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Hyperspectral imagery classification based on semi-supervised 3-D deep neural network and adaptive band selection

Authors :
Basel Solaiman
Mohamed Farah
Akrem Sellami
Imed Riadh Farah
Département lmage et Traitement Information (IMT Atlantique - ITI)
IMT Atlantique Bretagne-Pays de la Loire (IMT Atlantique)
Institut Mines-Télécom [Paris] (IMT)-Institut Mines-Télécom [Paris] (IMT)
Laboratoire de recherche en Génie Logiciel, Applications distribuées, Systèmes décisionnels et Imagerie intelligente [Manouba] (RIADI)
École Nationale des Sciences de l'Informatique [Manouba] (ENSI)
Université de la Manouba [Tunisie] (UMA)-Université de la Manouba [Tunisie] (UMA)
Source :
Expert Systems with Applications, Expert Systems with Applications, Elsevier, 2019, 129, pp.246-259. ⟨10.1016/j.eswa.2019.04.006⟩
Publication Year :
2019
Publisher :
Elsevier BV, 2019.

Abstract

International audience; This paper proposes a novel approach based on adaptive dimensionality reduction (ADR) and a semi-supervised 3-D convolutional neural network (3-D CNN) for the spectro-spatial classification of hyperspectral images (HSIs). It tackles the problem of curse of dimensionality and the limited number of training samples by selecting the most relevant spectral bands. The selected bands should be informative, discriminative and distinctive. They are fed into a semi-supervised 3-D CNN feature extractor, then a linear regression classifier to produce the classification map. In fact, the proposed semi-supervised 3-D CNN model seeks to extract the deep spectral and spatial features based on convolutional encoder-decoder to enhance the HSI classification. It uses several 3-D convolution and max-pooling layers to extract these features from the selected relevant bands. The main advantage of the proposed approach is to reduce the high dimensionality of HSI, preserve the relevant spectro-spatial information and enhance the classification using few labeled training samples. Experimental studies are carried out on three real HSI data sets: Indian Pines, Pavia University, and Salinas. The obtained results show that the proposed approach performs better than other deep learning-based methods including CNN-based methods, and significantly improves the classification accuracy of HSIs.

Details

ISSN :
09574174
Volume :
129
Database :
OpenAIRE
Journal :
Expert Systems with Applications
Accession number :
edsair.doi.dedup.....5d5e70d2d9c66dd95cc4b92060ce4edf