Title :
Simultaneous recursive displacement estimation and restoration of noisy-blurred image sequences
Author :
Brailean, James C. ; Katsaggelos, Aggelos K.
Author_Institution :
Dept. of Electr. Eng. & Comput. Sci., Northwestern Univ., Evanston, IL, USA
fDate :
9/1/1995 12:00:00 AM
Abstract :
We develop a recursive model-based maximum a posteriori (MAP) estimator that simultaneously estimates the displacement vector field (DVF) and the intensity field from a noisy-blurred image sequence. Current motion-compensated spatio-temporal noise filters treat the estimation of the DVF as a preprocessing step. Generally, no attempt is made to verify the accuracy of these estimates prior to their use in the filter. By simultaneously estimating these two fields, we establish a link between the two estimators. It is through this link that the DVF estimate and its corresponding accuracy information are shared with the other intensity estimator, and vice versa. To model the DVF and the intensity field, we use coupled Gauss-Markov (CGM) models. A CGM model consists of two levels: an upper level, which is made up of several submodels with various characteristics, and a lower level or line field, which governs the transitions between the submodels. The CGM models are well suited for estimating the displacement and intensity fields since the resulting estimates preserve the boundaries between the stationary areas present in both fields. Detailed line fields are proposed for the modeling of these boundaries, which also take into account the correlations that exist between these two fields. A Kalman-type estimator results, followed by a decision criterion for choosing the appropriate set of line fields. Several experiments using noisy and noisy-blurred image sequences demonstrate the superior performance of the proposed algorithm with respect to prediction error and mean-square error
Keywords :
Markov processes; filtering theory; image restoration; image sequences; maximum likelihood estimation; motion compensation; motion estimation; multidimensional digital filters; noise; prediction theory; recursive estimation; video coding; 3-D motion-compensated restoration filter; Kalman-type estimator; MAP estimator; correlations; coupled Gauss-Markov models; decision criterion; digital video; displacement vector field; experiments; intensity estimator; intensity field; line field; maximum a posteriori estimator; mean-square error; motion-compensated spatio-temporal noise filters; noisy-blurred image sequences; performance; prediction error; recursive displacement estimation; recursive displacement restoration; submodels; Degradation; Filtering; Filters; Gaussian processes; Image restoration; Image sequences; Image storage; Motion estimation; Recursive estimation; User-generated content;
Journal_Title :
Image Processing, IEEE Transactions on