Decision Fusion Framework for Hyperspectral Image Classification Based on Markov and Conditional Random Fields
Classification of hyperspectral images is a challenging task owing to the high dimensionality of the data, limited ground truth data, collinearity of the spectra and the presence of mixed pixels. Conventional classification techniques do not cope well with these problems. Thus, in addition to the sp...
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doaj-f2300d1fac394dfda2f2c68f5d78a1ac2020-11-25T02:26:30ZengMDPI AGRemote Sensing2072-42922019-03-0111662410.3390/rs11060624rs11060624Decision Fusion Framework for Hyperspectral Image Classification Based on Markov and Conditional Random FieldsVera Andrejchenko0Wenzhi Liao1Wilfried Philips2Paul Scheunders3IMEC-VisionLab, University of Antwerp, 2000 Antwerp, BelgiumIMEC-IPI, Ghent University, 9000 Gent, BelgiumIMEC-IPI, Ghent University, 9000 Gent, BelgiumIMEC-VisionLab, University of Antwerp, 2000 Antwerp, BelgiumClassification of hyperspectral images is a challenging task owing to the high dimensionality of the data, limited ground truth data, collinearity of the spectra and the presence of mixed pixels. Conventional classification techniques do not cope well with these problems. Thus, in addition to the spectral information, features were developed for a more complete description of the pixels, e.g., containing contextual information at the superpixel level or mixed pixel information at the subpixel level. This has encouraged an evolution of fusion techniques which use these myriad of multiple feature sets and decisions from individual classifiers to be employed in a joint manner. In this work, we present a flexible decision fusion framework addressing these issues. In a first step, we propose to use sparse fractional abundances as decision source, complementary to class probabilities obtained from a supervised classifier. This specific selection of complementary decision sources enables the description of a pixel in a more complete way, and is expected to mitigate the effects of small training samples sizes. Secondly, we propose to apply a fusion scheme, based on the probabilistic graphical Markov Random Field (MRF) and Conditional Random Field (CRF) models, which inherently employ spatial information into the fusion process. To strengthen the decision fusion process, consistency links across the different decision sources are incorporated to encourage agreement between their decisions. The proposed framework offers flexibility such that it can be extended with additional decision sources in a straightforward way. Experimental results conducted on two real hyperspectral images show superiority over several other approaches in terms of classification performance when very limited training data is available.http://www.mdpi.com/2072-4292/11/6/624hyperspectral unmixingMarkov random fieldconditional random fielddecision fusionsupervised classification |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Vera Andrejchenko Wenzhi Liao Wilfried Philips Paul Scheunders |
spellingShingle |
Vera Andrejchenko Wenzhi Liao Wilfried Philips Paul Scheunders Decision Fusion Framework for Hyperspectral Image Classification Based on Markov and Conditional Random Fields Remote Sensing hyperspectral unmixing Markov random field conditional random field decision fusion supervised classification |
author_facet |
Vera Andrejchenko Wenzhi Liao Wilfried Philips Paul Scheunders |
author_sort |
Vera Andrejchenko |
title |
Decision Fusion Framework for Hyperspectral Image Classification Based on Markov and Conditional Random Fields |
title_short |
Decision Fusion Framework for Hyperspectral Image Classification Based on Markov and Conditional Random Fields |
title_full |
Decision Fusion Framework for Hyperspectral Image Classification Based on Markov and Conditional Random Fields |
title_fullStr |
Decision Fusion Framework for Hyperspectral Image Classification Based on Markov and Conditional Random Fields |
title_full_unstemmed |
Decision Fusion Framework for Hyperspectral Image Classification Based on Markov and Conditional Random Fields |
title_sort |
decision fusion framework for hyperspectral image classification based on markov and conditional random fields |
publisher |
MDPI AG |
series |
Remote Sensing |
issn |
2072-4292 |
publishDate |
2019-03-01 |
description |
Classification of hyperspectral images is a challenging task owing to the high dimensionality of the data, limited ground truth data, collinearity of the spectra and the presence of mixed pixels. Conventional classification techniques do not cope well with these problems. Thus, in addition to the spectral information, features were developed for a more complete description of the pixels, e.g., containing contextual information at the superpixel level or mixed pixel information at the subpixel level. This has encouraged an evolution of fusion techniques which use these myriad of multiple feature sets and decisions from individual classifiers to be employed in a joint manner. In this work, we present a flexible decision fusion framework addressing these issues. In a first step, we propose to use sparse fractional abundances as decision source, complementary to class probabilities obtained from a supervised classifier. This specific selection of complementary decision sources enables the description of a pixel in a more complete way, and is expected to mitigate the effects of small training samples sizes. Secondly, we propose to apply a fusion scheme, based on the probabilistic graphical Markov Random Field (MRF) and Conditional Random Field (CRF) models, which inherently employ spatial information into the fusion process. To strengthen the decision fusion process, consistency links across the different decision sources are incorporated to encourage agreement between their decisions. The proposed framework offers flexibility such that it can be extended with additional decision sources in a straightforward way. Experimental results conducted on two real hyperspectral images show superiority over several other approaches in terms of classification performance when very limited training data is available. |
topic |
hyperspectral unmixing Markov random field conditional random field decision fusion supervised classification |
url |
http://www.mdpi.com/2072-4292/11/6/624 |
work_keys_str_mv |
AT veraandrejchenko decisionfusionframeworkforhyperspectralimageclassificationbasedonmarkovandconditionalrandomfields AT wenzhiliao decisionfusionframeworkforhyperspectralimageclassificationbasedonmarkovandconditionalrandomfields AT wilfriedphilips decisionfusionframeworkforhyperspectralimageclassificationbasedonmarkovandconditionalrandomfields AT paulscheunders decisionfusionframeworkforhyperspectralimageclassificationbasedonmarkovandconditionalrandomfields |
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