Home » Proceedings » GI 2020 » ColorArt: Suggesting Colorizations For Graphic Arts Using Optimal Color-Graph Matching

ColorArt: Suggesting Colorizations For Graphic Arts Using Optimal Color-Graph Matching

Murtuza Bohra (Center for Visual Information Technology, KCIS, IIIT-Hyderabad), Vineet Gandhi (Center for Visual Information Technology, KCIS, IIIT-Hyderabad)


Proceedings of Graphics Interface 2020:
University of Toronto,
28 – 29 May 2020, pp. 95 – 102

Abstract

Colorization is a complex task of selecting a combination of colors and arriving at an appropriate spatial arrangement of the colors in an image. In this paper, we propose a novel approach for automatic colorization of graphic arts like graphic patterns, info-graphics and cartoons. Our approach uses the artist's colored graphics as a reference to color a template image. We also propose a retrieval system for selecting a relevant reference image corresponding to the given template from a dataset of reference images colored by different artists. Finally, we formulate the problem of colorization as a optimal graph matching problem over color groups in the reference and the template image. We demonstrate results on a variety of coloring tasks and evaluate our model through multiple perceptual studies. The studies show that the results generated through our model are significantly preferred by the participants over other automatic colorization methods.

Michael A. J. Sweeney Award

Alain Fournier Awards

Bill Buxton Awards

CHCCS Service Awards

CHCCS Achievement Awards

Canadian Digital Media Pioneer Awards

Connect with us

Prix Pionnier des médias numériques

Early Career Researcher Award

primary_navigation_menu