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Color Image Processing

Author(s):

P.E.Charanya , Sengunthar Arts and Science College

Keywords:

Laplacian Regularization, Impulse Noise Removal

Abstract

This paper investigates the rrecovering images from corrupted observations is necessary for many real-world applications. In this paper, we propose a unified framework to perform progressive image recovery based on hybrid graph Laplacian regularized regression. We first construct a multiscale representation of the target image by Laplacian pyramid, then progressively recover the degraded image in the scale space from coarse to fine so that the sharp edges and texture can be eventually recovered. The proposed model is extended to a projected high-dimensional feature space through explicit kernel mapping to describe the interscale correlation, in which the local structure regularity is learned and propagated from coarser to finer scales. In this way, the proposed algorithm gradually recovers more and more image details and edges, which could not been recovered in previous scale. We test our algorithm on one typical image recovery task: impulse noise removal.

Other Details

Paper ID: IJSRDV3I60050
Published in: Volume : 3, Issue : 6
Publication Date: 01/09/2015
Page(s): 152-154

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