Data fusion in multi sensor platforms for wide-area perception

Tokyo(2006)

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摘要
There is a strong belief that the improvement of preventive safety applications and the extension of their operative range are achieved by the deployment of multiple sensors with wide fields of view (FOV). The paper contributes to the solution of the problem and introduces distributed sensor data fusion architectures and algorithms for an efficient deployment of multiple sensors that give redundant or complementary information for the moving objects. The proposed fusion architecture is based on a modular approach allowing exchangeability and benchmarking using the output of individual trackers, whereas the fusion algorithm gives a solution to the track management problem and the coverage of wide perception areas. The test case is LATERAL SAFE sensor configuration, which monitors the rear and lateral areas of the vehicle. Results show that with the given approach the system is able to maintain the ID of all objects in transition (an object enters a sensor's FOV) and blind areas (no sensor coverage)
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关键词
monitoring,object detection,road vehicles,sensor fusion,complementary information,distributed sensor data fusion,multiple sensor,multisensor platform,redundant information,sensor configuration,track management,vehicle lateral area monitoring,vehicle rear area monitoring,wide field of view,wide perception area,wide-area perception,adas,data fusion,data association,lane change,lateral collision warning,field of view,physics
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