Given the current point-to-point navigation capabilities of autonomous vehicles, researchers are looking into complex service requests that require the vehicles to visit multiple points of interest. In this paper, we develop a layered planning framework, called GLAD, for complex service requests in autonomous urban driving. There are three layers for service-level, behavior-level, and motion-level planning. The layered framework is unique in its tight coupling, where the different layers communicate user preferences, safety estimates, and motion costs for system optimization. GLAD is visually grounded by perceptual learning from a dataset of 13.8k instances collected from driving behaviors. GLAD enables autonomous vehicles to efficiently and safely fulfill complex service requests. Experimental results from abstract and full simulation show that our system outperforms a few competitive baselines from the literature.
翻译:鉴于目前自治车辆的点对点导航能力,研究人员正在研究复杂的服务请求,要求车辆访问多个感兴趣的点。在本文中,我们为自治城市驾驶的复杂服务请求制定了称为GLAD的分层规划框架。服务级别、行为级别和运动级别规划分为三层。分层框架的独特之处在于其紧密的组合,不同层次的用户偏好、安全估计以及系统优化的移动成本。GLAD通过从驾驶行为中收集的13.8k例数据集的感知性学习,以视觉为基础。GLAD使自治车辆能够高效、安全地满足复杂的服务请求。抽象和全面模拟的实验结果表明,我们的系统比文献中的少数竞争性基线要强。