2022
DOI: 10.48550/arxiv.2202.07606
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Improving Pedestrian Prediction Models with Self-Supervised Continual Learning

Abstract: Autonomous mobile robots require accurate human motion predictions to safely and efficiently navigate among pedestrians, whose behavior may adapt to environmental changes. This paper introduces a self-supervised continual learning framework to improve data-driven pedestrian prediction models online across various scenarios continuously. In particular, we exploit online streams of pedestrian data, commonly available from the robot's detection and tracking pipeline, to refine the prediction model and its perform… Show more

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References 29 publications
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