Authors
Mario Romero, Georgia Tech
Jay Summet, Georgia Tech
John Stasko, Georgia Tech
Gregory Abowd, Georgia Tech
DOI Bookmark: http://doi.ieeecomputersociety.org/10.1109/TVCG.2008.185
Abstract
In the established procedural model of information visualization, the first operation is to transform raw data into data tables [1]. The transforms typically include abstractions that aggregate and segment relevant data and are usually defined by a human, user or programmer. The theme of this paper is that for video, data transforms should be supported by low level computer vision. High level reasoning still resides in the human analyst, while part of the low level perception is handled by the computer. To illustrate this approach, we present Viz-A-Vis, an overhead video capture and access system for activity analysis in natural settings over variable periods of time. Overhead video provides rich opportunities for long-term behavioral and occupancy analysis, but it poses considerable challenges. We present initial steps addressing two challenges. First, overhead video generates overwhelmingly large volumes of video impractical to analyze manually. Second, automatic video analysis remains an open problem for computer vision.
Citation
Mario Romero, Jay Summet, John Stasko, Gregory Abowd, “Viz-A-Vis: Toward Visualizing Video through Computer Vision,” IEEE Transactions on Visualization and Computer Graphics, vol. 14, no. 6, pp. 1261-1268, Nov/Dec, 2008
Keywords:
image-video analytics,
sensor analytics,
Spatiotemporal visualization,
time series data,
video visualization