Title :
Example-Driven Manifold Priors for Image Deconvolution
Author :
Ni, Jie ; Turaga, Pavan ; Patel, Vishal M. ; Chellappa, Rama
Author_Institution :
Dept. of Electr. & Comput. Eng., Univ. of Maryland, College Park, MD, USA
Abstract :
Image restoration methods that exploit prior information about images to be estimated have been extensively studied, typically using the Bayesian framework. In this paper, we consider the role of prior knowledge of the object class in the form of a patch manifold to address the deconvolution problem. Specifically, we incorporate unlabeled image data of the object class, say natural images, in the form of a patch-manifold prior for the object class. The manifold prior is implicitly estimated from the given unlabeled data. We show how the patch-manifold prior effectively exploits the available sample class data for regularizing the deblurring problem. Furthermore, we derive a generalized cross-validation (GCV) function to automatically determine the regularization parameter at each iteration without explicitly knowing the noise variance. Extensive experiments show that this method performs better than many competitive image deconvolution methods.
Keywords :
Bayes methods; deconvolution; image restoration; iterative methods; natural scenes; parameter estimation; Bayesian framework; GCV function; automatic regularization parameter determination; deblurring problem regularization; example-driven manifold prior; generalized cross-validation function; image deconvolution; image restoration method; iteration method; natural image; patch-manifold prior; unlabeled image data; Deconvolution; Image restoration; Manifolds; Noise; Optimization; Training; Deconvolution; generalized cross validation (GCV); local manifold; patch manifold; regularization;
Journal_Title :
Image Processing, IEEE Transactions on
Conference_Location :
4/21/2011 12:00:00 AM
DOI :
10.1109/TIP.2011.2145386