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MetaUrban: An Embodied AI Simulation Platform for Urban Micromobility

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arxiv 2407.08725 v2 pith:XWJGCKK2 submitted 2024-07-11 cs.CV cs.AIcs.RO

MetaUrban: An Embodied AI Simulation Platform for Urban Micromobility

classification cs.CV cs.AIcs.RO
keywords urbanmetaurbanmicromobilitymobilecompositionalembodiedlearningpublic
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Public urban spaces like streetscapes and plazas serve residents and accommodate social life in all its vibrant variations. Recent advances in Robotics and Embodied AI make public urban spaces no longer exclusive to humans. Food delivery bots and electric wheelchairs have started sharing sidewalks with pedestrians, while robot dogs and humanoids have recently emerged in the street. Micromobility enabled by AI for short-distance travel in public urban spaces plays a crucial component in the future transportation system. Ensuring the generalizability and safety of AI models maneuvering mobile machines is essential. In this work, we present MetaUrban, a compositional simulation platform for the AI-driven urban micromobility research. MetaUrban can construct an infinite number of interactive urban scenes from compositional elements, covering a vast array of ground plans, object placements, pedestrians, vulnerable road users, and other mobile agents' appearances and dynamics. We design point navigation and social navigation tasks as the pilot study using MetaUrban for urban micromobility research and establish various baselines of Reinforcement Learning and Imitation Learning. We conduct extensive evaluation across mobile machines, demonstrating that heterogeneous mechanical structures significantly influence the learning and execution of AI policies. We perform a thorough ablation study, showing that the compositional nature of the simulated environments can substantially improve the generalizability and safety of the trained mobile agents. MetaUrban will be made publicly available to provide research opportunities and foster safe and trustworthy embodied AI and micromobility in cities. The code and dataset will be publicly available.

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Cited by 2 Pith papers

Reviewed papers in the Pith corpus that reference this work. Sorted by Pith novelty score.

  1. SimWorld Studio: Automatic Environment Generation with Evolving Coding Agent for Embodied Agent Learning

    cs.AI 2026-05 unverdicted novelty 8.0

    SimWorld Studio uses a self-evolving coding agent to generate adaptive 3D environments that improve embodied agent performance, with reported gains of 18 points over fixed environments in navigation tasks.

  2. SimWorld Studio: Automatic Environment Generation with Evolving Coding Agent for Embodied Agent Learning

    cs.AI 2026-05 accept novelty 8.0

    SimWorld Studio deploys an evolving coding agent to create adaptive 3D environments that co-evolve with embodied learners, delivering 18-point success-rate gains over fixed environments in navigation benchmarks.