This paper presents a vision-based approach for mobile robot localization. The model of the environment is topological. The
new approach characterizes a place using a signature. This signature consists of a constellation of descriptors computed over
different types of local affine covariant regions extracted from an omnidirectional image acquired rotating a standard camera
with a pan-tilt unit. This type of representation permits a reliable and distinctive environment modelling. Our objectives
were to validate the proposed method in indoor environments and, also, to find out if the combination of complementary local
feature region detectors improves the localization versus using a single region detector. Our experimental results show that
if false matches are effectively rejected, the combination of different covariant affine region detectors increases notably
the performance of the approach by combining the different strengths of the individual detectors. In order to reduce the localization
time, two strategies are evaluated: re-ranking the map nodes using a global similarity measure and using standard perspective
view field of 45°.
In order to systematically test topological localization methods, another contribution proposed in this work is a novel method
to see the degradation in localization performance as the robot moves away from the point where the original signature was
acquired. This allows to know the robustness of the proposed signature. In order for this to be effective, it must be done
in several, variated, environments that test all the possible situations in which the robot may have to perform localization.
Keywords Topological localization - Vision based localization - Panoramic vision - Affine covariant region detectors
This work was partially supported by the FI grant from the Generalitat de Catalunya, the European Social Fund, and the grant
2009-SGR-1434 and the MID-CBR project grant TIN2006-15140-C03-01 and FEDER funds and the grant 2005-SGR-00093 and the MIPRCV
Consolider Ingenio 2010.