Abstract Art by Shape Classification

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Reference

Yi-Zhe Song , David Pickup , Chuan Li , Paul Rosin , Peter Hall: Abstract Art by Shape Classification. IEEE Transactions on Visualization and Computer Graphics, v.19 n.8, p.1252-1263, August 2013

DOI

http://dx.doi.org/10.1109/TVCG.2013.13

Abstract

This paper shows that classifying shapes is a tool useful in nonphotorealistic rendering (NPR) from photographs. Our classifier inputs regions from an image segmentation hierarchy and outputs the "best” fitting simple shape such as a circle, square, or triangle. Other approaches to NPR have recognized the benefits of segmentation, but none have classified the shape of segments. By doing so, we can create artwork of a more abstract nature, emulating the style of modern artists such as Matisse and other artists who favored shape simplification in their artwork. The classifier chooses the shape that "best” represents the region. Since the classifier is trained by a user, the "best shape” has a subjective quality that can over-ride measurements such as minimum error and more importantly captures user preferences. Once trained, the system is fully automatic, although simple user interaction is also possible to allow for differences in individual tastes. A gallery of results shows how this classifier contributes to NPR from images by producing abstract artwork.

Extended Abstract

Bibtex

@ARTICLE{6461879,
author={Yi-Zhe Song and Pickup, D. and Chuan Li and Rosin, P. and Hall, P.},
journal={Visualization and Computer Graphics, IEEE Transactions on},
title={Abstract Art by Shape Classification},
year={2013},
volume={19},
number={8},
pages={1252-1263},
keywords={art;image classification;image segmentation;rendering (computer graphics);NPR;abstract art;classifier input region representation;classifier training;image segmentation hierarchy;nonphotorealistic rendering;shape classification;subjective quality;user interaction;user preferences;Art;Classification;Image segmentation;Rendering (computer graphics);Shape analysis;Nonphotorealistic rendering;abstract art;shape classification;shape fitting;Algorithms;Art;Humans;Image Processing, Computer-Assisted;Photography},
doi={10.1109/TVCG.2013.13},
url ={http://dx.doi.org/10.1109/TVCG.2013.13 http://de.evo-art.org/index.php?title=Abstract_Art_by_Shape_Classification },
ISSN={1077-2626},
month={Aug},
}

Used References

Links

Full Text

https://www.researchgate.net/publication/237070508_Abstract_Art_by_Shape_Classification

intern file

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