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Analysis SimCO Algorithms for Sparse Analysis Model Based Dictionary Learning

机译:基于稀疏分析模型的字典学习的SimCO分析算法

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摘要

In this paper, we consider the dictionary learning problem for the sparse analysis model. A novel algorithm is proposed by adapting the simultaneous codeword optimization (SimCO) algorithm, based on the sparse synthesis model, to the sparse analysis model. This algorithm assumes that the analysis dictionary contains unit -norm atoms and learns the dictionary by optimization on manifolds. This framework allows multiple dictionary atoms to be updated simultaneously in each iteration. However, similar to several existing analysis dictionary learning algorithms, dictionaries learned by the proposed algorithm may contain similar atoms, leading to a degenerate (coherent) dictionary. To address this problem, we also consider restricting the coherence of the learned dictionary and propose Incoherent Analysis SimCO by introducing an atom decorrelation step following the update of the dictionary. We demonstrate the competitive performance of the proposed algorithms using experiments with synthetic data and image denoising as compared with existing algorithms.
机译:在本文中,我们将字典学习问题视为稀疏分析模型。通过将基于稀疏合成模型的同时码字优化(SimCO)算法应用于稀疏分析模型,提出了一种新算法。该算法假定分析字典包含单位范数原子,并通过对流形进行优化来学习该字典。该框架允许在每次迭代中同时更新多个字典原子。但是,类似于几种现有的分析字典学习算法,通过所提出的算法学习的字典可能包含相似的原子,从而导致退化的(连贯的)字典。为了解决这个问题,我们还考虑限制学习词典的相干性,并通过在词典更新后引入原子去相关步骤来提出不相干分析SimCO。我们使用合成数据和图像降噪实验与现有算法进行比较,证明了所提出算法的竞争性能。

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