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Large Scale Bayesian Inference and Experimental Design for Sparse Linear Models
2011
SIAM Journal of Imaging Sciences
Many problems of low-level computer vision and image processing, such as denoising, deconvolution, tomographic reconstruction or superresolution, can be addressed by maximizing the posterior distribution of a sparse linear model (SLM). We show how higher-order Bayesian decision-making problems, such as optimizing image acquisition in magnetic resonance scanners, can be addressed by querying the SLM posterior covariance, unrelated to the density's mode. We propose a scalable algorithmic
doi:10.1137/090758775
fatcat:42sk63p2argj3cg2trcyigbbfm