CCPi-Regularisation toolkit for computed tomographic image reconstruction with proximal splitting algorithms

SoftwareX(2019)

引用 17|浏览11
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摘要
Iterative reconstruction algorithms are often needed to help solve ill-posed inverse problems in computed tomography (CT), especially cases when tomographic projection data are corrupt, noisy or angularly undersampled. Model-based iterative methods can be adapted to fit the measurement characteristics of the data (e.g. noise statistics) and expectations regarding the reconstructed object (e.g. morphology). The prior information is usually introduced in the form of a regulariser, making the inversion task well-posed.
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关键词
X-ray CT,Iterative methods,Model-based,Regularisation,Denoising,Primal–dual,Big-data
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