Article,

A NEW IMAGE QUALITY METRIC USING COMPRESSIVE SENSING AND A FILTER SET CONSISTING OF DERIVATIVE AND GABOR FILTERS

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Advances in Vision Computing: An International Journal (AVC), 2 (1): 18 (March 2015)
DOI: 10.5121/avc.2015.2101

Abstract

This paper proposes an image quality metric (IQM) using compressive sensing (CS) and a filter set consisting of derivative and Gabor filters. In this paper, compressive sensing that is used for acquiring a sparse or compressible signal with a small number of measurements is used for measuring the quality between the reference and distorted images. However, an image is generally neither sparse nor compressible, so a CS technique cannot be directly used for image quality assessment. Thus, for converting an image into a sparse or compressible signal, the image is convolved with filters such as the gradient, Laplacian of Gaussian, and Gabor filters, since the filter outputs are generally compressible. A small number of measurements obtained by a CS technique are used for evaluating the image quality. Experimental results with various test images show the effectiveness of the proposed algorithm in terms of the Pearson correlation coefficient (CC), root mean squared error, Spearman rank order CC, and Kendall CC.

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