DocumentCode
62348
Title
Learning Sparsifying Transforms
Author
Ravishankar, S. ; Bresler, Yoram
Author_Institution
Dept. of Electr. & Comput. Eng., Univ. of Illinois, Urbana, IL, USA
Volume
61
Issue
5
fYear
2013
fDate
1-Mar-13
Firstpage
1072
Lastpage
1086
Abstract
The sparsity of signals and images in a certain transform domain or dictionary has been exploited in many applications in signal and image processing. Analytical sparsifying transforms such as Wavelets and DCT have been widely used in compression standards. Recently, synthesis sparsifying dictionaries that are directly adapted to the data have become popular especially in applications such as image denoising, inpainting, and medical image reconstruction. While there has been extensive research on learning synthesis dictionaries and some recent work on learning analysis dictionaries, the idea of learning sparsifying transforms has received no attention. In this work, we propose novel problem formulations for learning sparsifying transforms from data. The proposed alternating minimization algorithms give rise to well-conditioned square transforms. We show the superiority of our approach over analytical sparsifying transforms such as the DCT for signal and image representation. We also show promising performance in signal denoising using the learnt sparsifying transforms. The proposed approach is much faster than previous approaches involving learnt synthesis, or analysis dictionaries.
Keywords
discrete cosine transforms; image denoising; image reconstruction; image representation; wavelet transforms; DCT; analysis dictionary; image denoising; image processing; image representation; learning sparsifying transforms; learnt synthesis; medical image reconstruction; minimization algorithm; signal denoising; signal processing; signal representation; signal sparsity; square transforms; transform domain; wavelets; Algorithm design and analysis; Analytical models; Dictionaries; Encoding; Noise measurement; Signal analysis; Transforms; Compressed sensing; dictionary learning; signal denoising; sparse representation; sparsifying transforms;
fLanguage
English
Journal_Title
Signal Processing, IEEE Transactions on
Publisher
ieee
ISSN
1053-587X
Type
jour
DOI
10.1109/TSP.2012.2226449
Filename
6339108
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