In this paper, we present algorithms for predicting a spatio-temporal random field measured by mobile robotic sensors under uncertainties in localization and measurements. The spatio-temporal field of interest is modeled by a sum of a time-varying mean function and a Gaussian Markov random field (GMRF) with unknown hyperparameters. We first derive the exact Bayesian solution to the problem of computing the predictive inference of the random field, taking into account observations, uncertain hyperparameters, measurement noise, and uncertain localization in a fully Bayesian point of view. We show that the exact solution for uncertain localization is not scalable as the number of observations increases. To cope with this exponentially increasi...
This paper presents an approach to building an observation likelihood function from a set of sparse,...
Autonomous mobile robots need very reliable navigation capabilities in order to operate unattended f...
Autonomous robot networks are an effective tool for monitoring large-scale environmental fields. Thi...
This paper presents a fully Bayesian way to solve the simultaneous localization and spatial predicti...
This brief introduces a class of problems and models for the prediction of the scalar field of inter...
© 2014 IEEE. This paper addresses the issue of monitoring physical spatial phenomena of interest uti...
© 2020 Georg Thieme Verlag. All rights reserved. This paper addresses the issue of monitoring spatia...
This paper focuses on the mapping problem for mobile robots in dynamic environments where the state ...
© 2014 IEEE. This paper presents a distributed spatial estimation and prediction approach to address...
© 2016 IEEE. This paper addresses the problem of driving robotic sensors for an energy-constrained m...
We propose a novel method to solve a kidnapped robot problem. A mobile robot plans its sensor action...
One of the main problems in the field of mobile robotics is the estimation of the robot's posit...
Abstract An asynchronous stochastic approximation based (Frequentist) approach is proposed for mappi...
We propose a new method of sensor planning for mobile robot localization using Bayesian network infe...
Abstract — In probabilistic mobile robotics, the development of measurement models plays a crucial r...
This paper presents an approach to building an observation likelihood function from a set of sparse,...
Autonomous mobile robots need very reliable navigation capabilities in order to operate unattended f...
Autonomous robot networks are an effective tool for monitoring large-scale environmental fields. Thi...
This paper presents a fully Bayesian way to solve the simultaneous localization and spatial predicti...
This brief introduces a class of problems and models for the prediction of the scalar field of inter...
© 2014 IEEE. This paper addresses the issue of monitoring physical spatial phenomena of interest uti...
© 2020 Georg Thieme Verlag. All rights reserved. This paper addresses the issue of monitoring spatia...
This paper focuses on the mapping problem for mobile robots in dynamic environments where the state ...
© 2014 IEEE. This paper presents a distributed spatial estimation and prediction approach to address...
© 2016 IEEE. This paper addresses the problem of driving robotic sensors for an energy-constrained m...
We propose a novel method to solve a kidnapped robot problem. A mobile robot plans its sensor action...
One of the main problems in the field of mobile robotics is the estimation of the robot's posit...
Abstract An asynchronous stochastic approximation based (Frequentist) approach is proposed for mappi...
We propose a new method of sensor planning for mobile robot localization using Bayesian network infe...
Abstract — In probabilistic mobile robotics, the development of measurement models plays a crucial r...
This paper presents an approach to building an observation likelihood function from a set of sparse,...
Autonomous mobile robots need very reliable navigation capabilities in order to operate unattended f...
Autonomous robot networks are an effective tool for monitoring large-scale environmental fields. Thi...