Tree-based Visualization and Optimization for Image Collection
Abstract
The visualization of an image collection is the process of displaying a collection of images on a screen under some specific layout requirements. This paper focuses on an important problem that is not well addressed by the previous methods: visualizing image collections into arbitrary layout shapes while arranging images according to user-defined semantic or visual correlations (e.g., color or object category). To this end, we first propose a property-based tree construction scheme to organize images of a collection into a tree structure according to user-defined properties. In this way, images can be adaptively placed with the desired semantic or visual correlations in the final visualization layout. Then, we design a two-step visualization optimization scheme to further optimize image layouts. As a result, multiple layout effects including layout shape and image overlap ratio can be effectively controlled to guarantee a satisfactory visualization. Finally, we also propose a tree-transfer scheme such that visualization layouts can be adaptively changed when users select different "images of interest". We demonstrate the effectiveness of our proposed approach through the comparisons with state-of-the-art visualization techniques.
Cite
@article{arxiv.1507.04913,
title = {Tree-based Visualization and Optimization for Image Collection},
author = {Xintong Han and Chongyang Zhang and Weiyao Lin and Mingliang Xu and Bin Sheng and Tao Mei},
journal= {arXiv preprint arXiv:1507.04913},
year = {2016}
}
Comments
This manuscript is the accepted version for T-CYB (IEEE Transactions on Cybernetics) IEEE Trans. Cybernetics, 2015