Abstract

The ability to associate labels to colors is very natural for human beings. Though, this apparently simple task hides very complex and still unsolved problems, spreading over many different disciplines ranging from neurophysiology to psychology and imaging. In this paper, we propose a discrete model for computational color categorization and naming. Starting from the 424 color specimens of the OSA-UCS set, we propose a fuzzy partitioning of the color space. Each of the 11 basic color categories identified by Berlin and Kay is modeled as a fuzzy set whose membership function is implicitly defined by fitting the model to the results of an ad hoc psychophysical experiment (Experiment 1). Each OSA-UCS sample is represented by a feature vector whose components are the memberships to the different categories. The discrete model consists of a three-dimensional Delaunay triangulation of the CIELAB color space which associates each OSA-UCS sample to a vertex of a 3D tetrahedron. Linear interpolation is used to estimate the membership values of any other point in the color space. Model validation is performed both directly, through the comparison of the predicted membership values to the subjective counterparts, as evaluated via another psychophysical test (Experiment 2), and indirectly, through the investigation of its exploitability for image segmentation. The model has proved to be successful in both cases, providing an estimation of the membership values in good agreement with the subjective measures as well as a semantically meaningful color-based segmentation map.

Highlights

  • Color research is intrinsically interdisciplinary, and as such gathers the efforts of many different research communities, ranging from the medical and psychological fields to the engineering fields

  • The definition of a computational model must account for the dynamics of the phenomenon, in the form of an updating of the labels used to describe a given color as well as of the location of the corresponding colors in the considered color space

  • Color categorization is intrinsically related to color naming, which lies at the boundary between different fields of cognitive sciences: visual perception and linguistics

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Summary

Introduction

Color naming implies a further level of abstraction, going beyond the field of vision-related sciences. Color categorization is intrinsically related to color naming, which lies at the boundary between different fields of cognitive sciences: visual perception and linguistics. Color naming is about the labelling of a given set of color stimuli according to their appearance in a given observation condition. Pioneering this field, the work of Berlin and Kay [4] traces back to the early 1970’s, and has settled the ground for the proliferation of the wave of cognitive studies, like those of Sturges and Whitfield [5, 6] and Lammens [7]. Berlin and Kay found that there are semantic universals in the domain of color naming, especially in the extension of what they call basic color terms

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