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  4. Safety Assurance of Machine Learning for Perception Functions
 
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June 2022
Book Article
Title

Safety Assurance of Machine Learning for Perception Functions

Abstract
The latest generation of safety standards applicable to automated driving systems require both qualitative and quantitative safety acceptance criteria to be defined and argued. At the same time, the use of machine learning (ML) functions is increasingly seen as a prerequisite to achieving the necessary levels of perception performance in the complex operating environments of these functions. This inevitably leads to the question of which supporting evidence must be presented to demonstrate the safety of ML-based automated driving systems. This chapter discusses the challenge of deriving suitable acceptance criteria for the ML function and describes how such evidence can be structured in order to support a convincing safety assurance case for the system. In particular, we show how a combination of methods can be used to estimate the overall machine learning performance, as well as to evaluate and reduce the impact of ML-specific insufficiencies, both during design and operation.
Author(s)
Burton, Simon  
Fraunhofer-Institut für Kognitive Systeme IKS  
Hellert, Christian
Contintental AG
Hüger, Fabian
Volkswagen AG  
Mock, Michael  
Fraunhofer-Institut für Intelligente Analyse- und Informationssysteme IAIS  
Rohatschek, Andreas
Robert Bosch GmbH
Mainwork
Deep Neural Networks and Data for Automated Driving  
Open Access
DOI
10.1007/978-3-031-01233-4_12
Language
English
Fraunhofer-Institut für Kognitive Systeme IKS  
Fraunhofer-Institut für Intelligente Analyse- und Informationssysteme IAIS  
Fraunhofer Group
Fraunhofer-Verbund IUK-Technologie
Keyword(s)
  • safety assurance

  • Machine Learning

  • ML

  • safety

  • acceptance

  • automated driving

  • automated driving system

  • ADS

  • systems safety engineering

  • risk avoidance

  • safety-critical system

  • semantic gap

  • assurance case

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