Correlation based Vergence Control Using Log-polar Images

Abstract

. This paper describes a real-time vergence control mechanism based on log-polar images, developed for a robot head. We show that vergence behavior can be achieved at reduced computational cost using simple correlation measures on log-polar images. The main advantages of using a non-uniform image sampling mechanism, such as the log-polar images, are related both to perceptual and algorithm complexity issues. We show that, when using correlation measures to control vergence, log-polar images give better results than cartesian images. Additionally, as log-polar images are smaller, the computation time is reduced. Two algorithms for closed loop vergence control, using correlation measures over log-polar images, are proposed and compared. Their behavior in real situations is illustrated by test examples. 1 Introduction The research interests in Active Vision have increased in the past few years providing efficient ways of combining the control of robotic systems and advanced visual sensin..

    Similar works

    Full text

    thumbnail-image

    Available Versions