Using Support Vector Machines and Bayesian Filtering for Classifying Agent Intentions at Road Intersections
Author(s)
Aoude, Georges S.; How, Jonathan P.![Thumbnail](/bitstream/handle/1721.1/46720/Aoude_How_SVM_BF.pdf.jpg?sequence=7&isAllowed=y)
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Classifying other agents’ intentions is a very complex task but it can be very essential in assisting (autonomous or human) agents in navigating safely in dynamic and possibly hostile environments. This paper introduces a classification approach based on support vector machines and Bayesian filtering (SVM-BF). It then applies it to a road intersection problem to assist a vehicle in detecting the intention of an approaching suspicious vehicle. The SVM-BF approach achieved very promising results.
Date issued
2009-09-15Series/Report no.
;ACL09-02
Keywords
SVM, intersection safety, support vector machines, classification
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