Title :
Efficient multiframe Wiener restoration of blurred and noisy image sequences
Author :
Özkan, Mehmet K. ; Erdem, A. Tanju ; Sezan, M. Ibrahim ; Tekalp, A. Murat
Author_Institution :
Dept. of Electr. Eng., Rochester Univ., NY, USA
fDate :
10/1/1992 12:00:00 AM
Abstract :
Computationally efficient multiframe Wiener filtering algorithms that account for both intraframe (spatial) and interframe (temporal) correlations are proposed for restoring image sequences that are degraded by both blur and noise. One is a general computationally efficient multiframe filter, the cross-correlated multiframe (CCMF) Wiener filter, which directly utilizes the power and cross power spectra of only N×N matrices, where N is the number of frames used in the restoration. In certain special cases the CCMF lends itself to a closed-form solution that does not involve any matrix inversion. A special case is the motion-compensated multiframe (MCMF) filter, where each frame is assumed to be a globally shifted version of the previous frame. In this case, the interframe correlations can be implicitly accounted for using the estimated motion information. Thus the MCMF filter requires neither explicit estimation of cross correlations among the frames nor matrix inversion. Performance and robustness results are given
Keywords :
correlation methods; filtering and prediction theory; image reconstruction; image sequences; motion estimation; blurred images; computationally efficient multiframe filter; cross power spectra; cross-correlated multiframe filter; image restoration; image sequences; interframe correlations; intraframe correlations; motion-compensated multiframe filter; multiframe Wiener filtering; noisy image; spatial correlations; temporal correlations; Aircraft; Cameras; Filtering algorithms; Focusing; Image restoration; Image sequences; Motion estimation; Optical imaging; Robot vision systems; Wiener filter;
Journal_Title :
Image Processing, IEEE Transactions on