A Fast Dictionary Learning Algorithm for Image Denoising
Abstract
The K-SVD is one of the well-known and effective methods to learn a universal and overcomplete dictionary. However, K-SVD is very expensive because many iteration steps are needed. What’s more, when it converts 2D data patches into 1D vectors for training or learning, K-SVD breaks down the inherent geometric structure of the data. To overcome these limitations, employing a subspace partition technique, we propose an efficient and fast algorithm, the fast top-bottom two-dimensional subspace partition algorithm, for learning overcomplete dictionaries. Experimental simulations demonstrate that our dictionary learning approach is effective for image denoising.
Keywords
Sparse presentation, Dictionary learning, Graph Laplacian, Clustering
DOI
10.12783/dtcse/mso2018/20490
10.12783/dtcse/mso2018/20490
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