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MVLidarNet: Real-Time Multi-Class Scene Understanding for Autonomous Driving Using Multiple Views

机译:MVLIDARNET:使用多视图的自主驾驶实时多级场景了解

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Autonomous driving requires the inference of actionable information such as detecting and classifying objects, and determining the drivable space. To this end, we present Multi-View LidarNet (MVLidarNet), a two-stage deep neural network for multi-class object detection and drivable space segmentation using multiple views of a single LiDAR point cloud. The first stage processes the point cloud projected onto a perspective view in order to semantically segment the scene. The second stage then processes the point cloud (along with semantic labels from the first stage) projected onto a bird’s eye view, to detect and classify objects. Both stages use an encoder-decoder architecture. We show that our multi-view, multi-stage, multi-class approach is able to detect and classify objects while simultaneously determining the drivable space using a single LiDAR scan as input, in challenging scenes with more than one hundred vehicles and pedestrians at a time. The system operates efficiently at 150 fps on an embedded GPU designed for a self-driving car, including a postprocessing step to maintain identities over time. We show results on both KITTI and a much larger internal dataset, thus demonstrating the method’s ability to scale by an order of magnitude.1
机译:自主驾驶需要可操作信息推动,例如检测和分类对象,并确定可驱动空间。为此,我们呈现多视图Lidarnet(MVLIDARNET),两级深度神经网络,用于使用单个LIDAR点云的多视图进行多级对象检测和可驱动的空间分割。第一阶段处理点云投射到透视图上,以便在语义上分割场景。然后,第二阶段处理点云(以及从第一阶段的语义标签)投射到鸟瞰图上,以检测和分类对象。两个阶段都使用编码器解码器架构。我们表明我们的多视图,多级,多级方法能够在同时使用单个LIDAR扫描作为输入确定可驱动空间的同时检测和分类对象,在具有超过一百个车辆和行人的具有挑战性的场景中时间。该系统在为自动驾驶汽车设计的嵌入式GPU上有效地运行了150 FPS,包括后处理的后处理步骤以随着时间的推移保持身份。我们在Kitti和更大的内部数据集上显示结果,从而展示了该方法的级别级级的能力。 1

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