基于人工智能系统的运行时安全监测框架:自动驾驶案例

Mohd Hafeez Osman, Stefan Kugele, S. Shafaei
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引用次数: 4

摘要

基于人工智能技术的智能系统正在增加,并且最近在汽车领域被接受。在汽车厂商提供全自动驾驶汽车的竞争中,人们认为人工智能将深刻影响未来汽车的电动和电子架构。然而,尽管这些系统提供了高度先进的功能,但由于基于人工智能的系统可能产生不确定的输出和行为,安全风险增加。在本文中,我们为专注于自动驾驶功能的基于人工智能的智能系统设计了一个运行时安全监测框架。具体来说,本文描述了(1)安全监测框架的特点;(ii)安全监测框架本身,以及(iii)我们开发了一个原型并实现了两个关键驾驶功能的框架:车道检测和物体检测。通过对原型控制环境的框架实现,我们展示了该框架在实际环境中的可能性。最后,我们讨论了开发安全监测框架所使用的技术,并描述了遇到的挑战。
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Run-Time Safety Monitoring Framework for AI-Based Systems: Automated Driving Cases
Intelligent systems based on artificial intelligence techniques are increasing and are recently being accepted in the automotive domain. In the competition of automobile makers to provide fully automated vehicles, it is perceived that artificial intelligence will profoundly influence the automotive electric and electronic architecture in the future. However, while such systems provide highly advanced functions, safety risk increases as AI-based systems may produce uncertain output and behaviour. In this paper, we devise a run-time safety monitoring framework for AI-based intelligence systems focusing on autonomous driving functions. In detail, this paper describes (i) the characteristics of a safety monitoring framework; (ii) the safety monitoring framework itself, and (iii) we develop a prototype and implement the framework for two critical driving functions: Lane detection and object detection. Through an implementation of the framework to a prototypic control environment, we show the possibility of this framework in the real context. Finally, we discuss the techniques used in developing the safety monitoring framework and describes the encountered challenges.
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