Image-difference prediction: from grayscale to color

IEEE Trans Image Process. 2013 Feb;22(2):435-46. doi: 10.1109/TIP.2012.2216279. Epub 2012 Sep 19.

Abstract

Existing image-difference measures show excellent accuracy in predicting distortions, such as lossy compression, noise, and blur. Their performance on certain other distortions could be improved; one example of this is gamut mapping. This is partly because they either do not interpret chromatic information correctly or they ignore it entirely. We present an image-difference framework that comprises image normalization, feature extraction, and feature combination. Based on this framework, we create image-difference measures by selecting specific implementations for each of the steps. Particular emphasis is placed on using color information to improve the assessment of gamut-mapped images. Our best image-difference measure shows significantly higher prediction accuracy on a gamut-mapping dataset than all other evaluated measures.

Publication types

  • Research Support, Non-U.S. Gov't