PAN-DeSpeck: A Lightweight Pyramid and Attention-Based Network for SAR Image Despeckling

Saima Yasmeen, Muhammad Usman Yaseen, Syed Sohaib Ali, Moustafa M. Nasralla, Sohaib Bin Altaf Khattak
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Abstract

SAR images commonly suffer from speckle noise, posing a significant challenge in their analysis and interpretation. Existing convolutional neural network (CNN) based despeckling methods have shown great performance in removing speckle noise. However, these CNN-based methods have a few limitations. They do not decouple complex background information in a multi-resolution manner. Moreover, they have deep network structures that may result in many parameters, limiting their applicability to mobile devices. Furthermore, extracting key speckle information in the presence of complex background is also a major problem with SAR. The proposed study addresses these limitations by introducing a lightweight pyramid and attention-based despeckling (PAN-Despeck) network. The primary objective is to enhance image quality and enable improved information interpretation, particularly on mobile devices and scenarios involving complex backgrounds. The PAN-Despeck network leverages domain-specific knowledge and integrates Gaussian Laplacian image pyramid decomposition for multi-resolution image analysis. By utilizing this approach, complex background information can be effectively decoupled, leading to enhanced despeckling performance. Furthermore, the attention mechanism selectively focuses on key speckle features and facilitates complex background removal. The network incorporates recursive and residual blocks to ensure computational efficiency and accelerate training speed, making it lightweight while maintaining high performance. Through comprehensive evaluations, it is demonstrated that PAN-Despeck outperforms existing image restoration methods. With an impressive average peak signal-to-noise ratio (PSNR) of 28.355114 and a remarkable structural similarity index (SSIM) of 0.905467, it demonstrates exceptional performance in effectively reducing speckle noise in SAR images. The source code for the PAN-DeSpeck network is available on .
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泛去噪:SAR图像去噪的轻量级金字塔和基于注意力的网络
SAR图像通常受到斑点噪声的影响,这对其分析和解释构成了重大挑战。现有的基于卷积神经网络(CNN)的去斑方法在去斑噪声方面表现出了很好的效果。然而,这些基于cnn的方法有一些局限性。它们不能以多分辨率的方式解耦复杂的背景信息。此外,它们具有深度网络结构,可能导致许多参数,限制了它们在移动设备上的适用性。此外,在复杂背景下提取关键斑点信息也是SAR的一个主要问题。该研究通过引入轻量级金字塔和基于注意力的去斑(PAN-Despeck)网络来解决这些限制。主要目标是提高图像质量并改进信息解释,特别是在移动设备和涉及复杂背景的场景上。PAN-Despeck网络利用特定领域的知识,并集成高斯拉普拉斯图像金字塔分解,用于多分辨率图像分析。利用这种方法,可以有效地解耦复杂的背景信息,从而提高去斑性能。此外,注意机制选择性地聚焦于关键的散斑特征,有助于去除复杂的背景。该网络结合递归和残差块,保证了计算效率,加快了训练速度,在保持高性能的同时实现了轻量级。综合评价表明,PAN-Despeck方法优于现有的图像恢复方法。平均峰值信噪比(PSNR)为28.355114,结构相似指数(SSIM)为0.905467,在有效降低SAR图像中的散斑噪声方面表现出优异的性能。PAN-DeSpeck网络的源代码可在。
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