4/2023 - 4 |
Transfer Learning Based Convolutional Neural Network for Classification of Remote Sensing ImagesRAMASAMY, M. P. , KRISHNASAMY, V. , RAMAPACKIAM, S. S. K. |
Extra paper information in |
Click to see author's profile in SCOPUS, IEEE Xplore, Web of Science |
Download PDF (1,946 KB) | Citation | Downloads: 963 | Views: 1,327 |
Author keywords
remote sensing, transfer learning, classification, convolutional neural network, deep learning
References keywords
sensing(44), remote(44), classification(29), deep(17), learning(16), neural(15), convolutional(13), scene(12), network(12), land(10)
Blue keywords are present in both the references section and the paper title.
About this article
Date of Publication: 2023-11-30
Volume 23, Issue 4, Year 2023, On page(s): 31 - 40
ISSN: 1582-7445, e-ISSN: 1844-7600
Digital Object Identifier: 10.4316/AECE.2023.04004
Web of Science Accession Number: 001147490000002
SCOPUS ID: 85182194217
Abstract
Classification of Land cover Remote sensing images find a lot of applications including regional planning, natural resources conservation and management, agricultural monitoring etc., Presently, Convolutional Neural Networks (CNN) which are deep learning based methods are successfully employed for classification problems due to its flexible architecture and potentiality to learn new features from raw data. The motivation of the work is to implement a robust deep learning architecture for the classification of remote sensing images using a transfer learning approach. Deep learning requires a large amount of time if the training is initiated from scratch. Transfer learning overcomes this drawback by using pre-trained models efficiently. In the proposed work, a transfer learning based Convolutional Neural Network is used for the classification of remote sensing images. Three popular pre-trained models VGG16, ResNet50 and Densenet121 are used for feature extraction and a fully connected layer is used for classification. Results indicate that the transfer learning based Convolutional Neural Network with data augmentation and optimization of model parameters gives better performance compared to training from scratch for the classification of remote sensing images. Experimental results indicate that an improved accuracy of 95.88 percent is obtained for the proposed Transfer learning method for the remote sensing dataset of UC-Merced. |
References | | | Cited By «-- Click to see who has cited this paper |
[1] F. Chollet, "Deep Learning with Python", Shelter Islands: Manning, pp. 31-35, 2018
[2] F. K. A, T. Akram, B. Laurent, S. R. Naqvi, M. M. Alex, & N. Muhammad, "A deep heterogeneous feature fusion approach for automatic land-use classification," Information Sciences, vol. 467, pp. 199-218, 2018. [CrossRef] [Web of Science Times Cited 44] [SCOPUS Times Cited 50] [3] R. M. Anwer, F. S. Khan, J. van de Weijer, M. Molinier, & J. Laaksonen, "Binary patterns encoded convolutional neural networks for texture recognition and remote sensing scene classification," ISPRS Journal of Photogrammetry and Remote Sensing, vol. 138, pp. 74-85, 2018. [CrossRef] [Web of Science Times Cited 213] [SCOPUS Times Cited 230] [4] A. Alem, & S. Kumar, "Transfer learning models for land cover and land use classification in remote sensing image," Applied Artificial Intelligence, vol. 36, no. 1, 2021. [CrossRef] [Web of Science Times Cited 28] [SCOPUS Times Cited 35] [5] A. M. Hilal, F. N. Al-Wesabi, K. J. Alzahrani, M. Al Duhayyim, M. Ahmed Hamza, M. Rizwanullah, & V. Garcia Diaz, "Deep transfer learning based fusion model for environmental remote sensing image classification model," European Journal of Remote Sensing, vol. 55, pp. 12-23, 2022. [CrossRef] [Web of Science Times Cited 16] [SCOPUS Times Cited 18] [6] X. Xu, Y. Chen, J. Zhang, Y. Chen, P. Anandhan, & A. Manickam, "A novel approach for scene classification