Home /Research /<title>Estimating Satellite Pose And Motion Parameters Using A Novelty Filter And Neural Net Tracker</title>
OTHER

<title>Estimating Satellite Pose And Motion Parameters Using A Novelty Filter And Neural Net Tracker</title>

Andrew J. Lee, David Casasent, Pieter Vermeulen, Etienne Barnard, Hua‐Kuang Liu

Year
1989
Citations
2

Abstract

A system for determining the position, orientation and motion of a satellite with respect to a robotic spacecraft using video data is advanced. This system utilizes two levels of pose and motion estimation: an initial system which provides coarse estimates of pose and motion, and a second system which uses the coarse estimates and further processing to provide finer pose and motion estimates. The present paper emphasizes the initial coarse pose and motion estimation subsystem. This subsystem utilizes novelty detection and filtering for locating novel parts and a neural net tracker to track these parts over time. Results of using this system on a sequence of images of a spin stabilized satellite are presented.

Keywords

Computer visionArtificial intelligenceComputer sciencePoseOrientation (vector space)NoveltyMotion estimationSatelliteMotion (physics)Artificial neural network

Related papers

Browse all OTHER papers