Diverse Trajectory Forecasting with Determinantal Point Processes
Ye Yuan, Kris Kitani

TL;DR
This paper introduces a novel method using determinantal point processes to generate diverse and likely future trajectories for agents, improving safety in autonomous systems by capturing multiple possible outcomes.
Contribution
We propose a diversity sampling function trained with DPP-based loss to produce a set of diverse, plausible future trajectories from a generative model.
Findings
The method produces highly diverse trajectory sets in 2D and human motion data.
It outperforms baseline models in capturing multiple plausible futures.
DPP-based training effectively balances diversity and likelihood.
Abstract
The ability to forecast a set of likely yet diverse possible future behaviors of an agent (e.g., future trajectories of a pedestrian) is essential for safety-critical perception systems (e.g., autonomous vehicles). In particular, a set of possible future behaviors generated by the system must be diverse to account for all possible outcomes in order to take necessary safety precautions. It is not sufficient to maintain a set of the most likely future outcomes because the set may only contain perturbations of a single outcome. While generative models such as variational autoencoders (VAEs) have been shown to be a powerful tool for learning a distribution over future trajectories, randomly drawn samples from the learned implicit likelihood model may not be diverse -- the likelihood model is derived from the training data distribution and the samples will concentrate around the major mode…
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Taxonomy
TopicsPoint processes and geometric inequalities · Traffic and Road Safety · Transportation Planning and Optimization
