TransSARNet: a deep learning framework for despeckling of SAR images
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Date
2025
Journal Title
Journal ISSN
Volume Title
Publisher
Institute of Physics
Abstract
Synthetic Aperture Radar(SAR) images are extensively used for Earth observation because of their all-weather, day, and night imaging capabilities. However, speckle noise in SAR images significantly reduces their usability in a variety of applications. Deep learning models developed for SAR despeckling exhibit promising noise reduction capabilities. Bringing a balance between reducing graininess and preserving texture details is a challenging task. In addition, supervised training of a robust deep learning model requires noisy images that capture the SAR speckle dynamics and the corresponding speckle-free ground truth, which is generally not available. This study proposes the first hybrid CNN-Halo attention-based transformer model for SAR despeckling. CNN-based feature extraction modules provide multiscale and multidirectional and large-scale feature maps. A halo-attention transformer block is used in the skip connection. It aids in the better preservation of radiometric information in the despeckled SAR images. TransSARNet is trained in a supervised manner using a new synthetic SAR dataset, which is a combination of the Kylberg and UCMerced land-use datasets. This study also analyzed the effect of combining the Kylberg and UCMerced datasets on texture preservation in despeckled SAR images. The visual and qualitative metrics evaluated on Sentinel-1 Single Look Complex SAR data showed that the proposed TransSARNet approach outperformed the other models under consideration. TransSARNet achieves a harmonious balance between model complexity, despeckling ability, edge preservation, radiometric information preservation, and smoothing in homogeneous regions. © 2025 IOP Publishing Ltd. All rights, including for text and data mining, AI training, and similar technologies, are reserved.
Description
Keywords
Data mining, Image denoising, Learning systems, Noise abatement, Radar imaging, Radiometry, Speckle, Supervised learning, Synthetic aperture radar, Textures, De-speckling, Deep learning, Earth observations, Imaging capabilities, Learning frameworks, Learning models, Radiometrics, Synthetic aperture radar despeckling, Synthetic aperture radar images, Transformer
Citation
Engineering Research Express, 2025, 7, 3, pp. -
