Title :
Non-parametric Bayesian dictionary learning for image super resolution
Author :
Li He ; Hairong Qi ; Zaretzki, Russell
Author_Institution :
Dept. of Electr. Eng. & Comput. Sci., Univ. of Tennessee, Knoxville, TN, USA
Abstract :
This paper addresses the problem of generating a super-resolution (SR) image from a single low-resolution input image. A non-parametric Bayesian method is implemented to train the over-complete dictionary. The first advantage of using non-parametric Bayesian approach is the number of dictionary atoms and their relative importance may be inferred non-parametrically. In addition, sparsity level of the coefficients may be inferred automatically. Finally, the non-parametric Bayesian approach may learn the dictionary in situ. Two previous state-of-the-art methods including the efficient ℓ1 method and the (K-SVD) are implemented for comparison. Although the efficient ℓ1 method overall produces the best quality super-resolution images, the 837-atom dictionary trained by non-parametric Bayesian method produces super-resolution images that very close to quality of images produced by the 1024-atom efficient ℓ1 dictionary. Finally, the non-parametric Bayesian method has the fastest speed in training the over-complete dictionary.
Keywords :
belief networks; image resolution; learning (artificial intelligence); nonparametric statistics; ℓ1 method; K-SVD; dictionary atoms; dictionary learning; image quality; image super resolution; nonparametric Bayesian dictionary learning; over-complete dictionary training; single low-resolution input image; sparse representation method; sparsity level; Bayes methods; Dictionaries; Image reconstruction; Image resolution; Interpolation; Signal resolution; Training; Single-image super resolution; non-parametric Bayesian; over-complete dictionary learning;
Conference_Titel :
Future of Instrumentation International Workshop (FIIW), 2011
Conference_Location :
Oak Ridge, TN
Print_ISBN :
978-1-4673-5835-4
DOI :
10.1109/FIIW.2011.6476831