Horn-schunck optical flow with a multi-scale strategy


Autoria(s): Meinhardt-Llopis, Enric; Sánchez Pérez, Javier
Data(s)

03/02/2014

03/02/2014

2012

Resumo

[EN] The seminal work of Horn and Schunck [8] is the first variational method for optical flow estimation. It introduced a novel framework where the optical flow is computed as the solution of a minimization problem. From the assumption that pixel intensities do not change over time, the optical flow constraint equation is derived. This equation relates the optical flow with the derivatives of the image. There are infinitely many vector fields that satisfy the optical flow constraint, thus the problem is ill-posed. To overcome this problem, Horn and Schunck introduced an additional regularity condition that restricts the possible solutions. Their method minimizes both the optical flow constraint and the magnitude of the variations of the flow field, producing smooth vector fields. One of the limitations of this method is that, typically, it can only estimate small motions. In the presence of large displacements, this method fails when the gradient of the image is not smooth enough. In this work, we describe an implementation of the original Horn and Schunck method and also introduce a multi-scale strategy in order to deal with larger displacements. For this multi-scale strategy, we create a pyramidal structure of downsampled images and change the optical flow constraint equation with a nonlinear formulation. In order to tackle this nonlinear formula, we linearize it and solve the method iteratively in each scale. In this sense, there are two common approaches: one that computes the motion increment in the iterations, like in ; or the one we follow, that computes the full flow during the iterations, like in. The solutions are incrementally refined ower the scales. This pyramidal structure is a standard tool in many optical flow methods.

Identificador

http://hdl.handle.net/10553/11280

676620

Idioma(s)

eng

Direitos

Acceso libre

by-nc-nd

Fonte

Image Processing On Line. -- Francia, Cachan : IPOL 2012. -- p. 1-18. -- ISSN 2105-1232

Palavras-Chave #33 Ciencias tecnológicas
Tipo

info:eu-repo/semantics/article