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Urban Driver: Learning to Drive from Real-world Demonstrations Using Policy Gradients

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In this work we are the first to present an offline policy gradient method for learning imitative policies for complex urban driving from a large corpus of real-world demonstrations. This is achieved by building a differentiable data-driven simulator on top of perception outputs and high-fidelity HD maps of the area. It allows us to synthesize new driving experiences from existing demonstrations using mid-level representations. Using this simulator we then train a policy network in closed-loop employing policy gradients. We train our proposed method on 100 hours of expert demonstrations on urban roads and show that it learns complex driving policies that generalize well and can perform a variety of driving maneuvers. We demonstrate this in simulation as well as deploy our model to self-driving vehicles in the real-world. Our method outperforms previously demonstrated state-of-the-art for urban driving scenarios -- all this without the need for complex state perturbations or collecting additional on-policy data during training. We make code and data publicly available.

Oliver Scheel, Luca Bergamini, Maciej Wo{\l}czyk, B{\l}a\.zej Osi\'nski, Peter Ondruska• 2021

Related benchmarks

TaskDatasetResultRank
Closed-loop PlanningnuPlan 14 (val)
NR Score68.57
66
Closed-loop PlanningnuPlan 14 Hard (test)
NR50.4
64
Closed-loop PlanningnuPlan 14 (test)
NR51.83
45
PlanningnuPlan 14 Random (test)
CLS-NR0.633
40
Closed-loop PlanningnuPlan random 14 (test)
NR29.17
25
PlanningnuPlan 14 Hard (test)
CLS-NR51.5
23
PlanningnuPlan 14 (val)
CLS-NR68.57
12
PlanningnuPlan interPlanLC
CLS-R9.65
12
Closed-loop PlanningnuPlan (val14)
CA85.6
11
Motion PlanningnuPlan 14 Hard (test)
CLS-SR38.38
11
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