NSC-SSNet:用于声纳图像去噪的具有邻域子采样和校准约束的自监督网络

Yapei Zhang;Yancheng Liu;Yanhao Wang;Fei Yu
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引用次数: 0

摘要

声纳成像系统在多种海洋应用中发挥着至关重要的作用。然而,复杂的水下环境会带来散射噪声,严重降低声纳图像质量,影响下游任务的性能。虽然已经出现了几种自监督去噪方法来解决缺乏干净参考图像的问题,但这些方法往往不能有效捕捉局部和全局结构信息,因此在声纳图像上表现不佳。为了应对这些挑战,我们提出了 NSC-SSNet,一种具有邻域子采样和校准约束的自监督网络,用于声纳图像去噪。特别是,NSC-SSNet 采用端到端自监督框架,在去噪和校准阶段运行。通过利用邻域子采样和校准约束,它能有效地从噪声输入中提取干净图像的潜在特征。此外,它还通过在损失函数中加入附加项来同时捕捉像素之间的局部和全局关联,从而在去噪的同时提高图像质量。在真实世界声纳图像数据集上进行的大量实验证明,NSC-SSNet 在去噪和提高质量方面都优于现有的自监督去噪方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
NSC-SSNet: A Self-Supervised Network With Neighborhood Subsampling and Calibration Constraints for Sonar Image Denoising
Sonar imaging systems play a crucial role in several marine applications. However, complex underwater environment introduces scattering noise, significantly degrading sonar image quality and hindering performance for downstream tasks. Although several self-supervised denoising methods have emerged to address the lack of clean reference images, they often fail to effectively capture both local and global structural information, thus showing suboptimal performance on sonar images. To address these challenges, we propose NSC-SSNet, a self-supervised network with neighborhood subsampling and calibration constraints for sonar image denoising. In particular, NSC-SSNet adopts an end-to-end self-supervised framework that operates in the denoising and calibration stages. By leveraging neighborhood subsampling and calibration constraints, it effectively extracts latent features of clean images from noisy input. Moreover, it simultaneously captures local and global associations between pixels by incorporating additional terms in the loss function to improve image quality while denoising. Extensive experiments on real-world sonar image datasets demonstrate that NSC-SSNet outperforms existing self-supervised denoising methods in terms of both noise removal and quality enhancement.
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