Publication | Open Access
A Comparison of Uncertainty Estimation Approaches in Deep Learning Components for Autonomous Vehicle Applications
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Citations
23
References
2020
Year
Deep Learning ComponentsUncertainty Estimation ApproachesMachine LearningEngineeringAi FoundationAi SafetyUncertain DataAutonomous SystemsUncertainty ModelingAi ReliabilityData ScienceUncertainty QuantificationUncertainty PredictionsDeep UncertaintySystems EngineeringRobot LearningComputer ScienceAutonomous DrivingUncertainty RepresentationDeep LearningAutonomous Vehicle ApplicationsDeep Neural Networks
A key factor for ensuring safety in Autonomous Vehicles (AVs) is to avoid any abnormal behaviors under undesirable and unpredicted circumstances. As AVs increasingly rely on Deep Neural Networks (DNNs) to perform safety-critical tasks, different methods for uncertainty quantification have recently been proposed to measure the inevitable source of errors in data and models. However, uncertainty quantification in DNNs is still a challenging task. These methods require a higher computational load, a higher memory footprint, and introduce extra latency, which can be prohibitive in safety-critical applications. In this paper, we provide a brief and comparative survey of methods for uncertainty quantification in DNNs along with existing metrics to evaluate uncertainty predictions. We are particularly interested in understanding the advantages and downsides of each method for specific AV tasks and types of uncertainty sources.
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