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Robust real-time visual odometry for dense RGB-D mapping

Thomas J. Whelan, Hordur Johannsson, Michael Kaess, John J. Leonard, John McDonald

Year
2013
Citations
321

Abstract

This paper describes extensions to the Kintinuous [1] algorithm for spatially extended KinectFusion, incorporating the following additions: (i) the integration of multiple 6DOF camera odometry estimation methods for robust tracking; (ii) a novel GPU-based implementation of an existing dense RGB-D visual odometry algorithm; (iii) advanced fused realtime surface coloring. These extensions are validated with extensive experimental results, both quantitative and qualitative, demonstrating the ability to build dense fully colored models of spatially extended environments for robotics and virtual reality applications while remaining robust against scenes with challenging sets of geometric and visual features.

Keywords

Visual odometryArtificial intelligenceComputer visionComputer scienceRGB color modelOdometryRoboticsRobustness (evolution)Augmented realityPose

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