基于稀疏表示的非相干字典学习图像去噪

Jin Wang, Jian-Feng Cai, Yunhui Shi, Baocai Yin
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引用次数: 8

摘要

稀疏表示的字典学习一直是图像处理领域的一个活跃课题。大多数现有的字典学习方案关注的是学习到的字典的表示能力。然而,根据压缩感知理论,字典的相互不相干性在稀疏编码中起着至关重要的作用。因此,非相干字典是提高基于稀疏表示的图像恢复性能的理想方法。在本文中,我们提出了一种新的非相干字典学习模型,该模型通过在字典更新模型中加入相互不相干的约束来最小化表示误差和相互不相干。通过寻找最优解来获得最优的非相干字典。提出了一种迭代求解优化问题的有效算法。图像去噪实验结果表明,该方法在保持较低的计算复杂度的同时,取得了比K-SVD更好的恢复质量和更快的收敛速度。
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Incoherent dictionary learning for sparse representation based image denoising
Dictionary learning for sparse representation has been an active topic in the field of image processing. Most existing dictionary learning schemes focus on the representation ability of the learned dictionary. However, according to the theory of compressive sensing, the mutual incoherence of the dictionary is of crucial role in the sparse coding. Thus incoherent dictionary is desirable to improve the performance of sparse representation based image restoration. In this paper, we propose a new incoherent dictionary learning model that minimizes the representation error and the mutual incoherence by incorporating the constraint of mutual incoherence into the dictionary update model. The optimal incoherent dictionary is achieved by seeking an optimization solution. An efficient algorithm is developed to solve the optimization problem iteratively. Experimental results on image denoising demonstrate that the proposed scheme achieves better recovery quality and converges faster than K-SVD while keeping lower computation complexity.
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