International audienceTesting perception functions for safety-critical autonomous systems is a crucial task. The reason is that accurate ML models applied in computer vision tasks still fail in scenarios where humans perform well. Out-of-distribution (OOD) images are usually a source of such failures. For this reason, literature usually applies data augmentation techniques or runtime monitors such as OOD detectors to increase robustness. Evaluating such solutions is usually performed by analyzing metrics based on positive and negative rates over a dataset containing several perturbations. However, using such metrics on such datasets can be misleading since not all OOD data lead to failures in the perception system. Hence, testing a percepti...
In a cyber-physical system such as an autonomous vehicle (AV), machine learning (ML) models can be u...
Towards Realistic Out-of-Distribution Detection: A Novel Evaluation Framework for Improving Generali...
International audienceHigh-accurate machine learning (ML) image classifiers cannot guarantee that th...
International audienceTesting perception functions for safety-critical autonomous systems is a cruci...
International audienceTesting perception functions for safety-critical autonomous systems is a cruci...
International audienceTesting perception functions for safety-critical autonomous systems is a cruci...
Autonomous vehicles have the potential to completely upend the way we transport today, however deplo...
In a cyber-physical system such as an autonomous vehicle (AV), machine learning (ML) models can be u...
peer reviewedVision-based control systems are key enablers of many autonomous vehicular systems, inc...
peer reviewedVision-based control systems are key enablers of many autonomous vehicular systems, inc...
Scenario-based testing is a common approach to verify and validate Advanced Driving Assistance Syste...
© 2018 Curran Associates Inc.All rights reserved. While recent developments in autonomous vehicle (A...
Developing a computer vision-based algorithm for identifying dangerous vehicles requires a large amo...
Perception Testing technologies are widely applied in various scenarios, like industrial and academi...
The failure of sensors to perceive the environment correctly is one of the primary sources of risk t...
In a cyber-physical system such as an autonomous vehicle (AV), machine learning (ML) models can be u...
Towards Realistic Out-of-Distribution Detection: A Novel Evaluation Framework for Improving Generali...
International audienceHigh-accurate machine learning (ML) image classifiers cannot guarantee that th...
International audienceTesting perception functions for safety-critical autonomous systems is a cruci...
International audienceTesting perception functions for safety-critical autonomous systems is a cruci...
International audienceTesting perception functions for safety-critical autonomous systems is a cruci...
Autonomous vehicles have the potential to completely upend the way we transport today, however deplo...
In a cyber-physical system such as an autonomous vehicle (AV), machine learning (ML) models can be u...
peer reviewedVision-based control systems are key enablers of many autonomous vehicular systems, inc...
peer reviewedVision-based control systems are key enablers of many autonomous vehicular systems, inc...
Scenario-based testing is a common approach to verify and validate Advanced Driving Assistance Syste...
© 2018 Curran Associates Inc.All rights reserved. While recent developments in autonomous vehicle (A...
Developing a computer vision-based algorithm for identifying dangerous vehicles requires a large amo...
Perception Testing technologies are widely applied in various scenarios, like industrial and academi...
The failure of sensors to perceive the environment correctly is one of the primary sources of risk t...
In a cyber-physical system such as an autonomous vehicle (AV), machine learning (ML) models can be u...
Towards Realistic Out-of-Distribution Detection: A Novel Evaluation Framework for Improving Generali...
International audienceHigh-accurate machine learning (ML) image classifiers cannot guarantee that th...