Dual and Single Polarized Sar Image Classification Using Compact Convolutional Neural Networks
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Date
2019
Authors
Journal Title
Journal ISSN
Volume Title
Publisher
Mdpi
Open Access Color
GOLD
Green Open Access
Yes
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Publicly Funded
No
Abstract
Accurate land use/land cover classification of synthetic aperture radar (SAR) images plays an important role in environmental, economic, and nature related research areas and applications. When fully polarimetric SAR data is not available, single- or dual-polarization SAR data can also be used whilst posing certain difficulties. For instance, traditional Machine Learning (ML) methods generally focus on finding more discriminative features to overcome the lack of information due to single- or dual-polarimetry. Beside conventional ML approaches, studies proposing deep convolutional neural networks (CNNs) come with limitations and drawbacks such as requirements of massive amounts of data for training and special hardware for implementing complex deep networks. In this study, we propose a systematic approach based on sliding-window classification with compact and adaptive CNNs that can overcome such drawbacks whilst achieving state-of-the-art performance levels for land use/land cover classification. The proposed approach voids the need for feature extraction and selection processes entirely, and perform classification directly over SAR intensity data. Furthermore, unlike deep CNNs, the proposed approach requires neither a dedicated hardware nor a large amount of data with ground-truth labels. The proposed systematic approach is designed to achieve maximum classification accuracy on single and dual-polarized intensity data with minimum human interaction. Moreover, due to its compact configuration, the proposed approach can process such small patches which is not possible with deep learning solutions. This ability significantly improves the details in segmentation masks. An extensive set of experiments over two benchmark SAR datasets confirms the superior classification performance and efficient computational complexity of the proposed approach compared to the competing methods.
Description
Keywords
Convolutional Neural Networks, synthetic aperture radar (SAR), land use, land cover classification, sliding window, Land, Urban, Color, Multifrequency, Segmentation, Vegetation, Features, 550, Land use/land cover classification, Science, Convolutional Neural Networks, Q, synthetic aperture radar (SAR), sliding window, 113 Computer and information sciences, Sliding window, 113, 620, Synthetic aperture radar (SAR), Convolutional NeuRal Networks, land use/land cover classification
Fields of Science
Citation
WoS Q
Q1
Scopus Q
Q1

OpenCitations Citation Count
22
Source
Remote Sensıng
Volume
11
Issue
11
Start Page
End Page
PlumX Metrics
Citations
CrossRef : 24
Scopus : 24
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Mendeley Readers : 24
SCOPUS™ Citations
24
checked on Mar 18, 2026
Web of Science™ Citations
19
checked on Mar 18, 2026
Page Views
9
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Downloads
15
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OpenAlex FWCI
33.6497
Sustainable Development Goals
9
INDUSTRY, INNOVATION AND INFRASTRUCTURE


