02907nmm a2200313 u 4500001001200000003002700012005001700039007002400056008004100080020001800121100002400139245013800163250001700301260005600318300006200374505028800436653002000724653002000744653004000764653002200804700003400826700002900860041001900889989003600908028003000944856007200974082001101046520153601057EB000897286EBX0100000000000000069440600000000000000.0cr|||||||||||||||||||||141008 ||| eng a97833191048501 aChaudhuri, Subhasis00aBlind Image DeconvolutionhElektronische RessourcebMethods and Convergencecby Subhasis Chaudhuri, Rajbabu Velmurugan, Renu Rameshan a1st ed. 2014 aChambSpringer International Publishingc2014, 2014 aXV, 151 p. 33 illus., 16 illus. in colorbonline resource0 aIntroduction -- Mathematical Background -- Blind Deconvolution Methods: A Review -- MAP Estimation: When Does it Work? -- Convergence Analysis in Fourier Domain -- Spatial Domain Convergence Analysis -- Sparsity-based Blind Deconvolution -- Conclusions and Future Research Directions aComputer vision aComputer Vision aSignal, Speech and Image Processing aSignal processing1 aVelmurugan, Rajbabue[author]1 aRameshan, Renue[author]07aeng2ISO 639-2 bSpringeraSpringer eBooks 2005-50a10.1007/978-3-319-10485-040uhttps://doi.org/10.1007/978-3-319-10485-0?nosfx=yxVerlag3Volltext0 a006.37 aBlind deconvolution is a classical image processing problem which has been investigated by a large number of researchers over the last four decades. The purpose of this monograph is not to propose yet another method for blind image restoration. Rather the basic issue of deconvolvability has been explored from a theoretical view point. Some authors claim very good results while quite a few claim that blind restoration does not work. The authors clearly detail when such methods are expected to work and when they will not. In order to avoid the assumptions needed for convergence analysis in the Fourier domain, the authors use a general method of convergence analysis used for alternate minimization based on three point and four point properties of the points in the image space. The authors prove that all points in the image space satisfy the three point property and also derive the conditions under which four point property is satisfied. This provides the conditions under which alternate minimization for blind deconvolution converges with a quadratic prior. Since the convergence properties depend on the chosen priors, one should design priors that avoid trivial solutions. Hence, a sparsity based solution is also provided for blind deconvolution, by using image priors having a cost that increases with the amount of blur, which is another way to prevent trivial solutions in joint estimation. This book will be a highly useful resource to the researchers and academicians in the specific area of blind deconvolution