Planning with Occluded Traffic Agents using Bi-Level Variational
Occlusion Models
- URL: http://arxiv.org/abs/2210.14584v1
- Date: Wed, 26 Oct 2022 09:39:31 GMT
- Title: Planning with Occluded Traffic Agents using Bi-Level Variational
Occlusion Models
- Authors: Filippos Christianos, Peter Karkus, Boris Ivanovic, Stefano V.
Albrecht, Marco Pavone
- Abstract summary: Reasoning with occluded traffic agents is a significant open challenge for planning for autonomous vehicles.
Recent deep learning models have shown impressive results for predicting occluded agents based on the behaviour of nearby visible agents.
We propose Bi-level Variational Occlusion Models (BiVO), a two-step generative model that first predicts likely locations of occluded agents, and then generates likely trajectories for the occluded agents.
- Score: 37.09462631862042
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Reasoning with occluded traffic agents is a significant open challenge for
planning for autonomous vehicles. Recent deep learning models have shown
impressive results for predicting occluded agents based on the behaviour of
nearby visible agents; however, as we show in experiments, these models are
difficult to integrate into downstream planning. To this end, we propose
Bi-level Variational Occlusion Models (BiVO), a two-step generative model that
first predicts likely locations of occluded agents, and then generates likely
trajectories for the occluded agents. In contrast to existing methods, BiVO
outputs a trajectory distribution which can then be sampled from and integrated
into standard downstream planning. We evaluate the method in closed-loop replay
simulation using the real-world nuScenes dataset. Our results suggest that BiVO
can successfully learn to predict occluded agent trajectories, and these
predictions lead to better subsequent motion plans in critical scenarios.
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