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Simultaneous localization and mapping using Extended Kalman Filter

Sırma Yavuz, Zeyneb Kurt, Mehmet Biçer

Year
2009
Citations
10

Abstract

In this study, an offline statistical estimation algorithm based on extended Kalman filter method is developed to solve the SLAM (simultaneous localization and map building) problem. For the application, a robot equipped with only simple and cheap sensors is used. Two of the most frequent problems in SLAM algorithms which are known as loop closing and data association are effectively solved by extended Kalman filter method.

Keywords

Simultaneous localization and mappingKalman filterExtended Kalman filterFast Kalman filterComputer scienceClosing (real estate)Data associationInvariant extended Kalman filterMoving horizon estimationComputer vision

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