利用基于估计的预测显示增强自动驾驶汽车的遥控操作功能

IF 14 1区 工程技术 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE IEEE Transactions on Intelligent Vehicles Pub Date : 2024-02-07 DOI:10.1109/TIV.2024.3360410
Gaurav Sharma;Rajesh Rajamani
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引用次数: 0

摘要

遥控操作越来越多地用于送货机器人的操作,并开始用于某些自主车辆干预应用。本文探讨了由于远程车辆和远程操作站之间的无线通信延迟而导致的自主车辆远程操作挑战。摄像头视频图像和激光雷达数据在无线传输过程中通常会出现延迟,但这对于向远程操作员正确显示远程车辆的实时道路环境至关重要。本项目实验收集的数据显示,实时显示延迟 0.5 秒会给远程操作员控制远程车辆带来极大困难。本文通过使用预测显示(PD)系统来解决这一问题,该系统可在等待实际摄像头图像的同时提供远程车辆环境的中间更新。预测显示系统利用基于模型的扩展卡尔曼滤波器计算出的自我车辆和道路上其他车辆的估计位置。本文提出的一个重要结果是,车辆运动模型需要是惯性模型而不是相对模型,因此跟踪其他车辆需要对自我车辆本身进行精确定位。本文使用 5 名人类远程操作员进行了一项实验研究,以比较有无预测显示的远程操作性能。由于摄像机图像存在 0.5 秒的时间延迟,因此无法控制车辆在弯曲道路上保持在车道上行驶,但使用所开发的预测显示系统可以实现安全的远程车辆控制,其准确性几乎与无延迟情况相同。
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Teleoperation Enhancement for Autonomous Vehicles Using Estimation Based Predictive Display
Teleoperation is increasingly used in the operation of delivery robots and is beginning to be utilized for certain autonomous vehicle intervention applications. This paper addresses the challenges in teleoperation of an autonomous vehicle due to latencies in wireless communication between the remote vehicle and the teleoperator station. Camera video images and Lidar data are typically delayed during wireless transmission but are critical for proper display of the remote vehicle's real-time road environment to the teleoperator. Data collected with experiments in this project show that a 0.5 second delay in real-time display makes it extremely difficult for the teleoperator to control the remote vehicle. This problem is addressed in the paper by using a predictive display (PD) system which provides intermediate updates of the remote vehicle's environment while waiting for actual camera images. The predictive display utilizes estimated positions of the ego vehicle and of other vehicles on the road computed using model-based extended Kalman filters. A crucial result presented in the paper is that vehicle motion models need to be inertial rather than relative and so tracking of other vehicles requires accurate localization of the ego vehicle itself. An experimental study using 5 human teleoperators is conducted to compare teleoperation performance with and without predictive display. A 0.5 second time-delay in camera images makes it impossible to control the vehicle to stay in its lane on curved roads, but the use of the developed predictive display system enables safe remote vehicle control with almost as accurate a performance as the delay-free case.
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来源期刊
IEEE Transactions on Intelligent Vehicles
IEEE Transactions on Intelligent Vehicles Mathematics-Control and Optimization
CiteScore
12.10
自引率
13.40%
发文量
177
期刊介绍: The IEEE Transactions on Intelligent Vehicles (T-IV) is a premier platform for publishing peer-reviewed articles that present innovative research concepts, application results, significant theoretical findings, and application case studies in the field of intelligent vehicles. With a particular emphasis on automated vehicles within roadway environments, T-IV aims to raise awareness of pressing research and application challenges. Our focus is on providing critical information to the intelligent vehicle community, serving as a dissemination vehicle for IEEE ITS Society members and others interested in learning about the state-of-the-art developments and progress in research and applications related to intelligent vehicles. Join us in advancing knowledge and innovation in this dynamic field.
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