DocumentCode
1325519
Title
Tomographic reconstruction and estimation based on multiscale natural-pixel bases
Author
Bhatia, Mickey ; Karl, William C. ; Willsky, Alan S.
Author_Institution
J.P. Morgan & Co. Inc., New York, NY, USA
Volume
6
Issue
3
fYear
1997
fDate
3/1/1997 12:00:00 AM
Firstpage
463
Lastpage
478
Abstract
We use a natural pixel-type representation of an object, originally developed for incomplete data tomography problems, to construct nearly orthonormal multiscale basis functions. The nearly orthonormal behavior of the multiscale basis functions results in a system matrix, relating the input (the object coefficients) and the output (the projection data), which is extremely sparse. In addition, the coarsest scale elements of this matrix capture any ill conditioning in the system matrix arising from the geometry of the imaging system. We exploit this feature to partition the system matrix by scales and obtain a reconstruction procedure that requires inversion of only a well-conditioned and sparse matrix. This enables us to formulate a tomographic reconstruction technique from incomplete data wherein the object is reconstructed at multiple scales or resolutions. In case of noisy projection data we extend our multiscale reconstruction technique to explicitly account for noise by calculating maximum a posteriori probability (MAP) multiscale reconstruction estimates based on a certain self-similar prior on the multiscale object coefficients. The framework for multiscale reconstruction presented can find application in regularization of imaging problems where the projection data are incomplete, irregular, and noisy, and in object feature recognition directly from projection data
Keywords
feature extraction; image reconstruction; image representation; image resolution; matrix inversion; maximum likelihood estimation; object recognition; sparse matrices; tomography; wavelet transforms; coarsest scale elements; image resolution; imaging problems regularization; imaging system; incomplete data tomography; maximum a posteriori probability estimates; multiscale natural-pixel bases; multiscale reconstruction; noisy projection data; object coefficients; object feature recognition; orthonormal multiscale basis functions; pixel-type object representation; sparse matrix inversion; system matrix; tomographic estimation; tomographic reconstruction; wavelets; well-conditioned matrix inversion; Computational complexity; Geometry; Image recognition; Image reconstruction; Probability; Reconstruction algorithms; Sparse matrices; Stochastic systems; Tomography; Wavelet transforms;
fLanguage
English
Journal_Title
Image Processing, IEEE Transactions on
Publisher
ieee
ISSN
1057-7149
Type
jour
DOI
10.1109/83.557358
Filename
557358
Link To Document