The Statistics of Optical Flow
Title | The Statistics of Optical Flow |
Publication Type | Journal Articles |
Year of Publication | 2001 |
Authors | Fermüller C, Shulman D, Aloimonos Y |
Journal | Computer Vision and Image Understanding |
Volume | 82 |
Issue | 1 |
Pagination | 1 - 32 |
Date Published | 2001/04// |
ISBN Number | 1077-3142 |
Abstract | When processing image sequences some representation of image motion must be derived as a first stage. The most often used representation is the optical flow field, which is a set of velocity measurements of image patterns. It is well known that it is very difficult to estimate accurate optical flow at locations in an image which correspond to scene discontinuities. What is less well known, however, is that even at the locations corresponding to smooth scene surfaces, the optical flow field often cannot be estimated accurately.Noise in the data causes many optical flow estimation techniques to give biased flow estimates. Very often there is consistent bias: the estimate tends to be an underestimate in length and to be in a direction closer to the majority of the gradients in the patch. This paper studies all three major categories of flow estimation methods—gradient-based, energy-based, and correlation methods, and it analyzes different ways of compounding one-dimensional motion estimates (image gradients, spatiotemporal frequency triplets, local correlation estimates) into two-dimensional velocity estimates, including linear and nonlinear methods. |
URL | http://www.sciencedirect.com/science/article/pii/S1077314200909007 |
DOI | 10.1006/cviu.2000.0900 |