Daniel Weiler, Volker Willert, Julian Eggert, and Edgar Koerner (2007)
A Probabilistic Method for Motion Pattern Segmentation
In: Proceedings of the 2007 International Joint Conference on Neural Networks (IJCNN). IEEE/INNS.
In this paper we present an approach for probabilistic
motion pattern segmentation. We combine level-set
methods for image segmentation with motion estimations based
on probability distribution functions (pdf’s) calculated at each
image position. To this end, we extend a region based levelset
framework to exploit the motion pdf’s. We then compare
segmentation results of the pdf-based with those of opticalflow-
based motion segmentation approaches. We found that the
straightforward way of characterizing the segmented region
by spatially averaging the motion measurement pdf’s does
not yield satisfactory results. However, describing the spatial
characteristics of the motion pdf’s with nonparametric density
estimates enables to solve complex motion segmentation
problems. In particular for situations with demanding motion
patterns like partly overlapping objects and transparent motion,
we show that the probabilistic approach yields better results.
This confirms the idea that for motion processing it is beneficial
to consistently retain the uncertainty and ambiguity of the
measurement process right up to the final integration stage,
instead of directly processing optical flow vectors.
Download the
BibTeX file
Document File:
OBJECT IS MARKED FOR EXPORT
Created by vwillert - 2007-09-03 13:20
Last modified by - 2007-11-26 18:20
Created by vwillert - 2007-09-03 13:20
Last modified by - 2007-11-26 18:20



Daniel07a.pdf
(