posted on 2002-01-01, 00:00authored byPeng Chang, Martial Hebert
Geometric reconstruction of the environment from images
is critical in autonomous mapping and robot navigation.
Geometric reconstruction involves feature tracking,
i.e., locating corresponding image features in consecutive
images, and structure from motion (SFM), i.e., recovering
the 3-D structure of the environment from a set
of correspondences between images. Although algorithms
for feature tracking and structure from motion are wellestablished,
their use in practical robot mobile applications
is still difficult because of occluded features, non-smooth
motion between frames, and ambiguous patterns in images.
In this paper, we show how a sampling-based representation
can be used in place of the traditional Gaussian representation
of uncertainty. We show how sampling can be used for
both feature tracking and SFM and we show how they are
combined in this framework. The approach is exercised in
the context of a mobile robot navigating through an outdoor
environment with an omnidirectional camera.