Memorias de investigación
Ponencias en congresos:
Application of Deep Learning to Route Odometry Estimation from LiDAR Data
Año:2017

Áreas de investigación
  • Tecnología electrónica y de las comunicaciones,
  • Ingeniería mecánica, aeronaútica y naval,
  • Ingeniería eléctrica, electrónica y automática

Datos
Descripción
he Deep Learning techniques are a powerful tool to support the development of all sorts of information classification or processing techniques within the area of intelligent vehicles, since they are able to emulate the performance of the human brain when learning from experience. Specifically, the technique of Convolutional Neural Networks (CNN) has been successfully used in applications for classification and localization of pedestrians and obstacles on the road. However, CNN allow not only classification and pattern learning, but can be used for regression or modeling, like other kind of classical neural networks. The fundamental difference of both applications is that, while in classification the values of the network output are usually discrete, in regression or modeling applications the network can generate a continuous output with real numbers, allowing it to emulate the output of any type of system that is presented in the training set, with all its associated advantages, such as generalization and correct characterization of situations that have not learned explicitly. This paper presents an application of CNN for modeling in Intelligent Vehicles field, whose objective is to calculate the navigation parameters of a vehicle from the information supplied by a 3D LiDAR mounted on a vehicle that circulates in urban areas. Specifically, the developed CNN is able to calculate the speed and heading of a vehicle circulating in real time from the distance data supplied by the LiDAR sensor. The results show that the network is able to learn to calculate the speed and the yaw rate from the identification of the characteristic points of the environment, providing data that can be used to support the navigation of the vehicles.
Internacional
Si
Nombre congreso
VEHICULAR 2017, The Sixth International Conference on Advances in Vehicular Systems, Technologies and Applications
Tipo de participación
960
Lugar del congreso
Niza (Francia), 22-23 Julio 2017
Revisores
Si
ISBN o ISSN
0000-0000
DOI
Fecha inicio congreso
22/07/2017
Fecha fin congreso
23/07/2017
Desde la página
1
Hasta la página
10
Título de las actas
Sin titulo

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Participantes

Grupos de investigación, Departamentos, Centros e Institutos de I+D+i relacionados
  • Creador: Grupo de Investigación: Grupo de Inv. en Seguridad e Impacto Medioambiental de Vehículos y Transportes (GIVET)
  • Centro o Instituto I+D+i: Instituto Universitario de Investigación del Automóvil (INSIA)
  • Departamento: Ingeniería Mecánica