This paper studies the regularization of constrained Maximum Likelihood iterative algorithms applied to incompatible ill-posed linear inverse problems. Specifically we introduce a novel stopping rule which defines a regularization algorithm for the Iterative Space Reconstruction Algorithm in the case of Least-Squares minimization. Further we show that the same rule regularizes the Expectation Maximization algorithm in the case of Kullback-Leibler minimization provided a well- justified modification of the definition of Tikhonov regularization is introduced. The performances of this stopping rule are illustrated in the case of an image reconstruction problem in X-ray solar astronomy
Regularization of multiplicative iterative algorithms with non-negative constraint
BENVENUTO, FEDERICO;PIANA, MICHELE
2014-01-01
Abstract
This paper studies the regularization of constrained Maximum Likelihood iterative algorithms applied to incompatible ill-posed linear inverse problems. Specifically we introduce a novel stopping rule which defines a regularization algorithm for the Iterative Space Reconstruction Algorithm in the case of Least-Squares minimization. Further we show that the same rule regularizes the Expectation Maximization algorithm in the case of Kullback-Leibler minimization provided a well- justified modification of the definition of Tikhonov regularization is introduced. The performances of this stopping rule are illustrated in the case of an image reconstruction problem in X-ray solar astronomyI documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.