Discriminative Feature Metric Learning in the Affinity Propagation Model for Band Selection in Hyperspectral Images
Traditional supervised band selection (BS) methods mainly consider reducing the spectral redundancy to improve hyperspectral imagery (HSI) classification with class labels and pairwise constraints. A key observation is that pixels spatially close to each other in HSI have probably the same signature...
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doaj-1bb7185cb80e45b58e40327ad809a4c72020-11-24T23:09:18ZengMDPI AGRemote Sensing2072-42922017-07-019878210.3390/rs9080782rs9080782Discriminative Feature Metric Learning in the Affinity Propagation Model for Band Selection in Hyperspectral ImagesChen Yang0Yulei Tan1Lorenzo Bruzzone2Laijun Lu3Renchu Guan4College of Earth Sciences, Jilin University, Changchun 130061, ChinaCollege of Earth Sciences, Jilin University, Changchun 130061, ChinaDepartment of Information Engineering and Computer Science, University of Trento, 38050 Trento, ItalyCollege of Earth Sciences, Jilin University, Changchun 130061, ChinaCollege of Computer Science and Technology, Jilin University, Changchun 130012, ChinaTraditional supervised band selection (BS) methods mainly consider reducing the spectral redundancy to improve hyperspectral imagery (HSI) classification with class labels and pairwise constraints. A key observation is that pixels spatially close to each other in HSI have probably the same signature, while pixels further away from each other in the space have a high probability of belonging to different classes. In this paper, we propose a novel discriminative feature metric-based affinity propagation (DFM-AP) technique where the spectral and the spatial relationships among pixels are constructed by a new type of discriminative constraint. This discriminative constraint involves chunklet and discriminative information, which are introduced into the BS process. The chunklet information allows for grouping of spectrally-close and spatially-close pixels together without requiring explicit knowledge of their class labels, while discriminative information provides important separability information. A discriminative feature metric (DFM) is proposed with the discriminative constraints modeled in terms of an optimal criterion for identifying an efficient distance metric learning method, which involves discriminative component analysis (DCA). Following this, the representative subset of bands can be identified by means of an exemplar-based clustering algorithm, which is also known as the process of affinity propagation. Experimental results show that the proposed approach yields a better performance in comparison with several representative class label and pairwise constraint-based BS algorithms. The proposed DFM-AP improves the classification performance with discriminative constraints by selecting highly discriminative bands with low redundancy.https://www.mdpi.com/2072-4292/9/8/782hyperspectral imagerychunklet and discriminative informationdiscriminative feature metricaffinity propagationband selection |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Chen Yang Yulei Tan Lorenzo Bruzzone Laijun Lu Renchu Guan |
spellingShingle |
Chen Yang Yulei Tan Lorenzo Bruzzone Laijun Lu Renchu Guan Discriminative Feature Metric Learning in the Affinity Propagation Model for Band Selection in Hyperspectral Images Remote Sensing hyperspectral imagery chunklet and discriminative information discriminative feature metric affinity propagation band selection |
author_facet |
Chen Yang Yulei Tan Lorenzo Bruzzone Laijun Lu Renchu Guan |
author_sort |
Chen Yang |
title |
Discriminative Feature Metric Learning in the Affinity Propagation Model for Band Selection in Hyperspectral Images |
title_short |
Discriminative Feature Metric Learning in the Affinity Propagation Model for Band Selection in Hyperspectral Images |
title_full |
Discriminative Feature Metric Learning in the Affinity Propagation Model for Band Selection in Hyperspectral Images |
title_fullStr |
Discriminative Feature Metric Learning in the Affinity Propagation Model for Band Selection in Hyperspectral Images |
title_full_unstemmed |
Discriminative Feature Metric Learning in the Affinity Propagation Model for Band Selection in Hyperspectral Images |
title_sort |
discriminative feature metric learning in the affinity propagation model for band selection in hyperspectral images |
publisher |
MDPI AG |
series |
Remote Sensing |
issn |
2072-4292 |
publishDate |
2017-07-01 |
description |
Traditional supervised band selection (BS) methods mainly consider reducing the spectral redundancy to improve hyperspectral imagery (HSI) classification with class labels and pairwise constraints. A key observation is that pixels spatially close to each other in HSI have probably the same signature, while pixels further away from each other in the space have a high probability of belonging to different classes. In this paper, we propose a novel discriminative feature metric-based affinity propagation (DFM-AP) technique where the spectral and the spatial relationships among pixels are constructed by a new type of discriminative constraint. This discriminative constraint involves chunklet and discriminative information, which are introduced into the BS process. The chunklet information allows for grouping of spectrally-close and spatially-close pixels together without requiring explicit knowledge of their class labels, while discriminative information provides important separability information. A discriminative feature metric (DFM) is proposed with the discriminative constraints modeled in terms of an optimal criterion for identifying an efficient distance metric learning method, which involves discriminative component analysis (DCA). Following this, the representative subset of bands can be identified by means of an exemplar-based clustering algorithm, which is also known as the process of affinity propagation. Experimental results show that the proposed approach yields a better performance in comparison with several representative class label and pairwise constraint-based BS algorithms. The proposed DFM-AP improves the classification performance with discriminative constraints by selecting highly discriminative bands with low redundancy. |
topic |
hyperspectral imagery chunklet and discriminative information discriminative feature metric affinity propagation band selection |
url |
https://www.mdpi.com/2072-4292/9/8/782 |
work_keys_str_mv |
AT chenyang discriminativefeaturemetriclearningintheaffinitypropagationmodelforbandselectioninhyperspectralimages AT yuleitan discriminativefeaturemetriclearningintheaffinitypropagationmodelforbandselectioninhyperspectralimages AT lorenzobruzzone discriminativefeaturemetriclearningintheaffinitypropagationmodelforbandselectioninhyperspectralimages AT laijunlu discriminativefeaturemetriclearningintheaffinitypropagationmodelforbandselectioninhyperspectralimages AT renchuguan discriminativefeaturemetriclearningintheaffinitypropagationmodelforbandselectioninhyperspectralimages |
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