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Visual-inertial curve SLAM

Kevin Meier, Soon‐Jo Chung, Seth Hutchinson

Year
2016
Citations
3

Abstract

We present a simultaneous localization and mapping (SLAM) algorithm that uses Bézier curves as static landmark primitives rather than sparse feature points. Our approach allows us to estimate the full 6-DOF pose of a robot while providing a structured map which can be used to assist a robot in motion planning and control. We demonstrate how to reconstruct the 3-D location of curve landmarks from a stereo pair without searching for point-based stereo correspondences and how to compare the 3-D shape of curve landmarks between chronologically sequential stereo frames to solve the data association problem. We present a method to combine curve landmarks for mapping purposes, resulting in a map with a continuous set of curves that contain fewer landmark states than conventional sparse point-based SLAM algorithms. Note, to combine curves, we assume the curved landmarks are fixed to a larger curved object naturally occurring in the scene. While our algorithm is less accurate than point-based SLAM algorithms, we are able to create maps with considerably less landmark states and our algorithm can operate in settings lacking texture.

Keywords

LandmarkSimultaneous localization and mappingArtificial intelligenceComputer visionComputer scienceFeature (linguistics)Point (geometry)Object (grammar)Set (abstract data type)Robot

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