IJCATR Volume 2 Issue 3

Non-Blind Deblurring Using Partial Differential Equation Method

Devender Sharma Puneet Sharma Ritu Sharma
10.7753/IJCATR0203.1005
keywords : PDE,PSF,Deblurring,Weiner filter.

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In this paper, a new idea for two dimensional image deblurring algorithm is introduced which uses basic concepts of PDEs. The various methods to estimate the degradation function (PSF is known in prior called non-blind deblurring) for use in restoration are observation, experimentation and mathematical modeling. Here, PDE based mathematical modeling is proposed to model the degradation and recovery process. Several restoration methods such as Weiner Filtering, Inverse Filtering [1], Constrained Least Squares, and Lucy -Richardson iteration remove the motion blur either using Fourier Transformation in frequency domain or by using optimization techniques. The main difficulty with these methods is to estimate the deviation of the restored image from the original image at individual points that is due to the mechanism of these methods as processing in frequency domain .Another method, the travelling wave de-blurring method is a approach that works in spatial domain.PDE type of observation model describes well several physical mechanisms, such as relative motion between the camera and the subject (motion blur), bad focusing (defocusing blur), or a number of other mechanisms which are well modeled by a convolution. In last PDE method is compared with the existing restoration techniques such as weiner filters, median filters [2] and the results are compared on the basis of calculated PSNR for various noises
@artical{d232013ijcatr02031005,
Title = "Non-Blind Deblurring Using Partial Differential Equation Method",
Journal ="International Journal of Computer Applications Technology and Research(IJCATR)",
Volume = "2",
Issue ="3",
Pages ="232 - 236",
Year = "2013",
Authors ="Devender Sharma Puneet Sharma Ritu Sharma"}
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