Computer Science – Computer Vision and Pattern Recognition
Scientific paper
2011-11-20
Computer Science
Computer Vision and Pattern Recognition
4 pages, 4 figures, 1 table, submitted to IEEE Signal Processing Letters
Scientific paper
In this paper, we propose a new redundant wavelet transform applicable to scalar functions defined on high dimensional coordinates, weighted graphs and networks. The proposed transform utilizes the distances between the given data points. We modify the filter-bank decomposition scheme of the redundant wavelet transform by adding in each decomposition level linear operators that reorder the approximation coefficients. These reordering operators are derived by organizing the tree-node features so as to shorten the path that passes through these points. We explore the use of the proposed transform to image denoising, and show that it achieves denoising results that are close to those obtained with the BM3D algorithm.
Cohen Israel
Elad Michael
Ram Idan
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