2021
DOI: 10.48550/arxiv.2110.01232
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Benchmarking Safety Monitors for Image Classifiers with Machine Learning

Raul Sena Ferreira,
Jean Arlat,
Jeremie Guiochet
et al.

Abstract: High-accurate machine learning (ML) image classifiers cannot guarantee that they will not fail at operation. Thus, their deployment in safety-critical applications such as autonomous vehicles is still an open issue. The use of fault tolerance mechanisms such as safety monitors is a promising direction to keep the system in a safe state despite errors of the ML classifier. As the prediction from the ML is the core information directly impacting safety, many works are focusing on monitoring the ML model itself. … Show more

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