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PERCEPTION

RFM-SLAM: Exploiting relative feature measurements to separate orientation and position estimation in SLAM

Saurav Agarwal, Vikram Shree, Suman Chakravorty

发表年份
2017
引用次数
2

摘要

The SLAM problem is known to have a special property that when robot orientation is known, estimating the history of robot poses and feature locations can be posed as a standard linear least squares problem. In this work, we develop a SLAM framework that uses relative feature-to-feature measurements to exploit this structural property of SLAM. Relative feature measurements are used to pose a linear estimation problem for pose-to-pose orientation constraints. This is followed by solving an iterative non-linear on-manifold optimization problem to compute the maximum likelihood estimate for robot orientation given relative rotation constraints. Once the robot orientation is computed, we solve a linear problem for robot position and map estimation. Our approach reduces the computational complexity of non-linear optimization by posing a smaller optimization problem as compared to standard graph-based methods for feature-based SLAM. Further, empirical results show our method avoids catastrophic failures that arise in existing methods due to using odometery as an initial guess for non-linear optimization, while its accuracy degrades gracefully as sensor noise is increased. We demonstrate our method through extensive simulations and comparisons with an existing state-of-the-art solver.

关键词

Simultaneous localization and mappingOrientation (vector space)PoseSolverFeature (linguistics)Computer scienceArtificial intelligenceRobotOptimization problemComputer vision

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