from remote sensing images using deep learning methods," European Journal of Remote Sensing, vol. 54, pp. 383-395, 2020. [CrossRef] [Web of Science Times Cited 47] [SCOPUS Times Cited 50] [7] C. H. Karadal, M. C. Kaya, T. Tuncer, S. Dogan & U. R. Acharya, "Automated classification of remote sensing images using multileveled MobileNetV2 and DWT techniques," Expert Systems With Applications, vol. 185, 115659, 2021. [CrossRef] [Web of Science Times Cited 32] [SCOPUS Times Cited 40] [8] H. Zhao, F. Liu, H. Zhang & Z. Liang, "Convolutional neural network based heterogeneous transfer learning for remote-sensing scene classification," International Journal of Remote Sensing, vol. 40, no. 22, pp. 8506-8527, 2019. [CrossRef] [Web of Science Times Cited 27] [SCOPUS Times Cited 31] [9] J. Liang, J. Xu, H. Shen & L. Fang, "Land-use classification via constrained extreme learning classifier based on cascaded deep convolutional neural networks," European Journal of Remote Sensing, vol. 53, no.1, pp. 219-232, 2020. [CrossRef] [Web of Science Times Cited 9] [SCOPUS Times Cited 16] [10] Y. Gao & Q. Li, "A segmented particle swarm optimization convolutional neural network for land cover and land use classification of remote sensing images," Remote Sensing Letters, vol. 10, no. 12, pp. 1182-1191, 2019. [CrossRef] [Web of Science Times Cited 11] [SCOPUS Times Cited 13] [11] A. Khan, S. Khattak, M. Waleed, A. Khan & U. Khan, "On the application of remote sensing towards the estimation of cultivated land lost to urbanization," The Imaging Science Journal, vol. 67, no. 5, pp. 254-260, 2019. [CrossRef] [Web of Science Times Cited 2] [SCOPUS Times Cited 2] [12] L. Wang, Y. Wang, Y. Zhao & B. Liu, "Classification of remotely sensed images using an ensemble of improved convolutional network," IEEE Geoscience and Remote Sensing Letters, vo1. 8, no. 5, pp. 930-934, 2021. [CrossRef] [Web of Science Times Cited 5] [SCOPUS Times Cited 5] [13] W. Li, Z. Wang, Y. Wang, J. Wu, J. Wang, Y. Jia & G. Gui, "Classification of high-spatial-resolution remote sensing scenes method using transfer learning and deep convolutional neural network," IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing, vol. 13, pp. 1986-1995, 2020. [CrossRef] [Web of Science Times Cited 71] [SCOPUS Times Cited 88] [14] Z. Deng, H. Sun, S. Zhou, J. Zhao, L. Lei, & H. Zou, "Multi-scale object detection in remote sensing imagery with convolutional neural networks," ISPRS Journal of Photogrammetry and Remote Sensing, vol. 145, pp. 3-22, 2018. [CrossRef] [Web of Science Times Cited 328] [SCOPUS Times Cited 389] [15] E. Flores, M. Zortea & J. Scharcanski, "Dictionaries of deep features for land-use scene classification of very high spatial resolution images," Pattern Recognition, vol. 89, pp. 32-44, 2019. [CrossRef] [Web of Science Times Cited 30] [SCOPUS Times Cited 38] [16] W. Guo, W. Yang, H. Zhang & G. Hua, "Geospatial object detection in high resolution satellite images based on multi-scale convolutional neural network," Remote Sensing, vol. 10, no. 1, pp. 131, 2018. [CrossRef] [Web of Science Times Cited 125] [SCOPUS Times Cited 145] [17] Z. Huang, Z. Pan & B. Lei, "Transfer learning with deep convolutional neural network for SAR target classification with limited labeled data," Remote Sensing, vol. 9, no. 9, 907, 2017. [CrossRef] [Web of Science Times Cited 290] [SCOPUS Times Cited 360] [18] B. Liu, X. Yu, P. Zhang, A. Yu, Q. Fu & X. Wei, "Supervised deep feature extraction for hyperspectral image classification," IEEE Transactions on Geoscience and Remote Sensing, vol. 56, no. 4, pp. 1909-1921, 2018. [CrossRef] [Web of Science Times Cited 205] [SCOPUS Times Cited 238] [19] A. Ma, Y. Wan, Y. Zhong, J. Wang, & L. Zhang, "SceneNet: Remote sensing scene classification deep learning network using multi-objective neural evolution architecture search," ISPRS Journal of Photogrammetry