Spatio-Temporal Segmentation of Video by Hierarchical Mean Shift Analysis (2002)
| Venue: | Center for Automat. Res., U. of Md, College Park |
| Citations: | 47 - 4 self |
BibTeX
@INPROCEEDINGS{Dementhon02spatio-temporalsegmentation,
author = {Daniel Dementhon},
title = {Spatio-Temporal Segmentation of Video by Hierarchical Mean Shift Analysis},
booktitle = {Center for Automat. Res., U. of Md, College Park},
year = {2002}
}
Years of Citing Articles
OpenURL
Abstract
We describe a simple new technique for spatio-temporal segmentation of video sequences. Each pixel of a 3D space-time video stack is mapped to a 7D feature point whose coordinates include three color components, two motion angle components and two motion position components. The clustering of these feature points provides color segmentation and motion segmentation, as well as a consistent labeling of regions over time which amounts to region tracking. For this task we have adopted a hierarchical clustering method which operates by repeatedly applying mean shift analysis over increasing large ranges, using at each pass the cluster centers of the previous pass, with weights equal to the counts of the points that contributed to the clusters. This technique has lower complexity for large mean shift radii than regular mean shift analysis because it can use binary tree structures more efficiently during range search. In addition, it provides a hierarchical segmentation of the data. Applications include video compression and compact descriptions of video sequences for video indexing and retrieval applications.







