For autonomous vehicles to safely share the road with human drivers, autonomous vehicles must abide by specific "road rules" that human drivers have agreed to follow. "Road rules" include rules that drivers are required to follow by law -- such as the requirement that vehicles stop at red lights -- as well as more subtle social rules -- such as the implicit designation of fast lanes on the highway. In this paper, we provide empirical evidence that suggests that -- instead of hard-coding road rules into self-driving algorithms -- a scalable alternative may be to design multi-agent environments in which road rules emerge as optimal solutions to the problem of maximizing traffic flow. We analyze what ingredients in driving environments cause the emergence of these road rules and find that two crucial factors are noisy perception and agents' spatial density. We provide qualitative and quantitative evidence of the emergence of seven social driving behaviors, ranging from obeying traffic signals to following lanes, all of which emerge from training agents to drive quickly to destinations without colliding. Our results add empirical support for the social road rules that countries worldwide have agreed on for safe, efficient driving.
翻译:为了使自治车辆能够安全地与人驾驶员分享道路,自治车辆必须遵守人类驾驶员同意遵循的具体“道路规则”。“道路规则”包括司机必须依法遵守的规则,例如要求车辆在红色灯光下停车,以及更微妙的社会规则,例如在高速公路上暗地指定快车道等。在本文件中,我们提供了经验证据,表明——不是硬码道路规则,而是自我驾驶算法——一个可扩展的替代办法可能是设计多试剂环境,在这种环境中,公路规则成为最大限度减少交通流动问题的最佳解决办法。我们分析了驾驶环境中哪些因素导致了这些道路规则的出现,并发现两个关键因素是噪音感知和代理人的空间密度。我们提供了从服从交通信号到沿道的七种社会驾驶行为的定性和定量证据,从遵守交通信号到沿道,所有这一切都从培训人员到快速开车到目的地而不会发生碰撞。我们的成果增加了对世界各国商定的安全、高效驾驶的社会道路规则的经验支持。