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Maximally Informative Statistics for Localization and Mapping
- Publication Year :
- 2001
- Publisher :
- United States: NASA Center for Aerospace Information (CASI), 2001.
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Abstract
- This paper presents an algorithm for localization and mapping for a mobile robot using monocular vision and odometry as its means of sensing. The approach uses the Variable State Dimension filtering (VSDF) framework to combine aspects of Extended Kalman filtering and nonlinear batch optimization. This paper describes two primary improvements to the VSDF. The first is to use an interpolation scheme based on Gaussian quadrature to linearize measurements rather than relying on analytic Jacobians. The second is to replace the inverse covariance matrix in the VSDF with its Cholesky factor to improve the computational complexity. Results of applying the filter to the problem of localization and mapping with omnidirectional vision are presented.
- Subjects :
- Statistics And Probability
Subjects
Details
- Language :
- English
- Database :
- NASA Technical Reports
- Notes :
- NCC2-1006
- Publication Type :
- Report
- Accession number :
- edsnas.20030063015
- Document Type :
- Report