Abstract—This paper presents an approach to approximate information content for active sensing tasks. The Unscented Transform is used to represent probability distributions by a set of representative sample points that capture the first and second moments of the distribution. Using these sample points, the effects of nonlinear operators on a probability distribution of active sensing costs can be approximated. Simulation results validate the approximation for bearings-only geolocalization of a stationary target and tracking of an uncertain moving target. I
Realistic sensing environments pose a significant challenge to ensuring the quality of sensing due t...
A framework for adaptive and non-adaptive statistical compressive sensing is developed, where a stat...
Tracking a target in a cluttered environment is a representative application of sensor networks. In ...
The fitness of behaving agents depends on their knowledge of the environment, which demands efficien...
Information theory has been often used to analyse the interactions of agents with their environment....
This paper outlines our current progress in active sensor control. We consider the problem of contro...
This work is licensed under a Creative Commons Attribution 4.0 International License.In active sensi...
© 2016 Elsevier LtdA key component of interacting with the world is how to direct ones’ sensors so a...
Previous research has shown that the execution of contact tasks un-der uncertainty benefits from on-...
Sensing uncertainty is a key performance metric of interest to any application based on a sensor net...
Sensory inference under conditions of uncer-tainty is a major problem in both machine learning and c...
In a statistical inference scenario, the estimation of target signal or its parameters is done by pr...
The goal of my thesis work consists of the implementation of an online active sensing control in the...
Abstract — This paper presents an algorithm for au-tonomously calculating active sensing strategies ...
In the real world, a robotic system must operate in the presence of motion and sensing uncertainty. ...
Realistic sensing environments pose a significant challenge to ensuring the quality of sensing due t...
A framework for adaptive and non-adaptive statistical compressive sensing is developed, where a stat...
Tracking a target in a cluttered environment is a representative application of sensor networks. In ...
The fitness of behaving agents depends on their knowledge of the environment, which demands efficien...
Information theory has been often used to analyse the interactions of agents with their environment....
This paper outlines our current progress in active sensor control. We consider the problem of contro...
This work is licensed under a Creative Commons Attribution 4.0 International License.In active sensi...
© 2016 Elsevier LtdA key component of interacting with the world is how to direct ones’ sensors so a...
Previous research has shown that the execution of contact tasks un-der uncertainty benefits from on-...
Sensing uncertainty is a key performance metric of interest to any application based on a sensor net...
Sensory inference under conditions of uncer-tainty is a major problem in both machine learning and c...
In a statistical inference scenario, the estimation of target signal or its parameters is done by pr...
The goal of my thesis work consists of the implementation of an online active sensing control in the...
Abstract — This paper presents an algorithm for au-tonomously calculating active sensing strategies ...
In the real world, a robotic system must operate in the presence of motion and sensing uncertainty. ...
Realistic sensing environments pose a significant challenge to ensuring the quality of sensing due t...
A framework for adaptive and non-adaptive statistical compressive sensing is developed, where a stat...
Tracking a target in a cluttered environment is a representative application of sensor networks. In ...