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Computer Vision and Image Understanding
Volume 70, Issue 1, April 1998, Pages 87-100
 
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doi:10.1006/cviu.1998.0625    How to Cite or Link Using DOI (Opens New Window)
Copyright © 1998 Academic Press. All rights reserved.

Regular Article

Motion-Model-Based Boundary Extraction and a Real-Time Implementation*1, , *2

Hongche Liub, a, 2, Tsai-Hong Honga, 3, Martin Hermana, 4 and Rama Chellappab, 5

a Intelligent Systems Division, National Institute of Standards and Technology (NIST), Building 220, Room B124, Gaithersburg, Maryland, 20899 b Center for Automation Research/Department of Electrical Engineering, University of Maryland, College Park, Maryland, 20742

Received 13 February 1996; 
accepted 17 March 1997. ;
Available online 12 April 2002.

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Abstract

Motion boundary extraction and optical flow computation are two subproblems of the motion recovery problem that cannot be solved independently of one another. These two problems have been treated separately. A popular recent approach uses an iterative scheme that consists of motion boundary extraction and optical flow computation components and refines each result through iteration. We present a local, noniterative algorithm that simultaneously extracts motion boundaries and computes optical flow. This is achieved by modeling 3-D Hermite polynomial decompositions of image sequences representing the perspective projection of 3-D general motion. Local model parameters are used to determine whether motion should be estimated or motion boundaries should be extracted at the neighborhood. A definite advantage of this noniterative algorithm is its efficiency. It is demonstrated by a real-time implementation and supporting experimental results.

Abbreviations: motion analysisAbbreviations: segmentationAbbreviations: real-time implementation


 
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