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Book Fast Parallel Algorithm for Three dimensional Distance driven Model in Iterative Computed Tomography Reconstruction  Projected Supported by the National High Technology Research and Development Program of China  Grant No  2012AA011603  and the National Natural Science Foundation of China  Grant No  61372172

Download or read book Fast Parallel Algorithm for Three dimensional Distance driven Model in Iterative Computed Tomography Reconstruction Projected Supported by the National High Technology Research and Development Program of China Grant No 2012AA011603 and the National Natural Science Foundation of China Grant No 61372172 written by and published by . This book was released on 2015 with total page pages. Available in PDF, EPUB and Kindle. Book excerpt: Abstract: The projection matrix model is used to describe the physical relationship between reconstructed object and projection. Such a model has a strong influence on projection and backprojection, two vital operations in iterative computed tomographic reconstruction. The distance-driven model (DDM) is a state-of-the-art technology that simulates forward and back projections. This model has a low computational complexity and a relatively high spatial resolution; however, it includes only a few methods in a parallel operation with a matched model scheme. This study introduces a fast and parallelizable algorithm to improve the traditional DDM for computing the parallel projection and backprojection operations. Our proposed model has been implemented on a GPU (graphic processing unit) platform and has achieved satisfactory computational efficiency with no approximation. The runtime for the projection and backprojection operations with our model is approximately 4.5 s and 10.5 s per loop, respectively, with an image size of 256×256×256 and 360 projections with a size of 512×512. We compare several general algorithms that have been proposed for maximizing GPU efficiency by using the unmatched projection/backprojection models in a parallel computation. The imaging resolution is not sacrificed and remains accurate during computed tomographic reconstruction.