Authors
Ryan M Eustice, Hanumant Singh, John J Leonard
Publication date
2006/12/4
Journal
IEEE Transactions on Robotics
Volume
22
Issue
6
Pages
1100-1114
Publisher
IEEE
Description
This paper reports the novel insight that the simultaneous localization and mapping (SLAM) information matrix is exactly sparse in a delayed-state framework. Such a framework is used in view-based representations of the environment that rely upon scan-matching raw sensor data to obtain virtual observations of robot motion with respect to a place it has previously been. The exact sparseness of the delayed-state information matrix is in contrast to other recent feature-based SLAM information algorithms, such as sparse extended information filter or thin junction-tree filter, since these methods have to make approximations in order to force the feature-based SLAM information matrix to be sparse. The benefit of the exact sparsity of the delayed-state framework is that it allows one to take advantage of the information space parameterization without incurring any sparse approximation error. Therefore, it can produce …
Total citations
2006200720082009201020112012201320142015201620172018201920202021202220232024112303236341737252728222419121318103
Scholar articles
RM Eustice, H Singh, JJ Leonard - IEEE Transactions on Robotics, 2006