2021
DOI: 10.48550/arxiv.2103.04854
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Injecting Knowledge in Data-driven Vehicle Trajectory Predictors

Mohammadhossein Bahari,
Ismail Nejjar,
Alexandre Alahi

Abstract: Vehicle trajectory prediction tasks have been commonly tackled from two distinct perspectives: either with knowledge-driven methods or more recently with datadriven ones. On the one hand, we can explicitly implement domain-knowledge or physical priors such as anticipating that vehicles will follow the middle of the roads. While this perspective leads to feasible outputs, it has limited performance due to the difficulty to hand-craft complex interactions in urban environments. On the other hand, recent works us… Show more

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“…Gupta [19] utilized a pooling module to extract dense interactive features among vehicles. More recent works urge to merge data-driven and knowledge-driven approaches into a unified neural network [6], [7].…”
Section: Related Workmentioning
confidence: 99%
“…Gupta [19] utilized a pooling module to extract dense interactive features among vehicles. More recent works urge to merge data-driven and knowledge-driven approaches into a unified neural network [6], [7].…”
Section: Related Workmentioning
confidence: 99%