Direct incremental model-based image motion segmentation for video analysis (1997)
| Citations: | 40 - 2 self |
BibTeX
@TECHREPORT{Odobez97directincremental,
author = {Jean-marc Odobez and Patrick Bouthemy},
title = {Direct incremental model-based image motion segmentation for video analysis},
institution = {},
year = {1997}
}
Years of Citing Articles
OpenURL
Abstract
Dynamic analysis of image sequences is an important task in object-oriented video applications. It often relies on the segmentation of each image of the sequence into region entities of apparent homogeneous motion. In this paper, we present an original motion segmentation algorithm based on 2D polynomial motion models, a multiresolution robust estimator to compute these motion models, and appropriate local observations supplying both motion relevant information and their reliability. Motion segmentation is formulated as a contextual statistical labeling problem exploiting multiscale Markov Random Field (MRF) models. One of its main features is that it avoids time consuming alternate iterations between motion model estimation and spatial support identification. An original detection step allows us to estimate and to update the number of required motion models, and thus to handle the appearance of new objects. Numerous experiments performed with real indoor and outdoor image sequences demonstrate the efficiency of the method. 1 Introduction and related work







