Real-Time 3-D Segmentation on An Autonomous Embedded System: using Point Cloud and Camera

Dewant Katare, M. El-Sharkawy
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引用次数: 4

Abstract

Present day autonomous vehicle relies on several sensor technologies for it’s autonomous functionality. The sensors based on their type and mounted-location on the vehicle, can be categorized as: line of sight and non-line of sight sensors and are responsible for the different level of autonomy. These line of sight sensors are used for the execution of actions related to localization, object detection and the complete environment understanding. The surrounding or environment understanding for an autonomous vehicle can be achieved by segmentation. Several traditional and deep learning related techniques providing semantic segmentation for an input from camera is already available, however with the advancement in the computing processor, the progression is on developing the deep learning application replacing traditional methods. This paper presents an approach to combine the input of camera and lidar for semantic segmentation purpose. The proposed model for outdoor scene segmentation is based on the frustum pointnet, and ResNet which utilizes the 3d point cloud and camera input for the 3d bounding box prediction across the moving and non-moving object and thus finally recognizing and understanding the scenario at the point-cloud or pixel level. For real time application the model is deployed on the RTMaps framework with Bluebox (an embedded platform for autonomous vehicle). The proposed architecture is trained with the CITYScpaes and the KITTI dataset.
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基于点云和相机的自主嵌入式系统实时三维分割
目前的自动驾驶汽车依赖于几种传感器技术来实现其自动驾驶功能。传感器根据其类型和安装在车辆上的位置,可以分为:视线传感器和非视线传感器,并负责不同程度的自主。这些视线传感器用于执行与定位、目标检测和完整环境理解相关的动作。自动驾驶汽车对周围环境的理解可以通过分割来实现。一些传统的和深度学习相关的技术已经可以为来自相机的输入提供语义分割,但是随着计算处理器的进步,深度学习应用的发展正在取代传统方法。本文提出了一种结合摄像头和激光雷达输入的语义分割方法。本文提出的室外场景分割模型基于截点网(frustum pointnet),利用三维点云和相机输入对运动和非运动物体进行三维边界框预测,最终在点云或像素级对场景进行识别和理解。为了实现实时应用,该模型被部署在RTMaps框架上,并与Bluebox(一个用于自动驾驶汽车的嵌入式平台)结合使用。所提出的架构使用CITYScpaes和KITTI数据集进行训练。
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