View Vertically: A Hierarchical Network for Trajectory Prediction via
Fourier Spectrums
- URL: http://arxiv.org/abs/2110.07288v1
- Date: Thu, 14 Oct 2021 11:48:31 GMT
- Title: View Vertically: A Hierarchical Network for Trajectory Prediction via
Fourier Spectrums
- Authors: Conghao Wong and Beihao Xia and Ziming Hong and Qinmu Peng and Xinge
You
- Abstract summary: Learning to understand and predict future motions or behaviors for agents like humans and robots are critical to various autonomous platforms.
We propose the Transformer-based V model, which predicts agents' trajectories with spectrums in the keypoints and interactions levels respectively.
Experimental results show that V outperforms most of current state-of-the-art methods on ETH-UCY and SDD trajectories dataset.
- Score: 8.065451321690011
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Learning to understand and predict future motions or behaviors for agents
like humans and robots are critical to various autonomous platforms, such as
behavior analysis, robot navigation, and self-driving cars. Intrinsic factors
such as agents' diversified personalities and decision-making styles bring rich
and diverse changes and multi-modal characteristics to their future plannings.
Besides, the extrinsic interactive factors have also brought rich and varied
changes to their trajectories. Previous methods mostly treat trajectories as
time sequences, and reach great prediction performance. In this work, we try to
focus on agents' trajectories in another view, i.e., the Fourier spectrums, to
explore their future behavior rules in a novel hierarchical way. We propose the
Transformer-based V model, which concatenates two continuous keypoints
estimation and spectrum interpolation sub-networks, to model and predict
agents' trajectories with spectrums in the keypoints and interactions levels
respectively. Experimental results show that V outperforms most of current
state-of-the-art methods on ETH-UCY and SDD trajectories dataset for about 15\%
quantitative improvements, and performs better qualitative results.
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