Software-Based Fault-Detection Technique for Object Tracking in Autonomous Vehicles

Alessio Medaglini, S. Bartolini, Gianluca Mandò, E. Quiñones, Sara Royuela
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Abstract

Autonomous vehicles are nowadays gaining popularity in many different sectors, from automotive to aviation, and find application in increasingly complex and strategic contexts. In this domain, Obstacle Detection and Avoidance Systems (ODAS) are crucial and, since they are safety-critical systems, they must employ fault-detection and management techniques to maintain correct behavior. One of the most popular techniques to obtain a reliable system is the use of redundancy, both at the hardware and at the software levels. With the objective of improving fault-detection while producing little impact on the programmability of the system, this paper introduces a general and lightweight monitoring technique based on a user-directed observer design pattern, which aims at monitoring the validity of predicates over state variables of the algorithms in execution. This can increase the fault-detection capability and even anticipate the detection time of some faults that would be caught by replication only at later times. Results are evaluated on a real-world use-case from the railway domain, and show how the proposed fault-detection mechanism can increase the overall reliability of the system by up to 24.4% compared to replication alone in case of crowded scenarios over the entire tracking process, and up to 43.9% in specific phases.
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基于软件的自动驾驶车辆目标跟踪故障检测技术
如今,自动驾驶汽车在许多不同的领域越来越受欢迎,从汽车到航空,并在日益复杂和战略的环境中得到应用。在这个领域,障碍物检测和避免系统(ODAS)是至关重要的,因为它们是安全关键系统,它们必须采用故障检测和管理技术来保持正确的行为。获得可靠系统的最流行的技术之一是在硬件和软件级别上使用冗余。为了提高故障检测能力,同时对系统的可编程性产生较小的影响,本文介绍了一种基于用户导向观测器设计模式的通用轻量级监控技术,该技术旨在监控算法执行过程中状态变量上谓词的有效性。这可以提高故障检测能力,甚至可以预测一些故障的检测时间,这些故障只有在以后的时间才会被复制捕获。结果在来自铁路领域的真实用例上进行了评估,并显示了所提出的故障检测机制如何在整个跟踪过程中,与单独复制相比,在拥挤的场景下,将系统的整体可靠性提高24.4%,在特定阶段提高43.9%。
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