Abstract. We describe a method for selecting optimal actions affecting the sensors in a probabilistic state estimation framework, with an ap-plication in selecting optimal zoom levels for a motor-controlled camera in an object tracking task. The action is selected to minimize the ex-pected entropy of the state estimate. The contribution of this paper is the ability to incorporate varying costs into the action selection process by looking multiple steps into the future. The optimal action sequence then minimizes both the expected entropy and the costs it incurs. This method is then tested with an object tracking simulation, show-ing the benefits of multi-step versus single-step action selection in cases where the cameras ’ zoom control motor...
A model of the world dynamics is a vital part of any tracking algorithm. The observed world can exhi...
Abstract In this paper we introduce a formalism for optimal camera parameter selection for iterative...
We propose a novel tracking algorithm that robustly tracks the target by finding the state which min...
Abstract In this paper we present an information theoretic framework that pro-vides an optimality cr...
In active visual 3-D object tracking one goal is to control the pan and tilt axes of the involved ca...
This dissertation addresses the problem of information gathering with a visual system. We formalize ...
Abstract. We present a new method for planning the optimal next view for a probabilistic visual obje...
The use of a single camera with a zoom lens for tracking involves a continuous arbitration of accura...
Abstract-The task of visual surveillance involves pervasively observing multiple targets as they mov...
In this paper we introduce a formalism for optimal sensor parameter selection for iterative state es...
The task of visual surveillance involves pervasively observing multiple targets as they move through...
In vision-based feedback control systems, the time to ob-tain sensor information is usually non-negl...
International audienceIn this article, we investigate the issue of the selection of eye movements in...
This thesis addresses information theoretic methods for control of one or several active cameras in ...
In vision-based feedback control systems, the time to obtain sensor information is usually non-negli...
A model of the world dynamics is a vital part of any tracking algorithm. The observed world can exhi...
Abstract In this paper we introduce a formalism for optimal camera parameter selection for iterative...
We propose a novel tracking algorithm that robustly tracks the target by finding the state which min...
Abstract In this paper we present an information theoretic framework that pro-vides an optimality cr...
In active visual 3-D object tracking one goal is to control the pan and tilt axes of the involved ca...
This dissertation addresses the problem of information gathering with a visual system. We formalize ...
Abstract. We present a new method for planning the optimal next view for a probabilistic visual obje...
The use of a single camera with a zoom lens for tracking involves a continuous arbitration of accura...
Abstract-The task of visual surveillance involves pervasively observing multiple targets as they mov...
In this paper we introduce a formalism for optimal sensor parameter selection for iterative state es...
The task of visual surveillance involves pervasively observing multiple targets as they move through...
In vision-based feedback control systems, the time to ob-tain sensor information is usually non-negl...
International audienceIn this article, we investigate the issue of the selection of eye movements in...
This thesis addresses information theoretic methods for control of one or several active cameras in ...
In vision-based feedback control systems, the time to obtain sensor information is usually non-negli...
A model of the world dynamics is a vital part of any tracking algorithm. The observed world can exhi...
Abstract In this paper we introduce a formalism for optimal camera parameter selection for iterative...
We propose a novel tracking algorithm that robustly tracks the target by finding the state which min...