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Supplementing record containing the test reconstructions computed for the comparison on the Apple CT Datasets in the article "Quantitative comparison of deep learning-based image reconstruction methods for low-dose and sparse-angle CT applications". The experiments include 12 different settings: Noise settings: Noise-free, Gaussian noise, Scattering Numbers of angles: 50, 10, 5, 2 For each setting and each method, reconstructions for 100 selected test slices are included. For details, see the article "Quantitative comparison of deep learning-based image reconstruction methods for low-dose and sparse-angle CT applications". See also the supplementary record containing (trained network) parameters and the supplementary repository providing source code. Below are references for the included methods. cinn: A. Denker et al., 2020, Conditional Normalizing Flows for Low-Dose Computed Tomography Image Reconstruction fbp: Filtered back-projection (ODL implementation) fbpistaunet: T. Liu et al., 2020, Interpreting U-Nets via Task-Driven Multiscale Dictionary Learning fbpmsdnet: D. Pelt et al., 2017, A mixed-scale dense convolutional neural network for image analysis fbpunet: K. H. Jin et al., 2017, Deep Convolutional Neural Network for Inverse Problems in Imaging ictnet: D. Bauer et al., 2021, iCTU-Net (submitted, based on iCT-Net) learnedpd: J. Adler et al., 2018, Learned Primal-Dual Reconstruction tv: Total Variation Regularization (DIVαℓ implementation)
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