Our sensor selection algorithm targets the problem of global self-localization of multi-sensor mobile robots. The algorithm builds on the probabilistic reasoning using Bayes filters to estimate sensor measurement uncertainty and sensor validity in robot localization. For quantifying measurement uncertainty we score the Bayesian belief probability density using a model selection criterion, and for sensor validity, we evaluate belief on pose estimates from different sensors as a multi-sample clustering problem. The minimization of the combined uncertainty (measurement uncertainty score + sensor validity score) allows us to intelligently choose a subset of sensors that contribute to accurate localization of the mobile robot. We demonstrate the...
An autonomous mobile robot must be able to elaborate the measures provided by the sensor equipment t...
Perception is the first step for a mobile robot to perform any task and for it to gain perception mo...
At the core of probabilistic robotics is the idea of estimating state from sensor data.State estimat...
We propose a novel method to solve a kidnapped robot problem. A mobile robot plans its sensor action...
In the context of a mobile robotic agent, we describe a unified framework for the competencies of lo...
This dissertation proposes a novel method called state-dependent sensor measurement models (SDSMMs)....
This paper discusses how uncertainty models of vision-based positioning sensors can be used to suppo...
We propose a new method of sensor planning for mobile robot localization using Bayesian network infe...
Reliable localization is the problem of determining the position of a mobile with respect to a globa...
The essential key capabilities for a mobile robot are to determine where it is located and gather an...
One of the important issues in mobile robots is finding the position of robots in space. This is nor...
We address the problem of selecting sensors so as to minimize the error in estimating the position o...
We address the problem of selecting sensors so as to minimize the error in estimating the position o...
In this paper we propose a novel method of sensor planning for a mobile robot localization problem. ...
To act intelligently in dynamic environments, mobile robots must estimate object positions using inf...
An autonomous mobile robot must be able to elaborate the measures provided by the sensor equipment t...
Perception is the first step for a mobile robot to perform any task and for it to gain perception mo...
At the core of probabilistic robotics is the idea of estimating state from sensor data.State estimat...
We propose a novel method to solve a kidnapped robot problem. A mobile robot plans its sensor action...
In the context of a mobile robotic agent, we describe a unified framework for the competencies of lo...
This dissertation proposes a novel method called state-dependent sensor measurement models (SDSMMs)....
This paper discusses how uncertainty models of vision-based positioning sensors can be used to suppo...
We propose a new method of sensor planning for mobile robot localization using Bayesian network infe...
Reliable localization is the problem of determining the position of a mobile with respect to a globa...
The essential key capabilities for a mobile robot are to determine where it is located and gather an...
One of the important issues in mobile robots is finding the position of robots in space. This is nor...
We address the problem of selecting sensors so as to minimize the error in estimating the position o...
We address the problem of selecting sensors so as to minimize the error in estimating the position o...
In this paper we propose a novel method of sensor planning for a mobile robot localization problem. ...
To act intelligently in dynamic environments, mobile robots must estimate object positions using inf...
An autonomous mobile robot must be able to elaborate the measures provided by the sensor equipment t...
Perception is the first step for a mobile robot to perform any task and for it to gain perception mo...
At the core of probabilistic robotics is the idea of estimating state from sensor data.State estimat...