Optical Flow Estimation Using Diffusion DistancesDownload PDFOpen Website

2010 (modified: 26 Apr 2023)ICPR 2010Readers: Everyone
Abstract: In this paper we apply the diffusion framework to dense optical flow estimation. Local image information is represented by matrices of gradients between paired locations. Diffusion distances are modelled as sums of eigenvectors weighted by their eigenvalues extracted following the eigen decomposion of these matrices. Local optical flow is estimated by correlating diffusion distances characterizing features from different frames. A feature confidence factor is defined based on the local correlation efficiency when compared to that of its neighbourhood. High confidence optical flow estimates are propagated to areas of lower confidence.
0 Replies

Loading