An Information Driven Approach For Ego-Lane Detection Using Lidar And OpenStreetMap
Résumé
Localizing the vehicle in its lane is a critical task
for any autonomous vehicle. By and large, this task is carried
out primarily through the identification of ego-lane markings.
In recent years, ego-lane marking detection systems have been
the subject of various research topics, using several inputs
data such as camera or lidar sensors. Lately, the current
trend is to use high accurate maps (HD maps) that provide
accurate information about the road environment. However,
these maps suffer from their availability and their price tag.
An alternative is the use of affordable low-accurate maps. Yet,
there is relatively little work on it. In this paper, we propose an
information-driven approach that takes into account inaccurate
prior geometry of the road from OpenStreetMap (OSM) to
perform ego-lane marking detection using solely a lidar. The
two major novelties presented in this paper are the use of the
OSM datasets as prior for the road geometry, which reduces
the research area in the lidar space, and the information-driven
approach, which guarantees that the outcome of the detection is
coherent to the road geometry. The robustness of the proposed
method is proven on real datasets and statistical metrics are
used to highlight our method’s efficiency.
Domaines
Robotique [cs.RO]Origine | Fichiers produits par l'(les) auteur(s) |
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