Image fusion via nonlocal sparse KSVD dictionary learning

Ying Li, Fangyi Li, Bendu Bai, Qiang Shen

Research output: Contribution to journalArticlepeer-review

30 Scopus citations

Abstract

Image fusion aims to merge two or more images captured via various sensors of the same scene to construct a more informative image by integrating their details. Generally, such integration is achieved through the manipulation of the representations of the images concerned. Sparse representation plays an important role in the effective description of images, offering a great potential in a variety of image processing tasks, including image fusion. Supported by sparse representation, in this paper, an approach for image fusion by the use of a novel dictionary learning scheme is proposed. The nonlocal selfsimilarity property of the images is exploited, not only at the stage of learning the underlying description dictionary but during the process of image fusion. In particular, the property of nonlocal selfsimilarity is combined with the traditional sparse dictionary. This results in an improved learned dictionary, hereafter referred to as the nonlocal sparse KSVD dictionary (where KSVD stands for the K times singular value decomposition that is commonly used in the literature), and abbreviated to NLSKSVD. The performance of the NLSKSVD dictionary is applied for image fusion using simultaneous orthogonal matching pursuit. The proposed approach is evaluated with different types of images, and compared with a number of alternative image fusion techniques. The resultant superior fused images using the present approach demonstrates the efficacy of the NL-SK-SVD dictionary in sparse image representation.

Original languageEnglish
Pages (from-to)1814-1823
Number of pages10
JournalApplied Optics
Volume55
Issue number7
DOIs
StatePublished - 1 Mar 2016

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