and Remote Sensing, vol. 172, pp. 171-188, 2021. [CrossRef] [Web of Science Times Cited 96] [SCOPUS Times Cited 107] [20] D. Marmanis, M. Datcu, T. Esch & U. Stilla "Deep learning earth observation classification using imagenet pretrained networks," IEEE Geoscience and Remote Sensing Letters, vol.13, no. 1, pp. 105-109, 2016. [CrossRef] [Web of Science Times Cited 450] [SCOPUS Times Cited 558] [21] J. Miller, U. Nair, R. Ramachandran & M. Maskey, "Detection of transverse cirrus bands in satellite imagery using deep learning," Computers & Geosciences, vol. 118, pp. 79-85, 2018. [CrossRef] [Web of Science Times Cited 19] [SCOPUS Times Cited 22] [22] K. Nogueira, O. A. Penatti, & J. A. dos Santos, "Towards better exploiting convolutional neural networks for remote sensing scene classification", Pattern Recognition, vol. 61, pp. 539-556, 2017, [CrossRef] [Web of Science Times Cited 656] [SCOPUS Times Cited 761] [23] M. Paoletti, J. Haut, J. Plaza & A. Plaza, "A new deep convolutional neural network for fast hyperspectral image classification", ISPRS Journal of Photogrammetry and Remote Sensing, vol. 145, pp. 120-147, 2017, [CrossRef] [Web of Science Times Cited 407] [SCOPUS Times Cited 476] [24] M. Rezaee, M. Mahdianpari, Y. Zhang & B. Salehi, "Deep convolutional neural network for complex wetland classification using optical remote sensing imagery", IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing, vol. 11, no. 9, pp. 3030-3039, 2018. [CrossRef] [Web of Science Times Cited 164] [SCOPUS Times Cited 191] [25] O. A. Shawky, A. Hagag, E. S. A. El-Dahshan & M. A. Ismail, "Remote sensing image scene classification using CNN-MLP with data augmentation", Optik, vol. 221, pp. 165356, 2020, [CrossRef] [Web of Science Times Cited 51] [SCOPUS Times Cited 66] [26] G. He, G. Cai, Y. Li, T. Xia & Z. Li, "Weighted split-flow network auxiliary with hierarchical multitasking for urban land use classification of high-resolution remote sensing images", International Journal of Remote Sensing, vol. 43, no. 18, pp. 6721-6740, 2022, [CrossRef] [Web of Science Times Cited 4] [SCOPUS Times Cited 4] [27] H. Song & W. Yang, "GSCCTL: A General semi-supervised scene classification method for remote sensing images based on clustering and Transfer Learning", International Journal of Remote Sensing, vol. 43, no. 15, pp. 5976-6000, 2022, [CrossRef] [Web of Science Times Cited 30] [SCOPUS Times Cited 29] [28] C. Zhang, X. Pan, H. Li, A. Gardiner, I. Sargent, J. Hare & P. M. Atkinson, "A hybrid MLP-CNN classifier for very fine resolution remotely sensed image classification", ISPRS Journal of Photogrammetry and Remote Sensing, vol. 140, pp. 133-144, 2018. [CrossRef] [Web of Science Times Cited 266] [SCOPUS Times Cited 322] [29] Q. Zou, L. Ni, T. Zhang, & Q. Wang "Deep learning based feature selection for remote sensing scene classification", IEEE Geoscience and Remote Sensing Letters, vol. 12, no. 11, pp. 2321-2325, 2015, [CrossRef] [Web of Science Times Cited 616] [SCOPUS Times Cited 746] [30] S. Akodad, L. Bombrun, J. Xia, Y. Berthoumieu & C. Germain, "Ensemble learning approaches based on covariance pooling of CNN features for high resolution remote sensing scene classification," Remote Sensing, vol. 12, no. 20, pp. 3292, 2020. [CrossRef] [Web of Science Times Cited 15] [SCOPUS Times Cited 20] [31] A. Shakya, M. Biswas & M. Pal, "Parametric study of convolutional neural network based remote sensing image classification," International Journal of Remote Sensing, vol. 42, no. 7, pp. 2663-2685, 2021. [CrossRef] [Web of Science Times Cited 27] [SCOPUS Times Cited 36] [32] H. Song, W. Yang, H. Yuan & H. Bufford, "Deep 3D-multiscale densenet for hyperspectral image classification based on spatial-spectral information," Intelligent Automation & Soft Computing, vol. 26, no. 4, pp. 1441-1458, 2020. [CrossRef] [Web of Science Times Cited 12] [SCOPUS