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A VQ-Based Demosaicing by Self-Similarity

Authors :
Y. Nomura
Shree K. Nayar
Source :
ICIP (3)
Publication Year :
2007
Publisher :
IEEE, 2007.

Abstract

In this paper, we propose a learning-based demosaicing and a restoration error detection. A Vector Quantization (VQ)-based method is utilized for learning. We take advantage of a self-similarity in an image for a codebook generation in VQ. The mosaic image is interpolated via a traditional method, and applied scaling, blurring, phase-shifting and resampling are used to create a training data for the codebook. The characteristics of the training data are similar to those of an ideal image. Using such training data and approximation of an ideal codevector by a locally linear embedding (LLE)-based method increases the probability of finding a suitable codevector from the codebook. Even if we cannot find a good codevector in an ill-conditioned case, the error detection finds poorly estimated pixel values and replaces them with better restoration results by another demosaicing method.

Details

Database :
OpenAIRE
Journal :
2007 IEEE International Conference on Image Processing
Accession number :
edsair.doi...........a874193d1c5a99b0be22811f5f89c3d6