Volker Willert and Julian Eggert (2009)
A Stochastic Dynamical System for Optical Flow Estimation
In: IEEE International Conference on Computer Vision (ICCV), 4th International Workshop on Dynamical Vision. IEEE.
So far, the research on optical flow has mainly concentrated
on motion estimations using the observation of a
small number of temporal consecutive frames of an image
sequence. The dynamics of the flow field evolution is mostly
neglected. Our main concern is to stress that visual motion
is a dynamic feature of an image input stream and the
more visual data has been observed the more precise and
detailed we can estimate and predict the motion contained
in the visual data. In this paper, we present a probabilistic
dynamical system that is suitable to recurrently infer visual
motion. The assumed flow dynamics fuses spatial smoothness
constraints and smoothness constraints along time and
scale. We propose a certain class of transition probability
functions which satisfy a probability mixture model and allow
for an efficient approximate inference based on Belief
Propagation. We arrive at a compact and general algorithm
for optical flow filtering and realize one instance using factored
Gaussian belief representations.
Download the
BibTeX file
OBJECT IS MARKED FOR EXPORT
Created by jeggert - 2010-01-22 10:48
Last modified by - 2010-01-26 14:05
Created by jeggert - 2010-01-22 10:48
Last modified by - 2010-01-26 14:05



2009_ICCV_StochasticDynamicalSystemForOpt_WillertEggert.pdf
(