Due to their ability to efficiently process unstructured and highly dimensional input data, machine learning algorithms are being applied to perception tasks for highly automated driving functions. The consequences of failures and insu_ciencies in such algorithms are severe and a convincing assurance case that the algorithms meet certain safety requirements is therefore required. However, the task of demonstrating the performance of such algorithms is non-trivial, and as yet, no consensus has formed regarding an appropriate set of verification measures. This paper provides a framework for reasoning about the contribution of performance evidence to the assurance case for machine learning in an automated driving context and applies the evalua...
Autonomous driving is expected to bring several benefits, in particular regarding safety. This thesi...
Autonomous systems have the potential to provide great benefit to society. However, they also pose p...
Bias in machine learning is a significant problem that demands industry-wide attention, and in the c...
Due to their ability to efficiently process unstructured and highly dimensional input data, machine ...
YesThis article proposes an approach named SafeML II, which applies empirical cumulative distributio...
The application of artificial intelligence (AI) and data-driven decision-making systems in autonomou...
This open access book brings together the latest developments from industry and research on automate...
YesAssuring safety and thereby certifying is a key challenge of many kinds of Machine Learning (ML)...
This open access book brings together the latest developments from industry and research on automate...
Machine Learning components in safety-critical applications can perform some complex tasks that woul...
Context: Demonstrating high reliability and safety for safety-critical systems (SCSs) remains a hard...
During the last decade, automotive manufacturers have introduced increasingly capable driving automa...
Given the promising advances in the field of Assisted and Automated Driving, it is expected that the...
Ensuring safety is arguably one of the largest remaining challenges before wide-spread market adopti...
International audienceThe strong demand for more automated transport systems with enhanced safety, i...
Autonomous driving is expected to bring several benefits, in particular regarding safety. This thesi...
Autonomous systems have the potential to provide great benefit to society. However, they also pose p...
Bias in machine learning is a significant problem that demands industry-wide attention, and in the c...
Due to their ability to efficiently process unstructured and highly dimensional input data, machine ...
YesThis article proposes an approach named SafeML II, which applies empirical cumulative distributio...
The application of artificial intelligence (AI) and data-driven decision-making systems in autonomou...
This open access book brings together the latest developments from industry and research on automate...
YesAssuring safety and thereby certifying is a key challenge of many kinds of Machine Learning (ML)...
This open access book brings together the latest developments from industry and research on automate...
Machine Learning components in safety-critical applications can perform some complex tasks that woul...
Context: Demonstrating high reliability and safety for safety-critical systems (SCSs) remains a hard...
During the last decade, automotive manufacturers have introduced increasingly capable driving automa...
Given the promising advances in the field of Assisted and Automated Driving, it is expected that the...
Ensuring safety is arguably one of the largest remaining challenges before wide-spread market adopti...
International audienceThe strong demand for more automated transport systems with enhanced safety, i...
Autonomous driving is expected to bring several benefits, in particular regarding safety. This thesi...
Autonomous systems have the potential to provide great benefit to society. However, they also pose p...
Bias in machine learning is a significant problem that demands industry-wide attention, and in the c...