Efficient Classification of Remote Sensing Images Using Two Convolution Channels and SVM

TitreEfficient Classification of Remote Sensing Images Using Two Convolution Channels and SVM
Publication TypeJournal Article
Year of Publication2022
AuthorsAlAfandy, KA, Omara, H, El-Sayed, HS, Baz, M, Lazaar, M, Faragallah, OS, M. Achhab, A
JournalComputers, Materials and Continua
Volume72
Pagination739-753
Mots-clésClassification (of information), Classification of remote sensing image, Convolution, Convolution model, Deep learning, Densenet, Extraction, Features extraction, Fully connected neural network, Image classification, Image Classifiers, Image enhancement, Remote sensing, Remote sensing images, Resnet, Support vector machines, SVM
Abstract

Remote sensing image processing engaged researchers' attentiveness in recent years, especially classification. The main problem in classification is the ratio of the correct predictions after training. Feature extraction is the foremost important step to build high-performance image classifiers. The convolution neural networks can extract images' features that significantly improve the image classifiers' accuracy. This paper proposes two efficient approaches for remote sensing images classification that utilizes the concatenation of two convolution channels' outputs as a features extraction using two classic convolution models; these convolution models are the ResNet 50 and the DenseNet 169. These elicited features have been used by the fully connected neural network classifier and support vector machine classifier as input features. The results of the proposed methods are compared with other antecedent approaches in the same experimental environments. Evaluation is based on learning curves plotted during the training of the proposed classifier that is based on a fully connected neural network and measuring the overall accuracy for the both proposed classifiers. The proposed classifiers are used with their trained weights to predict a big remote sensing scene's classes for a developed test. Experimental results ensure that, compared with the other traditional classifiers, the proposed classifiers are further accurate. © 2022 Tech Science Press. All rights reserved.

URLhttps://www.scopus.com/inward/record.uri?eid=2-s2.0-85125387732&doi=10.32604%2fcmc.2022.022457&partnerID=40&md5=d49f68f82164e31e29c0276c95a3c3ca
DOI10.32604/cmc.2022.022457
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