Title :
Probabilistic and sequential computation of optical flow using temporal coherence
Author :
Chin, Toshio M. ; Karl, William C. ; Willsky, Alan S.
Author_Institution :
Rosenstiel Sch. of Marine & Atmos. Sci., Miami Univ., FL, USA
fDate :
11/1/1994 12:00:00 AM
Abstract :
In the computation of dense optical flow fields, spatial coherence constraints are commonly used to regularize otherwise ill-posed problem formulations, providing spatial integration of data. We present a temporal, multiframe extension of the dense optical flow estimation formulation proposed by Horn and Schunck (1981) in which we use a temporal coherence constraint to yield the optimal fusing of data from multiple frames of measurements. Conceptually, standard Kalman filtering algorithms are applicable to the resulting multiframe optical flow estimation problem, providing a solution that is sequential and recursive in time. Experiments are presented to demonstrate that the resulting multiframe estimates are more robust to noise than those provided by the original, single-frame formulation. In addition, we demonstrate cases where the aperture problem of motion vision cannot be resolved satisfactorily without the temporal integration of data enabled by the proposed formulation. Practically, the large matrix dimensions involved in the problem prohibit exact implementation of the optimal Kalman filter. To overcome this limitation, we present a computationally efficient, yet near-optimal approximation of the exact filtering algorithm. This approximation has a precise interpretation as the sequential estimation of a reduced-order spatial model for the optical flow estimation error process at each time step and arises from an estimation-theoretic treatment of the filtering problem. Experiments also demonstrate the efficacy of this near-optimal filter
Keywords :
Kalman filters; coherence; filtering theory; image sequences; motion estimation; optical noise; sequential estimation; Kalman filtering algorithms; aperture problem; dense optical flow fields; estimation-theoretic treatment; exact filtering algorithm; matrix dimensions; motion vision; multiframe estimates; near optimal approximation; noise robustness; optical flow estimation error process; optimal data fusing; probabilistic computation; reduced-order spatial model; sequential computation; sequential recursive solution; temporal coherence; temporal data integration; Data flow computing; Filtering algorithms; Fluid flow measurement; Image motion analysis; Integrated optics; Optical computing; Optical filters; Optical noise; Spatial coherence; Yield estimation;
Journal_Title :
Image Processing, IEEE Transactions on