Perception contracts provide a method for evaluating safety of control systems that use machine learning for perception. A perception contract is a specification for testing the ML components, and it gives a method for proving end-to-end system-level safety requirements. The feasibility of contract-based testing and assurance was established earlier in the context of straight lane keeping: a 3-dimensional system with relatively simple dynamics. This paper presents the analysis of two 6 and 12-dimensional flight control systems that use multi-stage, heterogeneous, ML-enabled perception. The paper advances methodology by introducing an algorithm for constructing data and requirement guided refinement of perception contracts (DaRePC). The resu...
Enhanced Vision (EV) and synthetic vision (SV) systems may serve as enabling technologies to meet th...
A recent study conducted by the Commercial Aviation Safety Team (CAST) determined 40 percent of all ...
NASA Langley Research Center and the FAA collaborated in an effort to evaluate the effect of Enhance...
Unmanned aircraft systems promise to be useful for a multitude of applications such as cargo transpo...
Convolutional Neural Networks (CNN) for object detection, lane detection, and segmentation now sit a...
Deep neural networks (DNNs) are increasingly used in safety-critical autonomous systems as perceptio...
Synthetic Vision (SV) may serve as a revolutionary crew/vehicle interface enabling technology to mee...
Modern autopilots fall under the domain of Control Theory which utilizes Proportional Integral Deriv...
In this paper we consider the application of Safe Deep Reinforcement Learning in the context of a tr...
692M15-22-T-00012Traditional process-based approaches of certifying aerospace digital systems are no...
Peer Reviewedhttp://deepblue.lib.umich.edu/bitstream/2027.42/97143/1/AIAA2012-958.pd
The introduction of machine learning in the aviation domain is an ongoing process. This is also true...
This paper details the design and limited flight testing of a preliminary system for visual pilot cu...
Reinforcement Learning (RL) methods have become a topic of interest for performing guidance and navi...
This paper studies the problem of designing a certified vision-based state estimator for autonomous ...
Enhanced Vision (EV) and synthetic vision (SV) systems may serve as enabling technologies to meet th...
A recent study conducted by the Commercial Aviation Safety Team (CAST) determined 40 percent of all ...
NASA Langley Research Center and the FAA collaborated in an effort to evaluate the effect of Enhance...
Unmanned aircraft systems promise to be useful for a multitude of applications such as cargo transpo...
Convolutional Neural Networks (CNN) for object detection, lane detection, and segmentation now sit a...
Deep neural networks (DNNs) are increasingly used in safety-critical autonomous systems as perceptio...
Synthetic Vision (SV) may serve as a revolutionary crew/vehicle interface enabling technology to mee...
Modern autopilots fall under the domain of Control Theory which utilizes Proportional Integral Deriv...
In this paper we consider the application of Safe Deep Reinforcement Learning in the context of a tr...
692M15-22-T-00012Traditional process-based approaches of certifying aerospace digital systems are no...
Peer Reviewedhttp://deepblue.lib.umich.edu/bitstream/2027.42/97143/1/AIAA2012-958.pd
The introduction of machine learning in the aviation domain is an ongoing process. This is also true...
This paper details the design and limited flight testing of a preliminary system for visual pilot cu...
Reinforcement Learning (RL) methods have become a topic of interest for performing guidance and navi...
This paper studies the problem of designing a certified vision-based state estimator for autonomous ...
Enhanced Vision (EV) and synthetic vision (SV) systems may serve as enabling technologies to meet th...
A recent study conducted by the Commercial Aviation Safety Team (CAST) determined 40 percent of all ...
NASA Langley Research Center and the FAA collaborated in an effort to evaluate the effect of Enhance...