4.7 Article

Efficient Gaussian Sampling for Solving Large-Scale Inverse Problems Using MCMC

Journal

IEEE TRANSACTIONS ON SIGNAL PROCESSING
Volume 63, Issue 1, Pages 70-80

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TSP.2014.2367457

Keywords

Adaptive MCMC; conjugate gradient; Gibbs algorithm; multivariate Gaussian sampling; reversible jump Monte Carlo

Funding

  1. CNRS
  2. French Region des Pays de la Loire (France)

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The resolution of many large-scale inverse problems using MCMC methods requires a step of drawing samples from a high dimensional Gaussian distribution. While direct Gaussian sampling techniques, such as those based on Cholesky factorization, induce an excessive numerical complexity and memory requirement, sequential coordinate sampling methods present a low rate of convergence. Based on the reversible jump Markov chain framework, this paper proposes an efficient Gaussian sampling algorithm having a reduced computation cost and memory usage, while maintaining the theoretical convergence of the sampler. The main feature of the algorithm is to perform an approximate resolution of a linear system with a truncation level adjusted using a self-tuning adaptive scheme allowing to achieve the minimal computation cost per effective sample. The connection between this algorithm and some existing strategies is given and its performance is illustrated on a linear inverse problem of image resolution enhancement.

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