Back to articles
Proceedings Paper
Volume: 31 | Article ID: 17
Image
Learning Color Constancy: 30 Years Later
  DOI :  10.2352/CIC.2023.31.1.18  Published OnlineNovember 2023
Abstract
Abstract

The first paper investigating the use of machine learning to learn the relationship between an image of a scene and the color of the scene illuminant was published by Funt et al. in 1996. Specifically, they investigated if such a relationship could be learned by a neural network. During the last 30 years we have witnessed a remarkable series of advancements in machine learning, and in particular deep learning approaches based on artificial neural networks. In this paper we want to update the method by Funt et al. by including recent techniques introduced to train deep neural networks. Experimental results on a standard dataset show how the updated version can improve the median angular error in illuminant estimation by almost 51% with respect to its original formulation, even outperforming recent illuminant estimation methods.

Subject Areas :
Views 92
Downloads 37
 articleview.views 92
 articleview.downloads 37
  Cite this article 

Marco Buzzelli, Raimondo Schettini, Simone Bianco, "Learning Color Constancy: 30 Years Laterin Color and Imaging Conference,  2023,  pp 91 - 95,  https://doi.org/10.2352/CIC.2023.31.1.18

 Copy citation
  Copyright statement 
Copyright ©2023 Society for Imaging Science and Technology  2023
cic
Color and Imaging Conference
2166-9635
2166-9635
Society for Imaging Science and Technology
IS&T 7003 Kilworth Lane, Springfield, VA 22151 USA