Title :
Probabilistic Exploitation of the Lucas and Kanade Smoothness Constraint
Author :
Willert, Volker ; Eggert, Julian ; Toussaint, Marc ; Korner, E.
Author_Institution :
HRI Eur. GmbH, Offenbach
Abstract :
The basic idea of Lucas and Kanade is to constrain the local motion measurement by assuming a constant velocity within a spatial neighborhood. We reformulate this spatial constraint in a probabilistic way assuming Gaussian distributed uncertainty in spatial identification of velocity measurements and extend this idea to scale and time dimensions. Thus, we are able to combine uncertain velocity measurements observed at different image scales and positions over time. We arrive at a new recurrent optical flow filter formulated in a dynamic Bayesian network applying suitable factorisation assumptions and approximate inference techniques. The introduction of spatial uncertainty allows for a dynamic and spatially adaptive tuning of the constraining neighborhood. Here, we realize this tuning dependent on the local structure tensor of the intensity patterns of the image sequence. We demonstrate that a probabilistic combination of spatiotemporal integration and modulation of a purely local integration area improves the Lucas and Kanade estimation.
Keywords :
Gaussian distribution; belief networks; image motion analysis; image sequences; inference mechanisms; smoothing methods; spatiotemporal phenomena; tensors; Gaussian distribution; Kanade smoothness constraint; Lucas smoothness constraint; approximate inference technique; dynamic Bayesian network; image scale; image sequence; local motion measurement; probabilistic exploitation; recurrent optical flow filter; spatial adaptive tuning; spatial neighborhood constraint; spatiotemporal integration; spatiotemporal modulation; structure tensor; Bayesian methods; Image motion analysis; Image sequences; Motion measurement; Optical fiber networks; Optical filters; Optical tuning; Spatiotemporal phenomena; Tensile stress; Velocity measurement; Adaptive Smoothness; Approximate Inference; Belief Propagation; Optical Flow;
Conference_Titel :
Machine Learning and Applications, 2008. ICMLA '08. Seventh International Conference on
Conference_Location :
San Diego, CA
Print_ISBN :
978-0-7695-3495-4
DOI :
10.1109/ICMLA.2008.54