Proceedings Article10.1117/12.710713
CatSim: a new computer assisted tomography simulation environment
Bruno De Man,Samit Kumar Basu,Naveen Chandra,Bruce Dunham,Peter Michael Edic,Maria Iatrou,Scott M. Mcolash,Paavana Sainath,Charlie Shaughnessy,Brendon D. Tower,Eugene Clifford Williams +10 more
- 08 Mar 2007
- Vol. 6510, Iss: 29, pp 856-863
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TL;DR: CatSim as discussed by the authors is a simulation environment for X-ray computed tomography, which allows simulating complex analytic phantoms, such as the FORBILD PHANTOM, including boxes, ellipsoids, elliptical cylinders, cones, and cut planes.
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Abstract: We present a new simulation environment for X-ray computed tomography, called CatSim. CatSim provides a research platform for GE researchers and collaborators to explore new reconstruction algorithms, CT architectures, and X-ray source or detector technologies. The main requirements for this simulator are accurate physics modeling, low computation times, and geometrical flexibility. CatSim allows simulating complex analytic phantoms, such as the FORBILD phantoms, including boxes, ellipsoids, elliptical cylinders, cones, and cut planes. CatSim incorporates polychromaticity, realistic quantum and electronic noise models, finite focal spot size and shape, finite detector cell size, detector cross-talk, detector lag or afterglow, bowtie filtration, finite detector efficiency, non-linear partial volume, scatter (variance-reduced Monte Carlo), and absorbed dose. We present an overview of CatSim along with a number of validation experiments.
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