Title : 
K-SVD Meets Transform Learning: Transform K-SVD
         
        
            Author : 
Eksioglu, Ender M. ; Bayir, Ozden
         
        
            Author_Institution : 
Electron. & Commun. Eng. Dept., Istanbul Tech. Univ., Istanbul, Turkey
         
        
        
        
        
        
        
        
            Abstract : 
Recently there has been increasing attention directed towards the analysis sparsity models. Consequently, there is a quest for learning the operators which would enable analysis sparse representations for signals in hand. Analysis operator learning algorithms such as the Analysis K-SVD have been proposed. Sparsifying transform learning is a paradigm which is similar to the analysis operator learning, but they differ in some subtle points. In this paper, we propose a novel transform operator learning algorithm called as the Transform K-SVD, which brings the transform learning and the K-SVD based analysis dictionary learning approaches together. The proposed Transform K-SVD has the important advantage that the sparse coding step of the Analysis K-SVD gets replaced with the simple thresholding step of the transform learning framework. We show that the Transform K-SVD learns operators which are similar both in appearance and performance to the operators learned from the Analysis K-SVD, while its computational complexity stays much reduced compared to the Analysis K-SVD.
         
        
            Keywords : 
encoding; image denoising; signal representation; singular value decomposition; transforms; analysis K-SVD; analysis dictionary learning; analysis operator learning; analysis sparsity models; sparse coding; sparse signal representation; transform K-SVD; transform operator learning algorithm; Algorithm design and analysis; Analytical models; Dictionaries; Minimization; Signal processing algorithms; Transforms; Vectors; Analysis operator learning; dictionary learning; sparse representation; sparsifying transform learning;
         
        
        
            Journal_Title : 
Signal Processing Letters, IEEE
         
        
        
        
        
            DOI : 
10.1109/LSP.2014.2303076