Towards learning-based planning:The nuPlan benchmark for real-world
autonomous driving
- URL: http://arxiv.org/abs/2403.04133v1
- Date: Thu, 7 Mar 2024 01:24:59 GMT
- Title: Towards learning-based planning:The nuPlan benchmark for real-world
autonomous driving
- Authors: Napat Karnchanachari, Dimitris Geromichalos, Kok Seang Tan, Nanxiang
Li, Christopher Eriksen, Shakiba Yaghoubi, Noushin Mehdipour, Gianmarco
Bernasconi, Whye Kit Fong, Yiluan Guo, Holger Caesar
- Abstract summary: nuPlan is the world's first real-world autonomous driving dataset and benchmark.
The benchmark is designed to test the ability of ML-based planners to handle diverse driving situations.
We present a detailed analysis of numerous baselines and investigate gaps between ML-based and traditional methods.
- Score: 2.6855803445552233
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Machine Learning (ML) has replaced traditional handcrafted methods for
perception and prediction in autonomous vehicles. Yet for the equally important
planning task, the adoption of ML-based techniques is slow. We present nuPlan,
the world's first real-world autonomous driving dataset, and benchmark. The
benchmark is designed to test the ability of ML-based planners to handle
diverse driving situations and to make safe and efficient decisions. To that
end, we introduce a new large-scale dataset that consists of 1282 hours of
diverse driving scenarios from 4 cities (Las Vegas, Boston, Pittsburgh, and
Singapore) and includes high-quality auto-labeled object tracks and traffic
light data. We exhaustively mine and taxonomize common and rare driving
scenarios which are used during evaluation to get fine-grained insights into
the performance and characteristics of a planner. Beyond the dataset, we
provide a simulation and evaluation framework that enables a planner's actions
to be simulated in closed-loop to account for interactions with other traffic
participants. We present a detailed analysis of numerous baselines and
investigate gaps between ML-based and traditional methods. Find the nuPlan
dataset and code at nuplan.org.
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