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Keyword: DenseNetUsing Classic Networks for Classifying Remote Sensing Images: Comparative Study
Advances in Science, Technology and Engineering Systems Journal,
Volume 5,
Issue 5,
Page # 770–780,
2020;
DOI: 10.25046/aj050594
Abstract:
This paper presents a comparative study for using the classic networks in remote sensing images classification. There are four deep convolution models that used in this comparative study; the DenseNet 196, the NASNet Mobile, the VGG 16, and the ResNet 50 models. These learning convolution models are based on the use of the ImageNet pre-trained…
Read More(This article belongs to the SP9 (Special Issue on Multidisciplinary Innovation in Engineering Science & Technology 2020) & Section Interdisciplinary Applications of Computer Science (CSI))
Investment of Classic Deep CNNs and SVM for Classifying Remote Sensing Images
Advances in Science, Technology and Engineering Systems Journal,
Volume 5,
Issue 5,
Page # 652–659,
2020;
DOI: 10.25046/aj050580
Abstract:
Feature extraction is an important process in image classification for achieving an efficient accuracy for the classification learning models. One of these methods is using the convolution neural networks. The use of the trained classic deep convolution neural networks as features extraction gives a considerable results in the remote sensing images classification models. So, this…
Read More(This article belongs to the isaect-20 (Special Issue on Advanced Electrical and Communication Technologies 2020) & Section Artificial Intelligence in Computer Science (CAI))
