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Booij08DataAso
Sampling in image space for vision based SLAM
Olaf Booij, Zoran Zivkovic and Ben Kröse,
In Proceedings of the Inside Data Association Workshop
during the Robotics: Science and Systems Conference (RSS), June
2008.
Abstract:
Loop closing in vision based SLAM applications is a difficult task.
Comparing new image data with all previous image data acquired for the
map is practically impossible because of the high computational costs.
This problem is part of the bigger problem to acquire local geometric
constraints from sensor data for geometric map building termed data
association.
Commonly the computational costs are kept small by sampling the image
data uniformly over time or using a position estimate from a mapping and
localization algorithm.
In this paper we propose a more natural sampling approach, by
determining a subset that best describes the complete
image data in the space of all previously seen images. The actual problem
of finding such a subset is called the Connected Dominating Set problem
which is well studied in field of graph theory.
The proposed method is particularly beneficial for realistic mapping
scenarios including moving objects and persons, motion blur and
changing light conditions. Evaluation on multiple large indoor datasets
show that the method performance is very close to that of an exhaustive
data association scheme and outperforms other sampling approaches.
Download:
Final version: gzipped
postscript (2.4 Mb), pdf
(2.3 Mb).
bibtex entry.
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