图像恢复的迭代去噪

O. Guleryuz
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引用次数: 29

摘要

我们提出了一种图像恢复算法,其中使用图像/视频帧中完全丢失的块周围的空间信息来恢复这些块。我们的主要应用是包含纹理,边缘和其他图像特征的像素丢失区域,这些区域不易被流行的恢复和错误隐藏算法处理。该算法基于通用去噪算法的迭代应用,不需要任何复杂的预处理、分割或边缘检测步骤。利用局部稀疏线性变换和过完全去噪,我们在这些区域的恢复中获得了良好的PSNR性能。除了图像恢复的结果之外,本文还提供了对小波、小波包、离散余弦变换(DCT)和复小波等流行变换在提供稀疏图像表示方面的有用性的进一步见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Iterated denoising for image recovery
We propose an algorithm for image recovery where completely lost blocks in an image/video-frame are recovered using spatial information surrounding these blocks. Our primary application is on lost regions of pixels containing textures, edges and other image features that are not readily handled by prevalent recovery and error concealment algorithms. The proposed algorithm is based on the iterative application of a generic denoising algorithm and it does not necessitate any complex preconditioning, segmentation, or edge detection steps. Utilizing locally sparse linear transforms and overcomplete denoising, we obtain good PSNR performance in the recovery of such regions. In addition to results on image recovery, the paper provides further insights into the usefulness of popular transforms like wavelets, wavelet packets, discrete cosine transform (DCT) and complex wavelets in providing sparse image representations.
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