IIIE   20352
INSTITUTO DE INVESTIGACIONES EN INGENIERIA ELECTRICA "ALFREDO DESAGES"
Unidad Ejecutora - UE
artículos
Título:
Using Delayed Observations for Long-Term Vehicle Tracking in Large Environments
Autor/es:
MAO SHAN; STEWART WORRALL; FAVIO MASSON; EDUARDO NEBOT
Revista:
IEEE TRANSACTIONS ON INTELLIGENT TRANSPORTATION SYSTEMS
Editorial:
IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
Referencias:
Lugar: New York; Año: 2014 vol. 15 p. 967 - 981
ISSN:
1524-9050
Resumen:
The tracking of vehicles over large areas with limited position observations is of significant importance in many industrial applications. This paper presents algorithms for long- term vehicle motion estimation based on a vehicle motion model that incorporates the properties of the working environment, and information collected by other mobile agents and fixed in- frastructure collection points. The prediction algorithm provides long-term estimates of vehicle positions using speed and timing profiles built for a particular environment, and considering the probability of a vehicle stopping. A limited number of data collection points distributed around the field are used to update the estimates, with negative information (no communication) also used to improve the prediction. The paper introduces the concept of observation harvesting, a process in which peer-to- peer communication between vehicles allows egocentric position updates to be relayed among vehicles, and finally conveyed to the collection point for an improved position estimate. Positive and negative communication information is incorporated into the fusion stage, and a particle filter is used to incorporate the delayed observations harvested from vehicles in the field to improve the position estimates. The contributions of this work enable the optimization of fleet scheduling using discrete observations. Experimental results from a typical large scale mining operation are presented to validate the algorithms.