首页> 外文期刊>Sensors >SemanticDepth: Fusing Semantic Segmentation and Monocular Depth Estimation for Enabling Autonomous Driving in Roads without Lane Lines
【24h】

SemanticDepth: Fusing Semantic Segmentation and Monocular Depth Estimation for Enabling Autonomous Driving in Roads without Lane Lines

机译:语义图:融合语义分割和单眼深度估计,使自动驾驶在没有车道线路的道路上

获取原文
           

摘要

Typically, lane departure warning systems rely on lane lines being present on the road. However, in many scenarios, e.g., secondary roads or some streets in cities, lane lines are either not present or not sufficiently well signaled. In this work, we present a vision-based method to locate a vehicle within the road when no lane lines are present using only RGB images as input. To this end, we propose to fuse together the outputs of a semantic segmentation and a monocular depth estimation architecture to reconstruct locally a semantic 3D point cloud of the viewed scene. We only retain points belonging to the road and, additionally, to any kind of fences or walls that might be present right at the sides of the road. We then compute the width of the road at a certain point on the planned trajectory and, additionally, what we denote as the fence-to-fence distance. Our system is suited to any kind of motoring scenario and is especially useful when lane lines are not present on the road or do not signal the path correctly. The additional fence-to-fence distance computation is complementary to the road’s width estimation. We quantitatively test our method on a set of images featuring streets of the city of Munich that contain a road-fence structure, so as to compare our two proposed variants, namely the road’s width and the fence-to-fence distance computation. In addition, we also validate our system qualitatively on the Stuttgart sequence of the publicly available Cityscapes dataset, where no fences or walls are present at the sides of the road, thus demonstrating that our system can be deployed in a standard city-like environment. For the benefit of the community, we make our software open source.
机译:通常,车道出发警告系统依赖于在道路上存在的车道线。然而,在许多情景中,例如,城市中的次要道路或某些街道,车道线不存在或不充分发信号通知。在这项工作中,当使用仅使用RGB图像作为输入时没有车道线存在时,我们介绍基于视觉的方法来定位道路内的车辆。为此,我们建议将语义分割和单眼深度估计架构的输出融合在一起,以便在本地地重建观看场景的语义3D点云。我们只保留属于道路的点,另外,任何可能在道路侧面存在的任何类型的围栏或墙壁。然后,我们将道路的宽度计算在计划的轨迹上的某个点,并且另外,我们表示为围栏距离的距离。我们的系统适用于任何类型的电动方案,当道路上不存在时尤其有用,或者没有正确发信号通知路径。附加的围栏距离计算与道路宽度估计互补。我们定量测试我们的方法,这些图像在慕尼黑市的街道上含有道路围栏结构,以比较我们两个提出的变体,即道路的宽度和围栏距离计算。此外,我们还在公开的城市景观数据集的斯图加特序列上定性地验证了我们的系统,在路边没有围栏或墙壁存在,从而证明我们的系统可以部署在标准的城市类似的环境中。为社区的利益,我们制作软件开源。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号