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Alternating Minimization Algorithm with Automatic Relevance Determination for Transmission Tomography under Poisson Noise
2015
SIAM Journal of Imaging Sciences
We propose a globally convergent alternating minimization (AM) algorithm for image reconstruction in transmission tomography, which extends automatic relevance determination (ARD) to Poisson noise models with Beer's law. The algorithm promotes solutions that are sparse in the pixel/voxeldifferences domain by introducing additional latent variables, one for each pixel/voxel, and then learning these variables from the data using a hierarchical Bayesian model. Importantly, the proposed AM
doi:10.1137/141000038
fatcat:5stgzvbbxzaofh2snhtf433msy