No-reference perceptual quality assessment of colour image

Image quality assessment plays an important role in various image processing applications. In recent years, some objective image quality metrics correlated with perceived quality measurement have been developed. Two categories of metrics can be distinguished: with full-reference and no-reference. Full-reference looks at decrease in image quality from some reference of ideal. No-reference approach attempts to model the judgment of image quality without the reference. Unfortunately, the universal image quality model is not on the horizon and empirical models establishes on psychophysical experimentation are generally used. In this paper, we present a new algorithm for quality assessment of colour reproduction based on human visual system modeling. A local contrast definition is used to assign quality scores. Finally, a good correlation is obtained between human evaluations and our method.

[1]  Youngshin Kwak,et al.  Controling color of liquid‐crystal displays , 2003 .

[2]  Mark E. Gorzynski,et al.  CRT colorimetry. part I: Theory and practice , 1993 .

[3]  D. H. Kelly Spatiotemporal variation of chromatic and achromatic contrast thresholds. , 1983, Journal of the Optical Society of America.

[4]  H.R. Sheikh,et al.  Blind quality assessment for JPEG2000 compressed images , 2002, Conference Record of the Thirty-Sixth Asilomar Conference on Signals, Systems and Computers, 2002..

[5]  Mark D. Fairchild,et al.  Perceived Image Contrast and Observer Preference II. Empirical Modeling of Perceived Image Contrast and Observer Preference Data , 2003, Journal of Imaging Science and Technology.

[6]  B. Wandell,et al.  Pattern—color separable pathways predict sensitivity to simple colored patterns , 1996, Vision Research.

[7]  Ruud Janssen,et al.  Computational Image Quality , 2001 .

[8]  Mark D. Fairchild,et al.  Perceived Image Contrast and Observer Preference I. The Effects of Lightness, Chroma, and Sharpness Manipulations on Contrast Perception , 2003, Journal of Imaging Science and Technology.

[9]  M. Nadenau Integration of human color vision models into high quality image compression , 2000 .

[10]  Scott J. Daly,et al.  Visible differences predictor: an algorithm for the assessment of image fidelity , 1992, Electronic Imaging.

[11]  Stefan Winkler,et al.  Perceptual blur and ringing metrics: application to JPEG2000 , 2004, Signal Process. Image Commun..

[12]  E. Peli Contrast in complex images. , 1990, Journal of the Optical Society of America. A, Optics and image science.

[13]  Andrew B. Watson,et al.  The cortex transform: rapid computation of simulated neural images , 1987 .