Blur in images can be removed by solving a series of box-constrained linear least-squares problems. In this paper, we compare two recent approaches for solving these problems using affine-scaling methods. Both approaches aim at solving a nonlinear system arising from the Karush-Kuhn-Tucker condition. One approach is to identify the active set and update the inactive components of the iterates by using a Newton-like method. The other is to iteratively solve the nonlinear system entry-wise by a Quasi-Newton method.
Affine scaling methods for image deblurring problems / R.H.Chan; B.Morini; M.Porcelli. - STAMPA. - 1281:(2010), pp. 1043-1046. (Intervento presentato al convegno ICNAAM, Numerical Analysis and Applied Mathematics, International Conference 2010) [10.1063/1.3497806].
Affine scaling methods for image deblurring problems
MORINI, BENEDETTA;PORCELLI, MARGHERITA
2010
Abstract
Blur in images can be removed by solving a series of box-constrained linear least-squares problems. In this paper, we compare two recent approaches for solving these problems using affine-scaling methods. Both approaches aim at solving a nonlinear system arising from the Karush-Kuhn-Tucker condition. One approach is to identify the active set and update the inactive components of the iterates by using a Newton-like method. The other is to iteratively solve the nonlinear system entry-wise by a Quasi-Newton method.I documenti in FLORE sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.