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Prediction-Uncertainty-Aware Threat Detection for ADAS: A Case Study on Lane-Keeping Assistance

John Dahl, Gabriel Rodrigues de Campos, Jonas Fredriksson

2023IEEE Transactions on Intelligent Vehicles15 citationsDOI

Abstract

Advanced driver assistance systems typically support the driver in cases where the driver is likely to fail the driving task. The challenge, from a system perspective, is to accurately detect those cases. Recently, machine learning-based prediction models that are able to estimate the prediction uncertainty in real-time have successfully been introduced for this purpose. However, very little effort has been made on using the prediction uncertainty in the decision-making logic to improve the system's robustness, especially in cases where the input data is affected by noise or anomalies that are not presented in the training data. In this work, four threat-detection methods using uncertainty estimates are proposed and evaluated using a real-world data set. The methods use different strategies for leveraging uncertainty information, where the goal is to ensure that the intervention decision is based on trustworthy predictions. The threat-detection methods' performances are evaluated, using five different learning-based prediction models, in the context of a lane-keeping assistance application.

Topics & Concepts

Computer scienceRobustness (evolution)Advanced driver assistance systemsMachine learningArtificial intelligenceTask (project management)Data miningTraining setContext (archaeology)TrustworthinessPerspective (graphical)Noise (video)EngineeringComputer securityChemistryBiochemistryPaleontologyBiologyImage (mathematics)GeneSystems engineeringAutonomous Vehicle Technology and SafetyAdversarial Robustness in Machine LearningHuman-Automation Interaction and Safety
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