Litcius/Paper detail

Expanding the Deployment Envelope of Behavior Prediction via Adaptive Meta-Learning

Boris Ivanovic, J. Harrison, Marco Pavone

202329 citationsDOI

Abstract

Learning-based behavior prediction methods are increasingly being deployed in real-world autonomous systems, e.g., in fleets of self-driving vehicles, which are beginning to commercially operate in major cities across the world. Despite their advancements, however, the vast majority of prediction systems are specialized to a set of well-explored geographic regions or operational design domains, complicating deployment to additional cities, countries, or continents. Towards this end, we present a novel method for efficiently adapting behavior prediction models to new environments. Our approach leverages recent advances in meta-learning, specifically Bayesian regression, to augment existing behavior prediction models with an adaptive layer that enables efficient domain transfer via offline fine-tuning, online adaptation, or both. Experiments across multiple real-world datasets demonstrate that our method can efficiently adapt to a variety of unseen environments.

Topics & Concepts

Software deploymentComputer scienceAdaptation (eye)Machine learningTransfer of learningArtificial intelligenceDomain adaptationDomain (mathematical analysis)Variety (cybernetics)Set (abstract data type)Meta learning (computer science)Envelope (radar)EngineeringTelecommunicationsOpticsMathematical analysisTask (project management)PhysicsOperating systemSystems engineeringProgramming languageClassifier (UML)RadarMathematicsAutonomous Vehicle Technology and SafetyVideo Surveillance and Tracking MethodsAnomaly Detection Techniques and Applications