Online Reliability Assessment And Reliability-Aware Fusion For Ego-Lane Detection Using Influence Diagram And Bayes Filter

2017 IEEE INTERNATIONAL CONFERENCE ON MULTISENSOR FUSION AND INTEGRATION FOR INTELLIGENT SYSTEMS (MFI)(2017)

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Abstract
Within the context of road estimation, the present paper addresses the problem of the fusion of several sources with different reliabilities. Thereby, reliability represents a higher-level uncertainty. This problem arises in automated driving and ADAS due to changing environmental conditions, e.g., road type or visibility of lane markings. Thus, we present an online sensor reliability assessment and reliability-aware fusion to cope with this challenge. First, we apply a boosting algorithm to select the highly discriminant features among the extracted information. Using them we apply different classifiers to learn the reliabilities, such as Bayesian Network and Random Forest classifiers. To stabilize the estimated reliabilities over time, we deploy approaches such as Dempster-Shafer evidence theory and Influence Diagram combined with a Bayes Filter. Using a big collection of real data recordings, the experimental results support our proposed approach.
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Key words
Random Forest classifiers,estimated reliabilities,influence diagram,Bayes Filter,online reliability assessment,Ego-Lane detection,Bayes filter,road estimation,higher-level uncertainty,automated driving,road type,online sensor reliability assessment,boosting algorithm,discriminant feature selection,reliability-aware fusion,ADAS,lane markings visibility,Bayesian network,Dempster-Shafer evidence theory,real data recordings
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