Autonomous systems such as self-driving cars and infrastructure inspection robots must be able to mitigate risk by dependably detecting entities that represent factors of risk in their environment (e.g., humans and obstacles). Nevertheless, current machine learning (ML) techniques for real-time object detection disregard risk factors in their training and verification. As such, they produce ML models that place equal emphasis on the correct detection of all classes of objects of interest—including, for instance, buses and cats in a self-driving scenario. To address this limitation of existing solutions, this short paper introduces a work-in-progress method for the development of risk-aware ML ensembles for real-time object detection. Our ne...
The main objective of this research is to identify security threats that stem from autonomous vehicl...
A fundamental challenge in deploying vision-based object detection on a robotic platform is achievin...
Currently, deep learning has been widely applied in the field of object detection, and some relevant...
In a cyber-physical system such as an autonomous vehicle (AV), machine learning (ML) models can be u...
This study presents a domain-specific automated machine learning (AutoML) for risk prediction and be...
International audienceMachine learning (ML) provides no guarantee of safe operation in safety-critic...
International audienceMachine learning (ML) provides no guarantee of safe operation in safety-critic...
Self-driving cars is a trending topic of the modern world. The ability to control a vehicle without ...
An intelligent, accurate, and powerful object detection system is required for automated driving sys...
An intelligent, accurate, and powerful object detection system is required for automated driving sys...
Self-driving cars is a trending topic of the modern world. The ability to control a vehicle without ...
Human drivers are subject to numerous flaws. It is common that the driversget tired and lose control...
Self-driving systems are commonly categorized into three subsystems: perception, planning, and contr...
Transportation has accelerated the process of human transformation from hunters and gatherers to a p...
Self-driving systems are commonly categorized into three subsystems: perception, planning, and contr...
The main objective of this research is to identify security threats that stem from autonomous vehicl...
A fundamental challenge in deploying vision-based object detection on a robotic platform is achievin...
Currently, deep learning has been widely applied in the field of object detection, and some relevant...
In a cyber-physical system such as an autonomous vehicle (AV), machine learning (ML) models can be u...
This study presents a domain-specific automated machine learning (AutoML) for risk prediction and be...
International audienceMachine learning (ML) provides no guarantee of safe operation in safety-critic...
International audienceMachine learning (ML) provides no guarantee of safe operation in safety-critic...
Self-driving cars is a trending topic of the modern world. The ability to control a vehicle without ...
An intelligent, accurate, and powerful object detection system is required for automated driving sys...
An intelligent, accurate, and powerful object detection system is required for automated driving sys...
Self-driving cars is a trending topic of the modern world. The ability to control a vehicle without ...
Human drivers are subject to numerous flaws. It is common that the driversget tired and lose control...
Self-driving systems are commonly categorized into three subsystems: perception, planning, and contr...
Transportation has accelerated the process of human transformation from hunters and gatherers to a p...
Self-driving systems are commonly categorized into three subsystems: perception, planning, and contr...
The main objective of this research is to identify security threats that stem from autonomous vehicl...
A fundamental challenge in deploying vision-based object detection on a robotic platform is achievin...
Currently, deep learning has been widely applied in the field of object detection, and some relevant...