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Mingyuan Zhou, Haojun Chen, John Paisley, Lu Ren, Guillermo Sapiro, Larry Carin

Duke University; Duke University; ; Duke University; University of Minnesota;

Non-Parametric Bayesian Dictionary Learning for Sparse Image Representations

11:20 - 11:40am Tuesday, December 08, 2009

This is part of the Oral Session 2: Images and Codes which begins at 10:40 on Tuesday December 8, 2009

Non-parametric Bayesian techniques are considered for learning dictionaries for sparse image representations, with applications in denoising, inpainting and compressive sensing (CS). The beta process is employed as a prior for learning the dictionary, and this non-parametric method naturally infers an appropriate dictionary size. The Dirichlet process and a probit stick-breaking process are also considered to exploit structure within an image. The proposed method can learn a sparse dictionary in situ; training images may be exploited if available, but they are not required. Further, the noise variance need not be known, and can be non-stationary. Another virtue of the proposed method is that sequential inference can be readily employed, thereby allowing scaling to large images. Several example results are presented, using both Gibbs and variational Bayesian inference, with comparisons to other state-of-the-art approaches.