http://www.aiaa.org/agenda.cfm?lumeetingid=1998&viewcon=agenda&pageview=2&programSeeview=1&dateget=12-Aug-09&formatview=1This work addresses the problem of trajectory planning for UAV sensors taking measurements of a large nonlinear system to improve estimation and prediction of such a system. The lack of perfect knowledge of the global system state typically requires probabilistic state estimation. The goal is therefore to find trajectories such that the measurements along each trajectory minimize the expected error of the predicted state of the system some time into the future. The considerable nonlinearity of the dynamics governing these systems necessitates the use of com- putationally costly Monte-Carlo estimation techniques to upd...
Several strategies are presented for dealing with various situations where traditional estimation te...
The rising number of small unmanned aerial vehicles (UAVs) expected in the next decade will enable a...
This paper presents a real-time motion planning approach for autonomous vehicles with complex dynami...
Path planning in an uncertain environment is a key enabler of true vehicle autonomy. Over the past t...
We present CELLO (Covariance Estimation and Learning through Likelihood Optimization), an algorithm ...
The unmanned aerial vehicle (UAV)-enabled communication technology is regarded as an efficient and e...
Abstract—We study the problem of optimally coordinating multiple fixed-wing UAVs to perform vision-b...
A key enabler of autonomous vehicles is the ability to plan the path of the vehicle to accomplish mi...
Many maneuvers of Unmanned Aerial Vehicles (UAV) can be considered within a framework of trajectory ...
National audienceWe study the problem of monitoring the evolution of atmospheric variables within lo...
Optimal coordination of multiple sensors is crucial for efficient atmospheric dispersion estimation....
Thesis: S.M., Massachusetts Institute of Technology, Department of Aeronautics and Astronautics, 201...
This article is concerned with the tracking of nonequilibrium motions with model predictive control ...
In this thesis, we introduce two different methods for determining noise covariance matrices in orde...
Estimation of the trajectory is a fundamental problem in robotics. Introduction of additional measur...
Several strategies are presented for dealing with various situations where traditional estimation te...
The rising number of small unmanned aerial vehicles (UAVs) expected in the next decade will enable a...
This paper presents a real-time motion planning approach for autonomous vehicles with complex dynami...
Path planning in an uncertain environment is a key enabler of true vehicle autonomy. Over the past t...
We present CELLO (Covariance Estimation and Learning through Likelihood Optimization), an algorithm ...
The unmanned aerial vehicle (UAV)-enabled communication technology is regarded as an efficient and e...
Abstract—We study the problem of optimally coordinating multiple fixed-wing UAVs to perform vision-b...
A key enabler of autonomous vehicles is the ability to plan the path of the vehicle to accomplish mi...
Many maneuvers of Unmanned Aerial Vehicles (UAV) can be considered within a framework of trajectory ...
National audienceWe study the problem of monitoring the evolution of atmospheric variables within lo...
Optimal coordination of multiple sensors is crucial for efficient atmospheric dispersion estimation....
Thesis: S.M., Massachusetts Institute of Technology, Department of Aeronautics and Astronautics, 201...
This article is concerned with the tracking of nonequilibrium motions with model predictive control ...
In this thesis, we introduce two different methods for determining noise covariance matrices in orde...
Estimation of the trajectory is a fundamental problem in robotics. Introduction of additional measur...
Several strategies are presented for dealing with various situations where traditional estimation te...
The rising number of small unmanned aerial vehicles (UAVs) expected in the next decade will enable a...
This paper presents a real-time motion planning approach for autonomous vehicles with complex dynami...