• DocumentCode
    10083
  • Title

    An Adaptive Approach to Learn Overcomplete Dictionaries With Efficient Numbers of Elements

  • Author

    Marsousi, Mahdi ; Abhari, Kamyar ; Babyn, Paul ; Alirezaie, J.

  • Author_Institution
    Dept. of Electr. & Comput. Eng., Univ. of Toronto, Toronto, ON, Canada
  • Volume
    62
  • Issue
    12
  • fYear
    2014
  • fDate
    15-Jun-14
  • Firstpage
    3272
  • Lastpage
    3283
  • Abstract
    Dictionary learning for sparse representation has recently attracted attention among the signal processing society in a variety of applications such as denoising, classification, and compression. The number of elements in a learned dictionary is crucial since it governs specificity and optimality of sparse representation. Sparsity level, number of dictionary elements, and representation error are three correlated factors in which setting each pair of them results in a specific value of the third factor. An arbitrary selection of the number of dictionary elements affects either the sparsity level or/and the representation error. Despite recent advancements in training dictionaries, the number of dictionary elements is still heuristically set. To avoid the representation´s suboptimality, a systematic approach to adapt the elements´ number based on input datasets is essential. Some existing methods try to address this requirement such as enhanced K-SVD, sub-clustering K-SVD, and stage-wise K-SVD. However, it is not specified under which sparsity level and representation error criteria their learned dictionaries are size-optimized. We propose a new dictionary learning approach that automatically learns a dictionary with an efficient number of elements that provides both desired representation error and desired average sparsity level. In our proposed method, for any given representation error and average sparsity level, the number of elements in the learned dictionary varies based on content complexity of training datasets. The performance of the proposed method is demonstrated in image denoising. The proposed method is compared to state-of-the-art, and results confirm the superiority of the proposed approach.
  • Keywords
    correlation methods; image denoising; image representation; learning (artificial intelligence); adaptive approach; arbitrary selection; correlated factors; dictionary elements; dictionary learning approach; enhanced K-SVD; image denoising; representation error criteria; signal classification; signal compression; signal denoising; signal processing society; sparse representation; sparsity level; stage-wise K-SVD; subclustering K-SVD; training datasets; training dictionaries; Computers; Dictionaries; Educational institutions; Iterative methods; Noise reduction; Training; Vectors; Adaptive size dictionary; dictionary learning; sparse representation;
  • fLanguage
    English
  • Journal_Title
    Signal Processing, IEEE Transactions on
  • Publisher
    ieee
  • ISSN
    1053-587X
  • Type

    jour

  • DOI
    10.1109/TSP.2014.2324994
  • Filename
    6817595