MIXSIM: A Hierarchical Framework for Mixed Reality Traffic Simulation

Simon Suo, K. Wong, Justin Xu, James Tu, Alexander Cui, S. Casas, R. Urtasun
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引用次数: 5

Abstract

The prevailing way to test a self-driving vehicle (SDV) in simulation involves non-reactive open-loop replay of real world scenarios. However, in order to safely deploy SDVs to the real world, we need to evaluate them in closed-loop. Towards this goal, we propose to leverage the wealth of interesting scenarios captured in the real world and make them reactive and controllable to enable closed-loop SDV evaluation in what-if situations. In particular, we present MIXSIM, a hierarchical framework for mixed reality traffic simulation. MIXSIM explicitly models agent goals as routes along the road network and learns a reactive route-conditional policy. By inferring each agent's route from the original scenario, MIXSIM can reactively re-simulate the scenario and enable testing different autonomy systems under the same conditions. Furthermore, by varying each agent's route, we can expand the scope of testing to what-if situations with realistic variations in agent behaviors or even safety critical interactions. Our experiments show that MIXSIM can serve as a realistic, reactive, and controllable digital twin of real world scenarios. For more information, please visit the project website: https://waabi.ai/research/mixsim/
MIXSIM:混合现实交通仿真的分层框架
在模拟中测试自动驾驶汽车(SDV)的普遍方法是对真实世界场景进行无反应开环重放。然而,为了将sdv安全地部署到现实世界中,我们需要在闭环中对它们进行评估。为了实现这一目标,我们建议利用在现实世界中捕获的丰富有趣的场景,使它们具有反应性和可控性,从而在假设情况下实现闭环SDV评估。特别地,我们提出MIXSIM,一个用于混合现实交通模拟的分层框架。MIXSIM显式地将代理目标建模为道路网络中的路线,并学习响应式路线条件策略。MIXSIM通过从原始场景推断每个agent的路由,可以反应性地重新模拟场景,并在相同条件下测试不同的自治系统。此外,通过改变每个代理的路径,我们可以将测试范围扩展到具有代理行为甚至安全关键交互的实际变化的假设情况。我们的实验表明,MIXSIM可以作为现实世界场景的逼真、反应性和可控的数字孪生体。更多信息,请访问项目网站:https://waabi.ai/research/mixsim/
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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