Adaptive Multi-sensor Perception for Driving Automation in Outdoor Contexts
Abstract
In this research, adaptive perception for driving automation is discussed so as to enable a vehicle to automatically detect driveable areas and obstacles in the scene. It is especially designed for outdoor contexts where conventional perception systems that rely on a priori knowledge of the terrain's geometric properties, appearance properties, or both, is prone to fail, due to the variability in the terrain properties and environmental conditions. In contrast, the proposed framework uses a self-learning approach to build a model of the ground class that is continuously adjusted online to reflect the latest ground appearance. The system also features high flexibility, as it can work using a single sensor modality or a multi-sensor combination. In the context of this research, different embodiments have been demonstrated using range data coming from either a radar or a stereo camera, and adopting self-supervised strategies where monocular vision is automatically trained by radar or stereo vision. A comprehensive set of experimental results, obtained with different ground vehicles operating in the field, are presented to validate and assess the performance of the system.
Autore Pugliese
Tutti gli autori
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Milella A. , Reina G.
Titolo volume/Rivista
INTERNATIONAL JOURNAL OF ADVANCED ROBOTIC SYSTEMS
Anno di pubblicazione
2014
ISSN
1729-8806
ISBN
Non Disponibile
Numero di citazioni Wos
Nessuna citazione
Ultimo Aggiornamento Citazioni
Non Disponibile
Numero di citazioni Scopus
2
Ultimo Aggiornamento Citazioni
22/04/2018
Settori ERC
Non Disponibile
Codici ASJC
Non Disponibile
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