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Vehicle Trajectory Prediction by Transfer Learning of Semi-Supervised Models

2020-07-14 02:42:48
Nick Lamm, Shashank Jaiprakash, Malavika Srikanth, Iddo Drori

Abstract

In this work we show that semi-supervised models for vehicle trajectory prediction significantly improve performance over supervised models on state-of-the-art real-world benchmarks. Moving from supervised to semi-supervised models allows scaling-up by using unlabeled data, increasing the number of images in pre-training from Millions to a Billion. We perform ablation studies comparing transfer learning of semi-supervised and supervised models while keeping all other factors equal. Within semi-supervised models we compare contrastive learning with teacher-student methods as well as networks predicting a small number of trajectories with networks predicting probabilities over a large trajectory set. Our results using both low-level and mid-level representations of the driving environment demonstrate the applicability of semi-supervised methods for real-world vehicle trajectory prediction.

Abstract (translated)

URL

https://arxiv.org/abs/2007.06781

PDF

https://arxiv.org/pdf/2007.06781.pdf


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