Intelligence and Data Mining Class Discrimination Overlap Feature Weighting Feature extraction Hyperspectral |
author_facet |
M. Imani H. Ghassemian |
author_sort |
M. Imani |
title |
Overlap-based feature weighting: The feature extraction of Hyperspectral remote sensing imagery |
title_short |
Overlap-based feature weighting: The feature extraction of Hyperspectral remote sensing imagery |
title_full |
Overlap-based feature weighting: The feature extraction of Hyperspectral remote sensing imagery |
title_fullStr |
Overlap-based feature weighting: The feature extraction of Hyperspectral remote sensing imagery |
title_full_unstemmed |
Overlap-based feature weighting: The feature extraction of Hyperspectral remote sensing imagery |
title_sort |
overlap-based feature weighting: the feature extraction of hyperspectral remote sensing imagery |
publisher |
Shahrood University of Technology |
series |
Journal of Artificial Intelligence and Data Mining |
issn |
2322-5211 2322-4444 |
publishDate |
2015-10-01 |
description |
Hyperspectral sensors provide a large number of spectral bands. This massive and complex data structure of hyperspectral images presents a challenge to traditional data processing techniques. Therefore, reducing the dimensionality of hyperspectral images without losing important information is a very important issue for the remote sensing community. We propose to use overlap-based feature weighting (OFW) for supervised feature extraction of hyperspectral data. In the OFW method, the feature vector of each pixel of hyperspectral image is divided to some segments. The weighted mean of adjacent spectral bands in each segment is calculated as an extracted feature. The less the overlap between classes is, the more the class discrimination ability will be. Therefore, the inverse of overlap between classes in each band (feature) is considered as a weight for that band. The superiority of OFW, in terms of classification accuracy and computation time, over other supervised feature extraction methods is established on three real hyperspectral images in the small sample size situation. |
topic |
Class Discrimination Overlap Feature Weighting Feature extraction Hyperspectral |
url |
http://jad.shahroodut.ac.ir/article_498_6c9670c350b92c91437102f7c03b987a.pdf |
work_keys_str_mv |
AT mimani overlapbasedfeatureweightingthefeatureextractionofhyperspectralremotesensingimagery AT hghassemian overlapbasedfeatureweightingthefeatureextractionofhyperspectralremotesensingimagery |
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1725776635115864064 |