论文标题
我在哪里可以开车?系统方法:强大自动驾驶的深层走廊估计
Where can I drive? A System Approach: Deep Ego Corridor Estimation for Robust Automated Driving
论文作者
论文摘要
车道检测是任何自动驾驶(AD)或高级驾驶员援助系统(ADAS)的感知子结构的重要组成部分。当专注于用于自动驾驶的低成本大规模产品时,用于检测车道标记的模型驱动方法已被证明是良好的性能。最近,已经提出了数据驱动的方法,该方法主要针对可驱动的区域 /自由空间。这些方法的重点不在基于车道的驾驶上,因为这一事实是,车道概念并未完全应用于非结构化的住宅内城市环境中。因此,由于这些方案的具体要求需要所有交通参与者的清晰车道关联,因此很少用于高速公路和城市申请的可驱动区域的概念。我们认为,在城市间和高速公路场景中,基于车道的无地图驾驶仍未充分充分处理足够的鲁棒性和可用性。尤其是在挑战性的天气情况下,例如大雨,雾,低位的阳光,黑暗或水坑中的反射,对车道标记的无地图检测会大大减少或完全失败。我们看到,在更高的基于车道的驾驶应用程序中应用专门设计的数据驱动空间方法用于高速公路和城市间使用。因此,我们建议使用深度学习方法在像素级别上特别对自我车道的可驾驶的走廊进行分类。我们的方法在计算效率上保持效率,只有66万参数允许其在大规模产品中的应用。因此,我们能够轻松地集成到测试工具的在线广告系统中。与最先进的模型驱动的方法相比,我们在挑战性条件下在挑战性条件下的表现。
Lane detection is an essential part of the perception sub-architecture of any automated driving (AD) or advanced driver assistance system (ADAS). When focusing on low-cost, large scale products for automated driving, model-driven approaches for the detection of lane markings have proven good performance. More recently, data-driven approaches have been proposed that target the drivable area / freespace mainly in inner-city applications. Focus of these approaches is less on lane-based driving due to the fact that the lane concept does not fully apply in unstructured, residential inner-city environments. So-far the concept of drivable area is seldom used for highway and inter-urban applications due to the specific requirements of these scenarios that require clear lane associations of all traffic participants. We believe that lane-based, mapless driving in inter-urban and highway scenarios is still not fully handled with sufficient robustness and availability. Especially for challenging weather situations such as heavy rain, fog, low-standing sun, darkness or reflections in puddles, the mapless detection of lane markings decreases significantly or completely fails. We see potential in applying specifically designed data-driven freespace approaches in more lane-based driving applications for highways and inter-urban use. Therefore, we propose to classify specifically a drivable corridor of the ego lane on pixel level with a deep learning approach. Our approach is kept computationally efficient with only 0.66 million parameters allowing its application in large scale products. Thus, we were able to easily integrate into an online AD system of a test vehicle. We demonstrate the performance of our approach under challenging conditions qualitatively and quantitatively in comparison to a state-of-the-art model-driven approach.