Times Cited 14] [33] K. Ni, & Y. Wu, "Scene classification from remote sensing images using mid-level deep feature learning," International Journal of Remote Sensing, vol. 41, no. 4, pp. 1415-1436, 2019. [CrossRef] [Web of Science Times Cited 14] [SCOPUS Times Cited 15] [34] J. T Fan, T. Chen & S. Lu, "Unsupervised feature learning for land-use scene recognition," IEEE Transactions on Geoscience and Remote Sensing, vol. 55, no. 4, pp. 2250-2261, 2017. [CrossRef] [Web of Science Times Cited 41] [SCOPUS Times Cited 48] [35] S. Ogutcu, M. Inal, C. Celikhasi, U. Yildiz, N. Ozgur Dogan & Murat Pekdemir, "Early detection of mortality in COVID-19 patients through laboratory findings with factor analysis and artificial neural networks," Romanian Journal of Information Science And Technology, vol. 25, no. 3-4, pp. 299-302, 2022 [36] E. Arican and T. Aydin, "An RGB-D descriptor for object classification," Romanian Journal of Information Science and Technology, vol. 25, no. 3-4, pp. 338-349, 2022 [37] I. D. Borlea, R.-E. Precup, and A.-B. Borlea, "Improvement of K-means cluster quality by post processing resulted clusters," Procedia Computer Science, vol. 199, pp.63-70, 2022. [CrossRef] [Web of Science Times Cited 78] [SCOPUS Times Cited 92] [38] R.-E. Precup, Gh. Duca, S. Travin, I. Zinicovscaia, "Processing, neural network-based modeling of biomonitoring studies data and validation on Republic of Moldova data," Proceedings of the Romanian Academy, Series A, vol. 23, no. 4, pp. 399-406, 2022 Web of Science® Citations for all references: 4,429 TCR SCOPUS® Citations for all references: 5,255 TCR Web of Science® Average Citations per reference: 114 ACR SCOPUS® Average Citations per reference: 135 ACR TCR = Total Citations for References / ACR = Average Citations per Reference We introduced in 2010 - for the first time in scientific publishing, the term "References Weight", as a quantitative indication of the quality ... Read more Citations for references updated on 2024-11-15 21:31 in 232 seconds. Note1: Web of Science® is a registered trademark of Clarivate Analytics. Note2: SCOPUS® is a registered trademark of Elsevier B.V. Disclaimer: All queries to the respective databases were made by using the DOI record of every reference (where available). Due to technical problems beyond our control, the information is not always accurate. Please use the CrossRef link to visit the respective publisher site. |
Faculty of Electrical Engineering and Computer Science
Stefan cel Mare University of Suceava, Romania
All rights reserved: Advances in Electrical and Computer Engineering is a registered trademark of the Stefan cel Mare University of Suceava. No part of this publication may be reproduced, stored in a retrieval system, photocopied, recorded or archived, without the written permission from the Editor. When authors submit their papers for publication, they agree that the copyright for their article be transferred to the Faculty of Electrical Engineering and Computer Science, Stefan cel Mare University of Suceava, Romania, if and only if the articles are accepted for publication. The copyright covers the exclusive rights to reproduce and distribute the article, including reprints and translations.
Permission for other use: The copyright owner's consent does not extend to copying for general distribution, for promotion, for creating new works, or for resale. Specific written permission must be obtained from the Editor for such copying. Direct linking to files hosted on this website is strictly prohibited.
Disclaimer: Whilst every effort is made by the publishers and editorial board to see that no inaccurate or misleading data, opinions or statements appear in this journal, they wish to make it clear that all information and opinions formulated in the articles, as well as linguistic accuracy, are the sole responsibility of the author.