posted on 1997-01-01, 00:00authored byYutaka Takeuchi, Patrick Gros, Martial Hebert, Katsushi Ikeuchi
Recognizing landmark is a critical task for mobile
robots. Landmarks are used for robot positioning,
and for building maps of unknown environments.
In this context, the traditional recognition techniques
based on strong geometric models cannot
be used. Rather, models of landmarks must be built
from observations using image-based visual learning
techniques. Beyond its application to mobile
robot navigation, this approach addresses the more
general problem of identifying groups of images
with common attributes in sequences of images.
We show that, with the appropriate domain constraints
and image descriptions, this can be done
using efficient algorithms as follows: Starting with
a “training” sequence of images, we identify
groups of images corresponding to distinctive landmarks.
Each group is described by a set of feature
distributions. At run-time, the observed images are
compared with the sets of models in order to recognize
the landmarks in the input stream.