基于视觉的基础设施自治定位

Deepika Ravipati, Kenny Chour, Abhishek Nayak, T. Marr, Sheelabhadra Dey, Alvika Gautam, S. Rathinam, Swaminathan Gopalswamy
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引用次数: 5

摘要

基础设施自主(IEA)是自动驾驶汽车研究的新范式,旨在通过将传感和定位的核心功能转移到基础设施上,实现分布式智能架构。这种模式在设计可扩展的系统方面也很有前景,这些系统可以使自动驾驶汽车在高速公路上行驶。本文详细描述了IEA的实验实现以及在这种设置下设计的车辆定位技术。讨论了一种可靠的摄像机标定技术,然后讨论了一种将二维图像坐标转换为三维世界坐标的技术。在本研究中,从车载传感器(如GPS/IMU)接收定位信息;(2)从深度学习中获得的定位车辆位置数据,以及实时摄像头馈送的2D到3D坐标转换;(3)基础设施摄像头的车道检测数据。利用扩展卡尔曼滤波器(EKF)将这些数据融合在一起,以获得50 Hz时车辆位置的可靠估计。然后使用该位置信息来控制车辆,使其沿着规定的路径行驶。大量的仿真和实验结果也证实了该方法的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Vision Based Localization for Infrastructure Enabled Autonomy
Infrastructure Enabled Autonomy (IEA) is a new paradigm in autonomous vehicles research that aims at distributed intelligence architecture by transferring the core functionalities of sensing and localization to infrastructure. This paradigm is also promising in designing scalable systems that enable autonomous car platooning on highways. This paper gives a detailed description about the experimental realization of IEA and techniques devised to localize a vehicle in such a setup. A reliable camera calibration technique for such an experimental setup is discussed, followed by a technique to transform 2D image coordinates to 3D world coordinates. In this research, localization information is received from on-board vehicle sensors like GPS/IMU, and (2) localized vehicle position data derived from deep learning, and 2D to 3D coordinate transformations on the real-time camera feeds and (3) lane detection data from infrastructure cameras. This data is fused together utilizing an Extended Kalman Filter (EKF) to obtain reliable estimates of the position of the vehicle at 50 Hz. This position information is then used to control the vehicle with an objective of following a prescribed path. Extensive simulation and experimental results are also presented to corroborate the performance of the proposed approach.
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