Optical flow estimation via steered-L1 norm
Date issued
2016
Authors
Journal Title
Journal ISSN
Volume Title
Publisher
Václav Skala - UNION Agency
Abstract
Global variational methods for estimating optical flow are among the best performing methods due to the subpixel
accuracy and the ‘fill-in’ effect they provide. The fill-in effect allows optical flow displacements to be
estimated even in low and untextured areas of the image. The estimation of such displacements are induced by
the smoothness term. The L1 norm provides a robust regularisation term for the optical flow energy function with
a very good performance for edge-preserving. However this norm suffers from several issues, among these is the
isotropic nature of this norm which reduces the fill-in effect and eventually the accuracy of estimation in areas
near motion boundaries. In this paper we propose an enhancement to the L1 norm that improves the fill-in effect
for this smoothness term. In order to do this we analyse the structure tensor matrix and use its eigenvectors to
steer the smoothness term into components that are ‘orthogonal to’ and ‘aligned with’ image structures. This is
done in primal-dual formulation. Results show a reduced end-point error and improved accuracy compared to the
conventional L1 norm.
Description
Subject(s)
optický tok, variantní metody, TV-L1, strukturní tenzor
Citation
WSCG 2016: full papers proceedings: 24th International Conference in Central Europe on Computer Graphics, Visualization and Computer Vision in co-operation with EUROGRAPHICS Association, p. 81-90.