MGF: Mixed Gaussian Flow for Diverse Trajectory Prediction
To predict future trajectories, the normalizing flow with a standard Gaussian prior suffers from weak diversity. The ineffectiveness comes from the conflict between the fact of asymmetric and multi-modal distribution of likely outcomes and symmetric and single-modal original distribution and supervi...
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Zusammenfassung: | To predict future trajectories, the normalizing flow with a standard Gaussian
prior suffers from weak diversity. The ineffectiveness comes from the conflict
between the fact of asymmetric and multi-modal distribution of likely outcomes
and symmetric and single-modal original distribution and supervision losses.
Instead, we propose constructing a mixed Gaussian prior for a normalizing flow
model for trajectory prediction. The prior is constructed by analyzing the
trajectory patterns in the training samples without requiring extra annotations
while showing better expressiveness and being multi-modal and asymmetric.
Besides diversity, it also provides better controllability for probabilistic
trajectory generation. We name our method Mixed Gaussian Flow (MGF). It
achieves state-of-the-art performance in the evaluation of both trajectory
alignment and diversity on the popular UCY/ETH and SDD datasets. Code is
available at https://github.com/mulplue/MGF. |
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DOI: | 10.48550/arxiv.2402.12238 |