OpenStreetMaps (OSM) is currently studied as the environment representation for autonomous navigation. It provides advantages such as global consistency, a heavy-less map construction process, and a wide variety of road information publicly available. However, the location of this information is usually not very local accurate. In this paper, we present a complete autonomous navigation pipeline using OSM information as environment representation for global planning. To avoid the flaw of local low-accuracy, we offer the novel LiDAR-based Naive-Valley-Path (NVP) method that exploits the concept of "valley" areas to infer the local path always furthest from obstacles. This behavior allows navigation always through the center of trafficable areas following the roads' shape independently of OSM error. Furthermore, NVP is a naive method that is highly sample-time-efficient. This time efficiency also enables obstacle avoidance, even for dynamic objects. We demonstrate the system's robustness in our research platform BLUE, driving autonomously across the University of Alicante Scientific Park for more than 20 km with 0.24 meters of average error against the road's center with a 19.8 ms of average sample time. Our vehicle avoids static obstacles in the road and even dynamic ones, such as vehicles and pedestrians.
翻译:开放街道地图(OSM)目前是作为自主航行的环境代表机构而研究的,它提供了全球一致性、无重地图建设过程和各种公开的道路信息等优势。然而,这种信息的位置通常不是非常准确的。在本文中,我们提出了一个完全自主的导航管道,使用OSM信息作为环境代表全球规划。为了避免当地低精确度的缺陷,我们提供了创新的LIDAR-Naive-Valley-Path(NVP)方法,该方法利用“Valley”地区的概念来推断当地路径总是距离障碍最远的。这种行为总是允许在道路形状之后的可交通地区中心进行导航,而不受OSM错误的影响。此外,NVP是一种很天真的方法,它使用OSM信息作为全球规划的环境代表。这个时间效率也有利于避免障碍,即使是动态物体。我们展示了该系统在我们的研究平台BLUE(BLUE)中的坚固性,它以20多公里的速度驱动着Alicant科学公园,平均误差0.24米,甚至平均误差道路中心,避免了19.8米的静态车辆。