This paper investigates runtime monitoring of perception systems. Perception is a critical component of high-integrity applications of robotics and autonomous systems, such as self-driving cars. In these applications, failure of perception systems may put human life at risk, and a broad adoption of these technologies requires the development of methodologies to guarantee and monitor safe operation. Despite the paramount importance of perception, currently there is no formal approach for system-level perception monitoring. In this paper, we formalize the problem of runtime fault detection and identification in perception systems and present a framework to model diagnostic information using a diagnostic graph. We then provide a set of determi...
This paper describes a predictive method for fault detection in the fail-safe system of autonomous v...
Modern autonomous robotic systems are equipped with perception subsystems to handle unexpected failu...
Research on diagnosis has a long history in arti-cial intelligence which includes work dealing with ...
In order to address the problem of failure detection in the robotics domain, we present in this cont...
Golombek R, Wrede S, Hanheide M, Heckmann M. Learning a Probabilistic Error Detection Model for Robo...
Autonomous systems are usually equipped with sensors to sense the surrounding environment. The senso...
Perception systems are often the core component of a robotics framework as their ability to accurat...
This paper presents a novel approach to the runtime detection of faults in autonomous mobile robots,...
Fault detection (FD) is the process of monitoring a system to identify any malfunction occurring in ...
State-of-the-art machine-learned controllers for autonomous systems demonstrate unbeatable performan...
Despite significant advances in machine learning and perception over the past few decades, perceptio...
In this dissertation, we study two new approaches to fault detection for autonomous robots. The firs...
International audienceMachine learning (ML) provides no guarantee of safe operation in safety-critic...
With the advent of autonomous systems, machine perception is a decisive safety-critical part to make...
This paper presents a novel approach to the run-time detection of faults in autonomous mobile robots...
This paper describes a predictive method for fault detection in the fail-safe system of autonomous v...
Modern autonomous robotic systems are equipped with perception subsystems to handle unexpected failu...
Research on diagnosis has a long history in arti-cial intelligence which includes work dealing with ...
In order to address the problem of failure detection in the robotics domain, we present in this cont...
Golombek R, Wrede S, Hanheide M, Heckmann M. Learning a Probabilistic Error Detection Model for Robo...
Autonomous systems are usually equipped with sensors to sense the surrounding environment. The senso...
Perception systems are often the core component of a robotics framework as their ability to accurat...
This paper presents a novel approach to the runtime detection of faults in autonomous mobile robots,...
Fault detection (FD) is the process of monitoring a system to identify any malfunction occurring in ...
State-of-the-art machine-learned controllers for autonomous systems demonstrate unbeatable performan...
Despite significant advances in machine learning and perception over the past few decades, perceptio...
In this dissertation, we study two new approaches to fault detection for autonomous robots. The firs...
International audienceMachine learning (ML) provides no guarantee of safe operation in safety-critic...
With the advent of autonomous systems, machine perception is a decisive safety-critical part to make...
This paper presents a novel approach to the run-time detection of faults in autonomous mobile robots...
This paper describes a predictive method for fault detection in the fail-safe system of autonomous v...
Modern autonomous robotic systems are equipped with perception subsystems to handle unexpected failu...
Research on diagnosis has a long history in arti-cial intelligence which includes work dealing with ...