Title :
Aggregated Regularization of Remote Sensing Image Restoration Using Deterministic and Statistic Techniques
Author :
Arce, Stewart Rene Santos ; Vargas, Jose Tuxpan
Abstract :
This paper presents a technique for the high resolution enhancement of remote sensing imagery degraded in a random channel and contaminated with composed noise (additive and multiplicative). The proposed method aggregates the Constraint Least Square (CLS), the Bayes Minimum Risk (BMR), the maximum entropy Median Filter (MF) and the Variational Analysis (VA) techniques. In the fused strategy, we first apply the MF technique unified with the CLS algorithm, next, we unify the BMR iterative algorithm with the VA techniques, and last, we aggregate the unified MF-CLS and VA-BMR techniques in the resulting fused MF-CLS-BMR-VA method with the objective of an enhanced image reconstruction with improved resolution performances.
Keywords :
Bayes methods; image enhancement; image restoration; remote sensing; Bayes minimum risk; aggregated regularization; constraint least square; deterministic techniques; high resolution enhancement; maximum entropy median filter; random channel; remote sensing image restoration; statistic techniques; variational analysis; Additive noise; Aggregates; Degradation; Entropy; Image resolution; Image restoration; Iterative algorithms; Least squares methods; Remote sensing; Statistics; . Computer simulations; experiment design; regularization; remote sensing; software.;
Conference_Titel :
Electronics, Robotics and Automotive Mechanics Conference, 2009. CERMA '09.
Conference_Location :
Cuernavaca, Morelos
Print_ISBN :
978-0-7695-3799-3
DOI :
10.1109/CERMA.2009.20