| Literature DB >> 34949896 |
Min Zhang1, Geoffrey S Young1, Yanmei Tie2, Xianfeng Gu3, Xiaoyin Xu1.
Abstract
In this work we present a framework of designing iterative techniques for image deblurring in inverse problem. The new framework is based on two observations about existing methods. We used Landweber method as the basis to develop and present the new framework but note that the framework is applicable to other iterative techniques. First, we observed that the iterative steps of Landweber method consist of a constant term, which is a low-pass filtered version of the already blurry observation. We proposed a modification to use the observed image directly. Second, we observed that Landweber method uses an estimate of the true image as the starting point. This estimate, however, does not get updated over iterations. We proposed a modification that updates this estimate as the iterative process progresses. We integrated the two modifications into one framework of iteratively deblurring images. Finally, we tested the new method and compared its performance with several existing techniques, including Landweber method, Van Cittert method, GMRES (generalized minimal residual method), and LSQR (least square), to demonstrate its superior performance in image deblurring.Entities:
Keywords: GMRES; Landweber method; Van Cittert method; continuous forward model update; image deblurring; inverse problem; iterative algorithms; least square method
Year: 2021 PMID: 34949896 PMCID: PMC8691531 DOI: 10.1016/j.patcog.2021.108463
Source DB: PubMed Journal: Pattern Recognit ISSN: 0031-3203 Impact factor: 7.740