2022
DOI: 10.1109/access.2022.3188281
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A Dynamic Bayesian Network Model for Real-Time Risk Propagation of Secondary Rear-End Collision Accident Using Driving Risk Field

Abstract: In order to take more active measures to prevent and control secondary accidents, it is necessary to describe risk propagation process after the accident. To this end, this paper deeply analyzed the risk propagation mechanism between vehicles and proposed a novel secondary rear-end collision accident risk propagation model, which could real-time evaluate vehicle rear-end collision risk. The research scene of the paper is a single-lane road rear-end collision scene, so a driving risk field model suitable for th… Show more

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Cited by 5 publications
(1 citation statement)
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“…The SVM classifier has the advantage of discriminating between the two classes (hyperplane and line) the best. It is a supervised ML tool that is based on statistical theory and the structural risk minimization principle, with the purpose of training nonlinear ML and applying the resultant optimization theory in highdimensional feature spaces [24], [26], [32]. This machine's basic strategy is to build a large number of separation hyperplanes and then choose the best one to categorise distinct sets.…”
Section: Support Vector Machine (Svm)mentioning
confidence: 99%
“…The SVM classifier has the advantage of discriminating between the two classes (hyperplane and line) the best. It is a supervised ML tool that is based on statistical theory and the structural risk minimization principle, with the purpose of training nonlinear ML and applying the resultant optimization theory in highdimensional feature spaces [24], [26], [32]. This machine's basic strategy is to build a large number of separation hyperplanes and then choose the best one to categorise distinct sets.…”
Section: Support Vector Machine (Svm)mentioning
confidence: 99%