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arxiv: 2110.10436 · v2 · pith:BAHKFVLU · submitted 2021-10-20 · cs.RO

A Survey on Deep-Learning Approaches for Vehicle Trajectory Prediction in Autonomous Driving

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classification cs.RO
keywords trajectorypredictionautonomousdrivinglearningperformanceachievementapproaches
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With the rapid development of machine learning, autonomous driving has become a hot issue, making urgent demands for more intelligent perception and planning systems. Self-driving cars can avoid traffic crashes with precisely predicted future trajectories of surrounding vehicles. In this work, we review and categorize existing learning-based trajectory forecasting methods from perspectives of representation, modeling, and learning. Moreover, we make our implementation of Target-driveN Trajectory Prediction publicly available at https://github.com/Henry1iu/TNT-Trajectory-Predition, demonstrating its outstanding performance whereas its original codes are withheld. Enlightenment is expected for researchers seeking to improve trajectory prediction performance based on the achievement we have made.

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