基于稀疏性的正交字典学习图像恢复

Chenglong Bao, Jian-Feng Cai, Hui Ji
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引用次数: 92

摘要

近年来,如何从输入图像中学习字典进行稀疏建模一直是图像处理和识别领域的一个非常活跃的课题。大多数现有的字典学习方法都考虑过完备字典,例如K-SVD方法。它们通常需要解决一些最小化问题,这些问题在计算可行性和效率方面非常具有挑战性。然而,如果字典原子之间的相关性没有得到很好的约束,字典的冗余不一定会提高稀疏编码的性能。提出了一种用于稀疏图像表示的快速正交字典学习方法。与基于过完备字典的学习方法相比,该方法在多个图像恢复任务上的性能相当,计算效率更高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fast Sparsity-Based Orthogonal Dictionary Learning for Image Restoration
In recent years, how to learn a dictionary from input images for sparse modelling has been one very active topic in image processing and recognition. Most existing dictionary learning methods consider an over-complete dictionary, e.g. the K-SVD method. Often they require solving some minimization problem that is very challenging in terms of computational feasibility and efficiency. However, if the correlations among dictionary atoms are not well constrained, the redundancy of the dictionary does not necessarily improve the performance of sparse coding. This paper proposed a fast orthogonal dictionary learning method for sparse image representation. With comparable performance on several image restoration tasks, the proposed method is much more computationally efficient than the over-complete dictionary based learning methods.
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