Semantic
Image Browser: Bridging Information
Visualization with Automated Intelligent Image Analysis
Authors: Jing Yang, Jianping Fan, Daniel Hubball, Yuli Gao, Hangzai Luo and William Ribarsky
Browsing and retrieving images from large image
collections are becoming common and important activities. Recent semantic image
analysis techniques, which automatically detect high level semantic contents of
images for annotation, are promising solutions toward this problem. However,
few efforts have been made to convey the annotation results to users in an
intuitive manner to enable effective image browsing and retrieval. There also
lack methods to monitor and evaluate the automatic image analysis algorithms
due to the high dimensional nature of image data, features, and contents.
In this paper, we propose a novel, scalable semantic
image browser by applying existing information visualization techniques to
semantic image analysis.
This browser not only allows users to effectively
browse and search in large image databases according to semantic content of
images, but also allows analysts to evaluate their annotation process through
interactive visual exploration. The major visualization components of this
browser are Multi-Dimensional Scaling (MDS) based image layout, the Value and
Relation (VaR) display that allows effective high
dimensional visualization without dimension reduction, and a rich set of
interaction tools such as search by sample images and content relationship
detection. Our preliminary user study showed that the browser was easy to use
and understand, and effective in supporting image browsing and retrieval tasks.
UNCC Technical Report # CVC-UNCC-06-02