Data di Pubblicazione:
2016
Abstract:
Reliable assessment of terrain traversability using multi-sensory input is a key issue for
driving automation, particularly when the domain is unstructured or semi-structured, as
in natural environments. In this paper, LIDAR-stereo combination is proposed to detect
traversable ground in outdoor applications. The system integrates two self-learning classi-
ers, one based on LIDAR data and one based on stereo data, to detect the broad class of
drivable ground. Each single-sensor classier features two main stages: an adaptive training
stage and a classication stage. During the training stage, the classier automatically
learns to associate geometric appearance of 3D data with class labels. Then, it makes predictions
based on past observations. The output obtained from the single-sensor classiers
are statistically combined in order to exploit their individual strengths and reach an overall
better performance than could be achieved by using each of them separately. Experimental
results, obtained with a test bed platform operating in rural environments, are presented to
validate and assess the performance of this approach, showing its eectiveness and potential
applicability to autonomous navigation in outdoor contexts.
Tipologia CRIS:
01.01 Articolo in rivista
Keywords:
Ground detection; Sensor integration; Self-learning classification
Elenco autori:
Milella, Annalisa
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