|
Achieving Undelayed
Initialization in Monocular SLAM with
Generalized Objects Using Velocity Estimate-based Classification
Chen-Han Hsiao and Chieh-Chih Wang
2011 IEEE International Conference on
Robotics and Automation
Abstract |
Based on the
framework of simultaneous localization and mapping (SLAM), SLAM with
generalized objects (GO) has an additional structure to allow motion
mode learning of generalized objects, and calculates a joint posterior
over the robot, stationary objects and moving objects. While the
feasibility of monocular SLAM has been demonstrated and undelayed
initialization has been achieved using the inverse depth
parametrization, it is still challenging to achieve undelayed
initialization in monocular SLAM with GO because of the delay decision
of static and moving object classification. In this paper, we propose a
simple yet effective static and moving object classification method
using the velocity estimates directly from SLAM with GO. Compared to
the existing approach in which the observations of a new/unclassified
feature can not be used in state estimation, the proposed approach
makes the uses of all observations without any delay to estimate the
whole state vector of SLAM with GO. Both Monte Carlo simulations and
real experimental results demonstrate the accuracy of
the proposed classification algorithm and the estimates of monocular
SLAM with GO.
|
Download |
|
The full paper is available in PDF.
|
Bibtex |
@inproceedings{Hsiao_icra11,
author = {Chen-Han Hsiao and Chieh-Chih Wang},
title = {Achieving Undelayed
Initialization in Monocular SLAM with Generalized Objects Using
Velocity Estimate-based Classification},
booktitle = {IEEE
International
Conference
on Robotics and Automation (ICRA)},
address = {Shanghai,
China},
month
=
{May},
year
=
{2011},
}
|
|
|
Copyright ©
Chieh-Chih
(Bob) Wang 2011. All right reserved.
Last Updated: Feb. 13, 2011.
|
|