利用稀疏字典和滤波后的正交投影实现图像去模糊

I. El-Henawy, A. Ali, K. Ahmed, Hadeer Adel
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引用次数: 3

摘要

本文提出了一种基于稀疏表示和滤波后的正交投影的图像去模糊技术。首先,我们使用预定义的稀疏字典来估计潜在图像的初始版本。为了估计PSF,执行了四个阶段。首先,对输入图像应用一组定向低通滤波器。这些滤波器大大降低了噪声,同时在正交方向上保留了模糊信息。其次,利用稀疏表示生成的初始隐图像对每个滤波后的图像进行初始核估计。第三,在与低通滤波器正交的方向上对每个估计核进行离散radon变换,存储不同角度的投影集;第四,对存储的投影进行离散radon逆变换,得到估计的最终核。最后,采用迭代反卷积方法估计最终的隐锐图像。实验结果表明,在0.054噪声比下获得的最佳PSNR为28.654,在0.054噪声比下获得的最佳SSIM为0.9265。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Blind image deblurring using sparse dictionary and orthogonal projections of filtered patches
In this paper, we present a new blind image deblurring technique based on sparse representation and orthogonal projections of filtered patches. First, we use predefined sparse dictionaries to estimate an initial version of the latent image. To estimate the PSF, four stages are performed. First, a set of directional low-pass filters are applied to the input image. These filters greatly reduces the noise while preserving the blur info in the orthogonal direction. Second, an initial kernel estimation is performed for each filtered image using the initial latent image that was produced by sparse representation. Third, discrete radon transform is applied to each estimated kernel on the orthogonal direction to the low-pass filter and the set of projections at different angles are stored. Fourth, an inverse discrete radon transform is applied to the stored projections and the estimated final kernel is produced. Finally, iterative deconvolution approach is performed to estimate the final latent sharp image. Experimental results showed that the best obtained PSNR is 28.654 at 0.054 noise ratio, whereas the best obtained SSIM is 0.9265 at also 0.054 noise ratio.
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