Home /Research /Optical Flow Aided Motion Estimation for Legged Locomotion
LOCOMOTION

Optical Flow Aided Motion Estimation for Legged Locomotion

Surya P. N. Singh, Paul L. Csonka, Kenneth J. Waldron

Year
2006
Citations
28

Abstract

Dynamic legged locomotion entails navigating terrain at high speed. The impact shocks from rapid footfalls, pivotal for such mobility, introduce large impulses that saturate motion measurement. A biomimetic approach is presented in which visual information, in the form of optical flow, complements information from inertial sensors. The motion is then determined using a two-phase Hybrid Extended Kalman Filter. Experimentation in determining attitudes on a robotic leg platform shows a reduction in drift over inertial approaches and in delay over visual approaches. In tests with 6g impulses, pose was recovered within 5 deg rms with angular rate errors limited to 10 deg/sec at frequencies up to 250 Hz.

Keywords

Kalman filterOptical flowComputer scienceInertial frame of referenceComputer visionInertial measurement unitMotion (physics)Artificial intelligenceControl theory (sociology)Terrain

Related papers

Browse all LOCOMOTION papers