Article | Proceedings of SIGRAD 2015, June 1st and 2nd, Stockholm, Sweden | Analysis of Visual Arts Collections
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Title:
Analysis of Visual Arts Collections
Author:
Hermann Pflüger: Institute for Visualization and Interactive Systems (VIS), University of Stuttgart, Germany Thomas Ertl: Institute for Visualization and Interactive Systems (VIS), University of Stuttgart, Germany
Download:
Full text (pdf)
Year:
2015
Conference:
Proceedings of SIGRAD 2015, June 1st and 2nd, Stockholm, Sweden
Issue:
120
Article no.:
001
Pages:
1-4
No. of pages:
4
Publication type:
Abstract and Fulltext
Published:
2015-11-24
ISBN:
978-91-7685-855-4
Series:
Linköping Electronic Conference Proceedings
ISSN (print):
1650-3686
ISSN (online):
1650-3740
Publisher:
Linköping University Electronic Press, Linköpings universitet


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In this paper, we introduce a projection technique that aims to place points representing individual images in a two-dimensional visualization space so that proximity in this space reflects some sort of similarity between the images. This visualization technique enables users to employ their visual ability to evaluate the significance of metadata as well as the characteristics of classification methods and distance functions. It can also be used to recognize and analyze patterns in large sets of images, and to get an overview of the entire body of pictures from a given set. The projection technique only uses a similarity function for calculating a suitable distribution of the points in the visualization space and has a linear time complexity.

Keywords: 2D visualization; information search and retrieval; clustering

Proceedings of SIGRAD 2015, June 1st and 2nd, Stockholm, Sweden

Author:
Hermann Pflüger, Thomas Ertl
Title:
Analysis of Visual Arts Collections
References:

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Proceedings of SIGRAD 2015, June 1st and 2nd, Stockholm, Sweden

Author:
Hermann Pflüger, Thomas Ertl
Title:
Analysis of Visual Arts Collections
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