A Gaussian Mixture MRF for Model-Based Iterative Reconstruction With Applications to Low-Dose X-Ray CT
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Ken D. Sauer | Charles A. Bouman | Jean-Baptiste Thibault | Dong Hye Ye | Debashish Pal | Ruoqiao Zhang | C. Bouman | J. Thibault | K. Sauer | D. Pal | Ruoqiao Zhang | Jean-Baptiste Thibault
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