4.6 Article

Group-Sparse Representation With Dictionary Learning for Medical Image Denoising and Fusion

期刊

IEEE TRANSACTIONS ON BIOMEDICAL ENGINEERING
卷 59, 期 12, 页码 3450-3459

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TBME.2012.2217493

关键词

3-D medical image denoising; dictionary learning; graph regularization; group sparse representation; medical image fusion; temporal regularization

资金

  1. National Natural Science Foundation of China [61172161]
  2. Scholarship Award for Excellent Doctoral Student
  3. Chinese Ministry of Education

向作者/读者索取更多资源

Recently, sparse representation has attracted a lot of interest in various areas. However, the standard sparse representation does not consider the intrinsic structure, i.e., the nonzero elements occur in clusters, called group sparsity. Furthermore, there is no dictionary learning method for group sparse representation considering the geometrical structure of space spanned by atoms. In this paper, we propose a novel dictionary learning method, called Dictionary Learning with Group Sparsity and Graph Regularization (DL-GSGR). First, the geometrical structure of atoms is modeled as the graph regularization. Then, combining group sparsity and graph regularization, the DL-GSGR is presented, which is solved by alternating the group sparse coding and dictionary updating. In this way, the group coherence of learned dictionary can be enforced small enough such that any signal can be group sparse coded effectively. Finally, group sparse representation with DL-GSGR is applied to 3-D medical image denoising and image fusion. Specifically, in 3-D medical image denoising, a 3-D processing mechanism (using the similarity among nearby slices) and temporal regularization (to perverse the correlations across nearby slices) are exploited. The experimental results on 3-D image denoising and image fusion demonstrate the superiority of our proposed denoising and fusion approaches.

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