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These are the scripts in order to create the synthetic datasets used for training and testing of the UDNN network. In the Phantom3DLibrary.dat the corresponding phantoms are described as list of geometric shapes. The Create_Synth_Projections.py contains the function for the generantion of the training and testing datasets with noisy projections. For the execution of the function the TomoPhantom toolbox (https://doi.org/10.5281/zenodo.1232424) has to be installed. Apart from that, the noiseless training and testing datasets are also given.
UDNN
UDNN
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