Gaussian process (GP) is well researched and used in machine learning field. Comparing with artificial neural network (ANN) and support vector regression (SVR), it provides additional covariance information for regression results. By exploiting this feature, an uncertainty based locational optimisation strategy combining with an entropy based data selection method for mobile sensor networks is presented in this paper. Centroidal Voronoi tessellation (CVT) is used as a locational optimisation framework and Informative Vector Machine (IVM) is applied for data selection. Simulations with different locational optimisation criteria are conducted and the results are given, which proved the effectiveness of presented strategy
We develop a family of Bayesian algorithms built around Gaussian processes for various problems pose...
The paper presents a novel method for monitoring network optimisation, based on a recent machine lea...
Gaussian Process Regression (GPR) is a commonstatistical framework for spatial function estimation. ...
Abstract—This paper presents a sparse history data based method for modelling a latent function with...
This paper addresses the sensor placement problem associated with monitoring spatial phenomena, wher...
University of Technology, Sydney. Faculty of Engineering and Information Technology.Networks of wire...
© 2016 IEEE. This paper addresses the problem of driving robotic sensors for an energy-constrained m...
© 2013 IEEE. This paper addresses the problem of selecting the most informative sensor locations out...
Abstract — This paper presents an explorative navigation method using sparse Gaussian processes for ...
summary:Sensor placement is an optimisation problem that has recently gained great relevance. In ord...
This paper presents a distributed algorithm for mobile sensor networks to monitor the environment. W...
Air pollution sensors are rapidly decreasing in cost and can provide measurements with higher spatia...
This paper presents an approach to modeling and tracking spatio-temporal field functions by using a ...
© 2014 IEEE. This paper addresses the issue of monitoring physical spatial phenomena of interest uti...
A distributed approach to monitoring the environmental field function with mobile sensor networks is...
We develop a family of Bayesian algorithms built around Gaussian processes for various problems pose...
The paper presents a novel method for monitoring network optimisation, based on a recent machine lea...
Gaussian Process Regression (GPR) is a commonstatistical framework for spatial function estimation. ...
Abstract—This paper presents a sparse history data based method for modelling a latent function with...
This paper addresses the sensor placement problem associated with monitoring spatial phenomena, wher...
University of Technology, Sydney. Faculty of Engineering and Information Technology.Networks of wire...
© 2016 IEEE. This paper addresses the problem of driving robotic sensors for an energy-constrained m...
© 2013 IEEE. This paper addresses the problem of selecting the most informative sensor locations out...
Abstract — This paper presents an explorative navigation method using sparse Gaussian processes for ...
summary:Sensor placement is an optimisation problem that has recently gained great relevance. In ord...
This paper presents a distributed algorithm for mobile sensor networks to monitor the environment. W...
Air pollution sensors are rapidly decreasing in cost and can provide measurements with higher spatia...
This paper presents an approach to modeling and tracking spatio-temporal field functions by using a ...
© 2014 IEEE. This paper addresses the issue of monitoring physical spatial phenomena of interest uti...
A distributed approach to monitoring the environmental field function with mobile sensor networks is...
We develop a family of Bayesian algorithms built around Gaussian processes for various problems pose...
The paper presents a novel method for monitoring network optimisation, based on a recent machine lea...
Gaussian Process Regression (GPR) is a commonstatistical framework for spatial function estimation. ...