DocumentCode
737247
Title
Learned ultra-wideband RADAR sensor model for augmented LIDAR-based traversability mapping in vegetated environments
Author
Ahtiainen, Juhana ; Peynot, Thierry ; Saarinen, Jari ; Scheding, Steven ; Visala, Arto
Author_Institution
Department of Electrical Engineering and Automation, Aalto University, Finland
fYear
2015
fDate
6-9 July 2015
Firstpage
953
Lastpage
960
Abstract
In vegetated environments, reliable obstacle detection remains a challenge for state-of-the-art methods, which are usually based on geometrical representations of the environment built from LIDAR and/or visual data. In many cases, in practice field robots could safely traverse through vegetation, thereby avoiding costly detours. However, it is often mistakenly interpreted as an obstacle. Classifying vegetation is insufficient since there might be an obstacle hidden behind or within it. Some Ultra-wide band (UWB) radars can penetrate through vegetation to help distinguish actual obstacles from obstacle-free vegetation. However, these sensors provide noisy and low-accuracy data. Therefore, in this work we address the problem of reliable traversability estimation in vegetation by augmenting LIDAR-based traversability mapping with UWB radar data. A sensor model is learned from experimental data using a support vector machine to convert the radar data into occupancy probabilities. These are then fused with LIDAR-based traversability data. The resulting augmented traversability maps capture the fine resolution of LIDAR-based maps but clear safely traversable foliage from being interpreted as obstacle. We validate the approach experimentally using sensors mounted on two different mobile robots, navigating in two different environments.
Keywords
Data models; Feature extraction; Laser radar; Robot sensing systems; Ultra wideband radar; Vegetation mapping;
fLanguage
English
Publisher
ieee
Conference_Titel
Information Fusion (Fusion), 2015 18th International Conference on
Conference_Location
Washington, DC, USA
Type
conf
Filename
7266662
Link To Document