Accurately predicting pedestrian trajectories is crucial in applications such as autonomous driving or service robotics, to name a few. Deep generative models achieve top performance in this task, assuming enough labelled trajectories are available for training. To this end, large amounts of synthetically generated, labelled trajectories exist (e.g., generated by video games). However, such trajectories are not meant to represent pedestrian motion realistically and are ineffective at training a predictive model. We propose a method and an architecture to augment synthetic trajectories at training time and with an adversarial approach. We show that trajectory augmentation at training time unleashes significant gains when a state-of-the-art generative model is evaluated over real-world trajectories.

AA-SGAN: Adversarially Augmented Social GAN with Synthetic Data

Mirko Zaffaroni
;
Federico Signoretta;Marco Grangetto;Attilio Fiandrotti
2024-01-01

Abstract

Accurately predicting pedestrian trajectories is crucial in applications such as autonomous driving or service robotics, to name a few. Deep generative models achieve top performance in this task, assuming enough labelled trajectories are available for training. To this end, large amounts of synthetically generated, labelled trajectories exist (e.g., generated by video games). However, such trajectories are not meant to represent pedestrian motion realistically and are ineffective at training a predictive model. We propose a method and an architecture to augment synthetic trajectories at training time and with an adversarial approach. We show that trajectory augmentation at training time unleashes significant gains when a state-of-the-art generative model is evaluated over real-world trajectories.
2024
European Conference on Computer Vision Workshop
Milan
29/09/2024
Computer Vision – ECCV 2024
Aleš Leonardis
15629
15
30
9783031917660
http://arxiv.org/abs/2412.18038v1
Computer Science - Computer Vision and Pattern Recognition; Computer Science - Computer Vision and Pattern Recognition; Computer Science - Artificial Intelligence
Mirko Zaffaroni; Federico Signoretta; Marco Grangetto; Attilio Fiandrotti
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2318/2045030
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