Sparse Givens resolution of large system of linear equations: Applications to image reconstruction
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[1] Keana D Allert,et al. Novel Materials for Low-Contrast Phantoms for Computed Tomography. , 2007, Journal of X-ray science and technology.
[2] Peter M. Joseph. Image Reconstruction from Projections: The Fundamentals of Computed Tomography, by G. T. Herman , 1982 .
[3] E. Levitan,et al. A Maximum a Posteriori Probability Expectation Maximization Algorithm for Image Reconstruction in Emission Tomography , 1987, IEEE Transactions on Medical Imaging.
[5] Fred G. Gustavson,et al. Two Fast Algorithms for Sparse Matrices: Multiplication and Permuted Transposition , 1978, TOMS.
[6] Timothy A. Davis,et al. Direct methods for sparse linear systems , 2006, Fundamentals of algorithms.
[7] Gene H. Golub,et al. Matrix computations , 1983 .
[8] José Vicente Romero,et al. New pixellation scheme for CT algebraic reconstruction to exploit matrix symmetries , 2008, Comput. Math. Appl..
[9] L. Shepp,et al. Maximum Likelihood Reconstruction for Emission Tomography , 1983, IEEE Transactions on Medical Imaging.
[10] E. Ng. Row elimination in sparse matrices using rotations , 1983 .
[11] W. Givens. Computation of Plain Unitary Rotations Transforming a General Matrix to Triangular Form , 1958 .
[12] Li Jian,et al. Rotating polar-coordinate ART applied in industrial CT image reconstruction , 2007 .