Vinod Vasudevan, Amr Abdullatif, Sohag Kabir, Felician Campean
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引用次数: 0
摘要
我们分析了适用于汽车应用的现有安全标准 ISO 26262,确定了低风险汽车应用中使用的机器学习(ML)方法的可认证性。这有助于确保基于 ML 的自动驾驶系统的安全性,赢得监管机构、认证机构和利益相关者的信任。
Certifiability Analysis of Machine Learning Systems for Low-Risk Automotive Applications
We analyze the existing safety standard, ISO 26262, for automotive applications, determining the certifiability of machine learning (ML) approaches used in low-risk automotive applications. This can help assuring the security and safety of ML-based autonomous driving systems, gaining the trust of regulators, certification agencies, and stakeholders.
期刊介绍:
Computer, the flagship publication of the IEEE Computer Society, publishes peer-reviewed articles written for and by computer researchers and practitioners representing the full spectrum of computing and information technology, from hardware to software and from emerging research to new applications. The aim is to provide more technical substance than trade magazines and more practical ideas than research journals. Computer seeks to deliver useful information for all computing professionals and students, including computer scientists, engineers, and practitioners of all levels.