Semantic-Preserving Word Clouds by Seam Carving
Yingcai Wu, Thomas Provan, Furu Wei, Shixia Liu, Kwan-Liu Ma
In Computer Graphics Forum, 30(3), June 2011.
Abstract: Word clouds are proliferating on the Internet and have received much attention in visual analytics. Although word clouds can help users understand the major content of a document collection quickly, their ability to visually compare documents is limited. This paper introduces a new method to create semantic-preserving word clouds by leveraging tailored seam carving, a well-established content-aware image resizing operator. The method can optimize a word cloud layout by removing a left-to-right or top-to-bottom seam iteratively and gracefully from the layout. Each seam is a connected path of low energy regions determined by a Gaussian-based energy function. With seam carving, we can pack the word cloud compactly and effectively, while preserving its overall semantic structure. Furthermore, we design a set of interactive visualization techniques for the created word clouds to facilitate visual text analysis and comparison. Case studies are conducted to demonstrate the effectiveness and usefulness of our techniques.
@article{Wu:2011:SWC,
author = {Yingcai Wu and Thomas Provan and Furu Wei and Shixia Liu and Kwan-Liu Ma},
title = {Semantic-Preserving Word Clouds by Seam Carving},
journal = {Computer Graphics Forum},
volume = {30},
number = {3},
pages = {741--750},
month = jun,
year = {2011},
}
Return to the search page.
graphbib: Powered by "bibsql" and "SQLite3."