Abstract—We develop a framework for trajectory tracking in dynamic settings, where an autonomous system is charged with the task of remaining close to an object of interest whose position varies continuously in time. We model this scenario as a convex optimization problem with a time-varying objective function and propose an adaptive discrete-time sampling prediction-correction scheme to find and track the solution trajectory while sampling the problem data at a constant rate of 1{h. We propose approximate gradient trajectory (AGT) and approximate Newton trajectory track-ing (ANT) as prediction-correction algorithms that (i) analyze the iso-residual dynamics of the optimality conditions in the prediction step, (ii) use gradient descent and ...
In this paper we propose a model-based approach to the design of online optimization algorithms, wit...
The goal of Inverse Optimal Control (IOC) is to identify the underlying objective function based on ...
This research presents machine vision techniques to track an object of interest visually in an image...
Abstract—We consider unconstrained convex optimization prob-lems with objective functions that vary ...
Abstract—This paper considers unconstrained convex optimiza-tion problems with time-varying objectiv...
Adaptation of a tracking procedure combined in a common way with a Kalman filter is formulated as an...
Abstract—We study unconstrained time-varying convex optimiza-tion problems where the objective funct...
Recently, there has been a surge of interest in incorporating tools from dynamical systems and contr...
Recently, there has been a surge of interest in incorporating tools from dynamical systems and contr...
The dynamic optimization problem concerns finding an optimum in a changing environment. In the field...
The prototypical problem in control theory is the stabilization of a set point. When, instead of a s...
This paper focuses on time-optimal path tracking, a subproblem in time-optimal motion planning of ro...
Also cited as: Lecture Notes in Computer Science, 2009; 6311:466-479We propose a global optimisation...
30 pages, 23 figures.The dynamic optimization problem concerns finding an optimum in a changing envi...
International audienceThis chapter discusses a series of developments on predictive control for path...
In this paper we propose a model-based approach to the design of online optimization algorithms, wit...
The goal of Inverse Optimal Control (IOC) is to identify the underlying objective function based on ...
This research presents machine vision techniques to track an object of interest visually in an image...
Abstract—We consider unconstrained convex optimization prob-lems with objective functions that vary ...
Abstract—This paper considers unconstrained convex optimiza-tion problems with time-varying objectiv...
Adaptation of a tracking procedure combined in a common way with a Kalman filter is formulated as an...
Abstract—We study unconstrained time-varying convex optimiza-tion problems where the objective funct...
Recently, there has been a surge of interest in incorporating tools from dynamical systems and contr...
Recently, there has been a surge of interest in incorporating tools from dynamical systems and contr...
The dynamic optimization problem concerns finding an optimum in a changing environment. In the field...
The prototypical problem in control theory is the stabilization of a set point. When, instead of a s...
This paper focuses on time-optimal path tracking, a subproblem in time-optimal motion planning of ro...
Also cited as: Lecture Notes in Computer Science, 2009; 6311:466-479We propose a global optimisation...
30 pages, 23 figures.The dynamic optimization problem concerns finding an optimum in a changing envi...
International audienceThis chapter discusses a series of developments on predictive control for path...
In this paper we propose a model-based approach to the design of online optimization algorithms, wit...
The goal of Inverse Optimal Control (IOC) is to identify the underlying objective function based on ...
This research presents machine vision techniques to track an object of interest visually in an image...