CARPAL: Confidence-Aware Intent Recognition for Parallel Autonomy
- URL: http://arxiv.org/abs/2003.08003v2
- Date: Wed, 17 Mar 2021 18:05:42 GMT
- Title: CARPAL: Confidence-Aware Intent Recognition for Parallel Autonomy
- Authors: Xin Huang, Stephen G. McGill, Jonathan A. DeCastro, Luke Fletcher,
John J. Leonard, Brian C. Williams, Guy Rosman
- Abstract summary: We propose a novel multi-task intent recognition neural network that predicts not only probabilistic driver trajectories, but also utility statistics associated with the predictions for a given downstream task.
We test our online system on a realistic urban driving dataset, and demonstrate its advantage in terms of recall and fall-out metrics compared to baseline methods.
- Score: 24.358828325716427
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Predicting driver intentions is a difficult and crucial task for advanced
driver assistance systems. Traditional confidence measures on predictions often
ignore the way predicted trajectories affect downstream decisions for safe
driving. In this paper, we propose a novel multi-task intent recognition neural
network that predicts not only probabilistic driver trajectories, but also
utility statistics associated with the predictions for a given downstream task.
We establish a decision criterion for parallel autonomy that takes into account
the role of driver trajectory prediction in real-time decision making by
reasoning about estimated task-specific utility statistics. We further improve
the robustness of our system by considering uncertainties in downstream
planning tasks that may lead to unsafe decisions. We test our online system on
a realistic urban driving dataset, and demonstrate its advantage in terms of
recall and fall-out metrics compared to baseline methods, and demonstrate its
effectiveness in intervention and warning use cases.
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