2020
DOI: 10.48550/arxiv.2006.06715
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Data Driven Prediction Architecture for Autonomous Driving and its Application on Apollo Platform

Abstract: Autonomous Driving vehicles (ADV) are on road with large scales. For safe and efficient operations, ADVs must be able to predict the future states and iterative with road entities in complex, real-world driving scenarios. How to migrate a well-trained prediction model from one geo-fenced area to another is essential in scaling the ADV operation and is difficult most of the time since the terrains, traffic rules, entities distributions, driving/walking patterns would be largely different in different geo-fenced… Show more

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