基于加权编码的多径衰落信道损坏图像恢复

V. Yatnalli, Saroja S. Bhusare, K. M., Akshatha Naik, Ashwini T, Dakhshayani, Chandana D
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引用次数: 0

摘要

多径衰落以一种或另一种形式影响无线电通信链路。瑞利信道和瑞利信道是两种多径衰落信道。在通过这些信道传输数据的过程中,图像受到许多类型的噪声的影响,这些噪声类似于加性高斯白噪声(AWGN)、脉冲噪声(IN)或两者的组合,称为“混合噪声”。消除此类噪声是一项关键且具有挑战性的工作。在这种情况下,噪声的传播没有任何预定义的模型,因此,图像的质量进一步降低。该方法采用加权稀疏非局部正则化编码(WESNR)去除混合噪声。与现有的图像去噪方法相比,加权编码技术具有更好的性能。通过参数PSNR和SSIM来比较自适应中值滤波器(AMF)和WESNR的性能。
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Restoration of Images Corrupted by Multipath Fading Channel with Weighted Encoding
Multipath fading affects the radio communication links in one form or another. Rayleigh and Rician are the two types of multipath fading channels. During the transmission of data over these channels, the images are affected by many types of noise similar to Additive White Gaussian Noise (AWGN), Impulse Noise (IN) or the combination of both called as “mixed noise”. Removal of such noise is a critical and challenging work. The noise spreading in this case does not have any predefined model and due to this, the quality of the image further reduces. In the proposed method, the mixed noise is removed using Weighted Encoding with Sparse Nonlocal Regularization (WESNR). The Weighted Encoding technique performs better when compared to the existing image denoising methods. The parameters, PSNR and SSIM are considered to compare the performance of Adaptive Median Filter (AMF) and WESNR.
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