MDrive: Benchmarking Closed-Loop Cooperative Driving for End-to-End Multi-agent Systems
Marco Coscoy, Zewei Zhou, Seth Z. Zhao, Henry Wei, Angela Magtoto + 7 more
TLDR
MDrive is a new closed-loop cooperative driving benchmark with 225 diverse scenarios, revealing challenges and benefits of multi-agent systems.
Key contributions
- Introduces MDrive, a closed-loop cooperative driving benchmark with 225 diverse scenarios.
- Scenarios are grounded in NHTSA pre-crash typologies and real-world V2X datasets.
- Reveals multi-agent systems generally outperform single-agent, but face perception-to-planning and negotiation challenges.
- Provides an open-source toolbox for scenario generation, Real2Sim, and human-in-the-loop simulation.
Why it matters
This paper matters because it addresses critical gaps in V2X autonomous driving evaluation by providing the first comprehensive closed-loop cooperative driving benchmark. It offers crucial insights into the real-world performance and limitations of multi-agent systems, guiding future research. The open-source tools also foster reproducible development.
Original Abstract
Vehicle-to-Everything (V2X) communication has emerged as a promising paradigm for autonomous driving, enabling connected agents to share complementary perception information and negotiate with each other to benefit the final planning. Existing V2X benchmarks, however, fall short in two ways: (i) open-loop evaluations fail to capture the inherently closed-loop nature of driving, leading to evaluation gaps, and (ii) current closed-loop evaluations lack behavioral and interactive diversity to reflect real-world driving. Thus, it is still unclear the extent of benefits of multi-agent systems for closed-loop driving. In this paper, we introduce MDrive, a closed-loop cooperative driving benchmark comprising 225 scenarios grounded in both NHTSA pre-crash typologies and real-world V2X datasets. Our benchmark results demonstrate that multi-agent systems are generally better than single-agent counterparts. However, current multi-agent systems still face two important challenges: (i) perception sharing enhances perceptions, but doesn't always translate to better planning; (ii) negotiation improves planning performance but harms it in complex and dense traffic scenarios. MDrive further provides an open-source toolbox for scenario generation, Real2Sim conversion, and human-in-the-loop simulation. Together, MDrive establishes a reproducible foundation for evaluating and improving the generalization and robustness of cooperative driving systems.
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