Title :
Vehicle and Guard Rail Detection Using Radar and Vision Data Fusion
Author :
Alessandretti, Giancarlo ; Broggi, Alberto ; Cerri, Pietro
Author_Institution :
Innovative Technol. of Centro Ricerche, Fabbrica Italiana Automobili Torino
fDate :
3/1/2007 12:00:00 AM
Abstract :
This paper describes a vehicle detection system fusing radar and vision data. Radar data are used to locate areas of interest on images. Vehicle search in these areas is mainly based on vertical symmetry. All the vehicles found in different image areas are mixed together, and a series of filters is applied in order to delete false detections. In order to speed up and improve system performance, guard rail detection and a method to manage overlapping areas are also included. Both methods are explained and justified in this paper. The current algorithm analyzes images on a frame-by-frame basis without any temporal correlation. Two different statistics, namely: 1) frame based and 2) event based, are computed to evaluate vehicle detection efficiency, while guard rail detection efficiency is computed in terms of time savings and correct detection rates. Results and problems are discussed, and directions for future enhancements are provided
Keywords :
correlation methods; object detection; radar detection; road vehicles; roads; sensor fusion; correct detection rates; guard rail detection; radar data fusion; temporal correlation; vehicle detection; vertical symmetry; vision data fusion; Algorithm design and analysis; Event detection; Filters; Image analysis; Radar detection; Radar imaging; Rails; Statistics; System performance; Vehicle detection; Fusion; radar; vehicle detection; vision;
Journal_Title :
Intelligent Transportation Systems, IEEE Transactions on
DOI :
10.1109/TITS.2006.888597