论文标题
自动驾驶的计算系统:最新和挑战
Computing Systems for Autonomous Driving: State-of-the-Art and Challenges
论文作者
论文摘要
计算技术的最新扩散(例如传感器,计算机视觉,机器学习和硬件加速度)以及通信机制的广泛部署(例如DSRC,C-V2X,5G)推动了自动驾驶的地平线,从而使自动驾驶自动化,从而可以自动化基于多个传感器的汽车的决策和控制。这些自主系统成功的关键是实时做出可靠的决定。但是,不时由早期部署的自动驾驶汽车造成的事故和死亡。实际的交通环境太复杂了,无法理解和处理当前的自动驾驶计算系统。在本文中,我们介绍了用于自动驾驶的最先进的计算系统,包括七个性能指标和九种关键技术,然后面临十二个挑战以实现自主驾驶。我们希望本文能够从计算和汽车社区中引起关注,并朝着这一方向激发更多的研究。
The recent proliferation of computing technologies (e.g., sensors, computer vision, machine learning, and hardware acceleration), and the broad deployment of communication mechanisms (e.g., DSRC, C-V2X, 5G) have pushed the horizon of autonomous driving, which automates the decision and control of vehicles by leveraging the perception results based on multiple sensors. The key to the success of these autonomous systems is making a reliable decision in real-time fashion. However, accidents and fatalities caused by early deployed autonomous vehicles arise from time to time. The real traffic environment is too complicated for current autonomous driving computing systems to understand and handle. In this paper, we present state-of-the-art computing systems for autonomous driving, including seven performance metrics and nine key technologies, followed by twelve challenges to realize autonomous driving. We hope this paper will gain attention from both the computing and automotive communities and inspire more research in this direction.