Abstract
This paper suggests a new quality measure of an image, pertaining to its contrast.
Several contrast measures exist in the current research. However, due to the abundance
of Image Processing software solutions, the perceived (or measured) image contrast
can be misleading, as the contrast may be significantly enhanced by applying grayscale
transformations. Therefore, the real challenge, which was not dealt with in the previous
literature, is measuring the contrast of an image taking into account all possible
grayscale transformations, leading to the best "potential" contrast. Hence, we suggest
an alternative "Potential Contrast" measure, based on sampled populations of foreground
and background pixels (e.g. scribbles or saliency-based criteria). An exact and efficient
implementation of this measure is found analytically. The new methodology is tested
and is shown to be invariant to invertible grayscale transformations.
Published Version (Please cite this version)
10.2352/ISSN.2470-1173.2017.12.IQSP-226
Material is made available in this collection at the direction of authors according
to their understanding of their rights in that material. You may download and use
these materials in any manner not prohibited by copyright or other applicable law.
Rights for Collection: Research and Writings
Works are deposited here by their authors, and
represent their research and opinions, not that of Duke University. Some materials
and descriptions may include offensive content.
More info