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Chapter

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Title

The importance of measurement uncertainty modelling in the feature-based RGB-D SLAM

Authors

[ 1 ] Instytut Automatyki i Inżynierii Informatycznej, Wydział Elektryczny, Politechnika Poznańska | [ P ] employee

Year of publication

2015

Chapter type

paper

Publication language

english

Abstract

EN This paper presents an analysis of the role of measurements uncertainty in the feature-based RGB-D SLAM formulated as graph optimization problem. The considered SLAM solution uses global graph optimization to find the trajectory of the RGB-D camera and a set of 3D point features constituting the map. In order to focus on the optimization back-end details and isolate the results from the data association errors caused by the image processing front-end in a real SLAM system we introduce a simulation environment, which allows to clearly show the influence of the uncertainty model on the accuracy of the obtained trajectories. We demonstrate a substantial improvement in the trajectory accuracy due to using in the graph optimization process an uncertainty model based on the physical properties of the RGB-D sensor. Moreover, we investigate the influence of the RGB-D camera motion strategy on the accuracy of the SLAM solution, pointing out the relation between this strategy and the measurement uncertainty model.

Pages (from - to)

308 - 313

DOI

10.1109/RoMoCo.2015.7219752

URL

https://ieeexplore.ieee.org/document/7219752

Book

10th International Workshop on Robot Motion and Control, RoMoCo 2015, Poznań, Poland, July 6-8, 2015

Presented on

10th International Workshop on Robot Motion and Control, RoMoCo' 15, 6-8.07.2015, Poznan, Poland

Publication indexed in

WoS (15)

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