• DocumentCode
    740097
  • Title

    Dictionary Pair Learning on Grassmann Manifolds for Image Denoising

  • Author

    Xianhua Zeng ; Wei Bian ; Wei Liu ; Jialie Shen ; Dacheng Tao

  • Author_Institution
    Chongqing Key Lab. of Comput. Intell., Chongqing Univ. of Posts & Telecommun., Chongqing, China
  • Volume
    24
  • Issue
    11
  • fYear
    2015
  • Firstpage
    4556
  • Lastpage
    4569
  • Abstract
    Image denoising is a fundamental problem in computer vision and image processing that holds considerable practical importance for real-world applications. The traditional patch-based and sparse coding-driven image denoising methods convert 2D image patches into 1D vectors for further processing. Thus, these methods inevitably break down the inherent 2D geometric structure of natural images. To overcome this limitation pertaining to the previous image denoising methods, we propose a 2D image denoising model, namely, the dictionary pair learning (DPL) model, and we design a corresponding algorithm called the DPL on the Grassmann-manifold (DPLG) algorithm. The DPLG algorithm first learns an initial dictionary pair (i.e., the left and right dictionaries) by employing a subspace partition technique on the Grassmann manifold, wherein the refined dictionary pair is obtained through a sub-dictionary pair merging. The DPLG obtains a sparse representation by encoding each image patch only with the selected sub-dictionary pair. The non-zero elements of the sparse representation are further smoothed by the graph Laplacian operator to remove the noise. Consequently, the DPLG algorithm not only preserves the inherent 2D geometric structure of natural images but also performs manifold smoothing in the 2D sparse coding space. We demonstrate that the DPLG algorithm also improves the structural SIMilarity values of the perceptual visual quality for denoised images using the experimental evaluations on the benchmark images and Berkeley segmentation data sets. Moreover, the DPLG also produces the competitive peak signal-to-noise ratio values from popular image denoising algorithms.
  • Keywords
    image coding; image denoising; image segmentation; vectors; visual perception; 1D vectors; 2D geometric structure; 2D image denoising; 2D image patches; 2D sparse coding space; Berkeley segmentation data sets; Grassmann manifold algorithm; computer vision; dictionary pair learning; graph Laplacian operator; image patch encoding; image processing; manifold smoothing; natural images; perceptual visual quality; sparse representation; structural similarity values; sub-dictionary pair merging; subspace partition; Dictionaries; Image coding; Image denoising; Manifolds; Noise measurement; Partitioning algorithms; Sparse matrices; 2D sparse coding; Grassmann manifold; Image denoising; dictionary pair; graph Laplacian operator; image denoising; smoothing; two dimensional sparse coding;
  • fLanguage
    English
  • Journal_Title
    Image Processing, IEEE Transactions on
  • Publisher
    ieee
  • ISSN
    1057-7149
  • Type

    jour

  • DOI
    10.1109/TIP.2015.2468172
  • Filename
    7194811