International audienceModels of the human driving behavior are essential for the rapid prototyping of error-compensating assistance systems. Various authors proposed control-theoretic and production-system models. Here we present machine-learning alternatives to train assistance systems and estimate probabilistic driver models from human behavior traces. We present a partially autonomous driver assistance system based on Markov Decision Processes. Its assistance strategies are trained from human behavior traces using the Least Square Policy Iteration algorithm. The resulting system is able to reduce the number of collisions encountered when following a lead-vehicle. Furthermore, we present a Bayesian Autonomous Driver Mixture-of-Behaviors m...
Over the last two decades, autonomous driving has progressed from science fiction to a real possibil...
Thesis (Ph.D.)--University of Washington, 2022With an emphasis on longitudinal driving, this dissert...
Semi-autonomous driving innovations aim to bridge the gap to fully autonomous driving by co-operatin...
International audienceModels of the human driving behavior are essential for the rapid prototyping o...
models of human driver behavior and cognition, probabilistic driver model, Bayesian auto-nomous driv...
Abstract—Models of the human driving behavior are essential for the rapid prototyping of assistance ...
Best Paper AwardInternational audienceThe Partially Autonomous Driving Assistance System (PADAS) is ...
Thesis (Ph.D.)--University of Washington, 2019As vehicle automation becomes increasingly prevalent a...
Abstract This paper addresses the problem to find an optimal warning and intervention strategy for a...
Public policy makers have high expectations from automation in driving. The autonomous vehicle is ex...
© 20xx IEEE. Personal use of this material is permitted. Permission from IEEE must be obtained for a...
M. Tech. Electrical Engineering.Investigates a new approach of wheelchair control, based on the user...
MasterIn this work we addressed the problem of modelling human driving behavior using hidden Markov ...
Abstract Simulating and predicting behaviour of human drivers with Digital Human Driver Models (DHDM...
Driving error is a major factor in majority of all traffic accidents. To address this problem, artif...
Over the last two decades, autonomous driving has progressed from science fiction to a real possibil...
Thesis (Ph.D.)--University of Washington, 2022With an emphasis on longitudinal driving, this dissert...
Semi-autonomous driving innovations aim to bridge the gap to fully autonomous driving by co-operatin...
International audienceModels of the human driving behavior are essential for the rapid prototyping o...
models of human driver behavior and cognition, probabilistic driver model, Bayesian auto-nomous driv...
Abstract—Models of the human driving behavior are essential for the rapid prototyping of assistance ...
Best Paper AwardInternational audienceThe Partially Autonomous Driving Assistance System (PADAS) is ...
Thesis (Ph.D.)--University of Washington, 2019As vehicle automation becomes increasingly prevalent a...
Abstract This paper addresses the problem to find an optimal warning and intervention strategy for a...
Public policy makers have high expectations from automation in driving. The autonomous vehicle is ex...
© 20xx IEEE. Personal use of this material is permitted. Permission from IEEE must be obtained for a...
M. Tech. Electrical Engineering.Investigates a new approach of wheelchair control, based on the user...
MasterIn this work we addressed the problem of modelling human driving behavior using hidden Markov ...
Abstract Simulating and predicting behaviour of human drivers with Digital Human Driver Models (DHDM...
Driving error is a major factor in majority of all traffic accidents. To address this problem, artif...
Over the last two decades, autonomous driving has progressed from science fiction to a real possibil...
Thesis (Ph.D.)--University of Washington, 2022With an emphasis on longitudinal driving, this dissert...
Semi-autonomous driving innovations aim to bridge the gap to fully autonomous driving by co-operatin...