Please use this identifier to cite or link to this item: http://hdl.handle.net/10397/109894
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Title: RepDNet : a re-parameterization despeckling network for autonomous underwater side-scan sonar imaging with prior-knowledge customized convolution
Authors: Li, Z 
Wang, Z
Chen, D
Yip, TL 
Teixeira, AP
Issue Date: May-2024
Source: Defence technology, May 2024, v. 35, p. 259-274
Abstract: Side-scan sonar (SSS) is now a prevalent instrument for large-scale seafloor topography measurements, deployable on an autonomous underwater vehicle (AUV) to execute fully automated underwater acoustic scanning imaging along a predetermined trajectory. However, SSS images often suffer from speckle noise caused by mutual interference between echoes, and limited AUV computational resources further hinder noise suppression. Existing approaches for SSS image processing and speckle noise reduction rely heavily on complex network structures and fail to combine the benefits of deep learning and domain knowledge. To address the problem, RepDNet, a novel and effective despeckling convolutional neural network is proposed. RepDNet introduces two re-parameterized blocks: the Pixel Smoothing Block (PSB) and Edge Enhancement Block (EEB), preserving edge information while attenuating speckle noise. During training, PSB and EEB manifest as double-layered multi-branch structures, integrating first-order and second-order derivatives and smoothing functions. During inference, the branches are re-parameterized into a 3 × 3 convolution, enabling efficient inference without sacrificing accuracy. RepDNet comprises three computational operations: 3 × 3 convolution, element-wise summation and Rectified Linear Unit activation. Evaluations on benchmark datasets, a real SSS dataset and Data collected at Lake Mulan aestablish RepDNet as a well-balanced network, meeting the AUV computational constraints in terms of performance and latency.
Keywords: Domain knowledge
Re-parameterization
Side-scan sonar
Sonar image despeckling
Publisher: KeAi Publishing Communications Ltd.
Journal: Defence technology 
ISSN: 2096-3459
EISSN: 2214-9147
DOI: 10.1016/j.dt.2023.12.007
Rights: © 2023 China Ordnance Society. Publishing services by Elsevier B.V. on behalf of KeAi Communications Co. Ltd. This is an open access article under the CC BY-NCND license (http://creativecommons.org/licenses/by-nc-nd/4.0/).
The following publication Li, Z., Wang, Z., Chen, D., Yip, T. L., & Teixeira, A. P. (2024). RepDNet: A re-parameterization despeckling network for autonomous underwater side-scan sonar imaging with prior-knowledge customized convolution. Defence Technology, 35, 259-274 is available at https://doi.org/10.1016/j.dt.2023.12.007.
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