We consider the problem of selecting an optimal set of sensors, as determined, for example, by the predictive accuracy of the resulting sensor network. Given an underlying metric between pairs of set elements, we introduce a natural metric between sets of sensors for this task. Using this metric, we can construct covariance functions over sets, and thereby perform Gaussian process inference over a function whose domain is a power set. If the function has additional inputs, our covariances can be readily extended to incorporate them - -allowing us to consider, for example, functions over both sets and time. These functions can then be optimized using Gaussian process global optimization (GPGO). We use the root mean squared error (RMSE) of th...
An optimal sensor layout is attained when a limited number of sensors are placed in an area such tha...
Abstract—Sensor selection is a crucial aspect in sensor network design. Due to the limitations on th...
When monitoring spatial phenomena, which are often modeled as Gaussian Processes (GPs), choosing se...
We develop a family of Bayesian algorithms built around Gaussian processes for various problems pose...
How to sample the data in an optimization algorithm is important in an environmental monitoring prob...
This brief introduces a class of problems and models for the prediction of the scalar field of inter...
The identification of sensors returning unreliable data is an important task when working with senso...
In this article, we consider the problem faced by a sensor network operator who must infer, in real ...
The anticipated 'sensing environments' of the near future pose new requirements to the data manageme...
This paper addresses the sensor selection problem associated with monitoring spatial phenomena, wher...
We are concerned primarily with improving the practical applicability of Bayesian optimization. We m...
By "intelligently" locating a sensor with respect to its environment it is possible to minimize the...
<p>Bayesian nonparametric models, such as the Gaussian process and the Dirichlet process, have been ...
In this note we consider the following problem. Suppose a set of sensors is jointly trying to estima...
© 2013 IEEE. This paper addresses the problem of selecting the most informative sensor locations out...
An optimal sensor layout is attained when a limited number of sensors are placed in an area such tha...
Abstract—Sensor selection is a crucial aspect in sensor network design. Due to the limitations on th...
When monitoring spatial phenomena, which are often modeled as Gaussian Processes (GPs), choosing se...
We develop a family of Bayesian algorithms built around Gaussian processes for various problems pose...
How to sample the data in an optimization algorithm is important in an environmental monitoring prob...
This brief introduces a class of problems and models for the prediction of the scalar field of inter...
The identification of sensors returning unreliable data is an important task when working with senso...
In this article, we consider the problem faced by a sensor network operator who must infer, in real ...
The anticipated 'sensing environments' of the near future pose new requirements to the data manageme...
This paper addresses the sensor selection problem associated with monitoring spatial phenomena, wher...
We are concerned primarily with improving the practical applicability of Bayesian optimization. We m...
By "intelligently" locating a sensor with respect to its environment it is possible to minimize the...
<p>Bayesian nonparametric models, such as the Gaussian process and the Dirichlet process, have been ...
In this note we consider the following problem. Suppose a set of sensors is jointly trying to estima...
© 2013 IEEE. This paper addresses the problem of selecting the most informative sensor locations out...
An optimal sensor layout is attained when a limited number of sensors are placed in an area such tha...
Abstract—Sensor selection is a crucial aspect in sensor network design. Due to the limitations on th...
When monitoring spatial phenomena, which are often modeled as Gaussian Processes (GPs), choosing se...