Title of article :
A Multiplicative Regularization Approach for Deblurring Problems
Author/Authors :
A. Abubakar، نويسنده , , R. E. Kleinman and P. M. van den Berg، نويسنده , , T. M. Habashy، نويسنده , , and H. Braunisch، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2004
Abstract :
In this work, an iterative inversion algorithm for deblurring and deconvolution is considered. The algorithm is based on the conjugate gradient scheme and uses the so-called weighted L2-norm regularizer to obtain a reliable solution. The regularizer is included as a multiplicative constraint. In this way, the appropriate regularization parameter will be controlled by the optimization process itself. In fact, the misfit in the error in the space of the blurring operator is the regularization parameter. Then, no a priori knowledge on the blurred data or image is needed. If noise is present, the misfit in the error consisting of the blurring operator will remain at a large value during the optimization process; therefore, the weight of the regularization factor will be more significant. Hence, the noise will, at all times, be suppressed in the reconstruction process. Although one may argue that, by including the regularization factor as a multiplicative constraint, the linearity of the problem has been lost, careful analysis shows that, under certain restrictions, no new local minima are introduced. Numerical testing shows that the proposed algorithm works effectively and efficiently in various practical applications.
Keywords :
Conjugate gradient (CG) , ill posed , inverse problems , regularization. , Deblurring
Journal title :
IEEE TRANSACTIONS ON IMAGE PROCESSING
Journal title :
IEEE TRANSACTIONS ON IMAGE PROCESSING