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Evaluation of the Visual Odometry Methods for Semi-Dense Real-Time

Haidara Gaoussou

Year
2018
Citations
7
Access
Open access

Abstract

Recent decades have witnessed a significant increase in the use of visual odometry(VO) in the computer vision area. It has also been used in varieties of robotic applications, for example on the Mars Exploration Rovers. This paper, firstly, discusses two popular existing visual odometry approaches, namely LSD-SLAM and ORB-SLAM2 to improve the performance metrics of visual SLAM systems using Umeyama Method. We carefully evaluate the methods referred to above on three different well-known KITTI datasets, EuRoC MAV dataset, and TUM RGB-D dataset to obtain the best results and graphically compare the results to evaluation metrics from different visual odometry approaches.

Keywords

Visual odometryArtificial intelligenceComputer scienceComputer visionFeature (linguistics)OdometryRGB color modelPixelSimultaneous localization and mappingMatching (statistics)

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