TIGRE
GPU-based CT reconstruction software
A toolbox providing high-performance algorithms for tomographic reconstruction on GPUs
TIGRE: Tomographic Iterative GPU-based Reconstruction Toolbox
588 stars
44 watching
192 forks
Language: MATLAB
last commit: 13 days ago
Linked from 1 awesome list
cudagpusimage-reconstructionmatlabpythontigretomographytoolboxx-ray
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