Back to articles
Articles
Volume: 26 | Article ID: art00058
Image
Rehabilitating the ColorChecker Dataset for Illuminant Estimation
  DOI :  10.2352/ISSN.2169-2629.2018.26.350  Published OnlineNovember 2018
Abstract

In a previous work, it was shown that there is a curious problem with the benchmark ColorChecker dataset for illuminant estimation. To wit, this dataset has at least 3 different sets of ground-truths. Typically, for a single algorithm a single ground-truth is used. But then different algorithms, whose performance is measured with respect to different ground-truths, are compared against each other and then ranked. This makes no sense. We show in this paper that there are also errors in how each ground-truth set was calculated. As a result, all performance rankings based on the ColorChecker dataset – and there are scores of these – are inaccurate. In this paper, we re-generate a new 'recommended' ground-truth set based on the calculation methodology described by Shi and Funt. We then review the performance evaluation of a range of illuminant estimation algorithms. Compared with the legacy ground-truths, we find that the difference in how algorithms perform can be large, with many local rankings of algorithms being reversed. Finally, we draw the readers attention to our new 'open' data repository which, we hope, will allow the ColorChecker set to be rehabilitated and once again become a useful benchmark for illuminant estimation algorithms.

Subject Areas :
Views 30
Downloads 9
 articleview.views 30
 articleview.downloads 9
  Cite this article 

Ghalia Hemrit, Graham D. Finlayson, Arjan Gijsenij, Peter Gehler, Simone Bianco, Brian Funt, Mark Drew, Lilong Shi, "Rehabilitating the ColorChecker Dataset for Illuminant Estimationin Proc. IS&T 26th Color and Imaging Conf.,  2018,  pp 350 - 353,  https://doi.org/10.2352/ISSN.2169-2629.2018.26.350

 Copy citation
  Copyright statement 
Copyright © Society for Imaging Science and Technology 2018
72010350
Color and Imaging Conference
color imaging conf
2166-9635
Society for Imaging Science and Technology