Blind image deconvolution subject to bandwidth and total variation constraints

We present a maximum likelihood (ML) deconvolution algorithm with bandwidth and total variation (TV) constraints for degraded image due to atmospheric turbulence. The bandwidth limit function is estimated in view of optical system parameters and Fourier optical theory. With the aid of bandwidth and...

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Bibliographic Details
Published in:Optics letters Vol. 32; no. 17; p. 2550
Main Authors: Hao, Zhu, Yu, Lu, Qinzhang, Wu
Format: Journal Article
Language:English
Published: United States 01.09.2007
ISSN:0146-9592
Online Access:Get more information
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Summary:We present a maximum likelihood (ML) deconvolution algorithm with bandwidth and total variation (TV) constraints for degraded image due to atmospheric turbulence. The bandwidth limit function is estimated in view of optical system parameters and Fourier optical theory. With the aid of bandwidth and TV minimization as compelling constraints, the algorithm can not only suppress noise effectively but also restrict the bandwidth of point-spread function (PSF) that may lead to trivial solution. Compared with the conventional ML method, the proposed algorithm is able to restore a noise-free image, and the detailed texture is better than that of ML.
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ISSN:0146-9592
DOI:10.1364/OL.32.002550