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TENET: Transformer Encoding Network for Effective Temporal Flow on Motion Prediction

Published 30 Jun 2022 in cs.CV and cs.AI | (2207.00170v1)

Abstract: This technical report presents an effective method for motion prediction in autonomous driving. We develop a Transformer-based method for input encoding and trajectory prediction. Besides, we propose the Temporal Flow Header to enhance the trajectory encoding. In the end, an efficient K-means ensemble method is used. Using our Transformer network and ensemble method, we win the first place of Argoverse 2 Motion Forecasting Challenge with the state-of-the-art brier-minFDE score of 1.90.

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