On the use of inverse scaling in monocular SLAM

ICRA(2009)

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摘要
Recent works have shown that it is possible to solve the Simultaneous Localization And Mapping problem using an Extended Kalman Filter and a single perspective camera. The principal drawback of these works is an inaccurate modeling of measurement uncertainties, which therefore causes inconsistencies in the filter estimations. A possible solution to proper uncertainty modeling is the Unified Inverse Depth parametrization. In this paper we propose the Inverse Scaling parametrization that still allows an un-delayed initialization of features, while reducing the number of needed parameters and simplifying the measurement model. This novel approach allows a better uncertainty modeling of both low and high parallax features and reduces the likelihood of inconsistencies. Experiments in simulation demonstrate that the use of the Inverse Scaling solution improves the performance of the monocular EKF SLAM filter when compared with the Unified Inverse Depth approach; experiment on real data confirm the applicability of the idea.
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关键词
Inverse Scaling parametrization,Inverse Scaling solution,Unified Inverse Depth approach,Unified Inverse Depth parametrization,better uncertainty modeling,inaccurate modeling,proper uncertainty modeling,filter estimation,measurement model,measurement uncertainty,inverse scaling,monocular SLAM
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