In this article, we consider the problem faced by a sensor network operator who must infer, in real time, the value of some environmental parameter that is being monitored at discrete points in space and time by a sensor network. We describe a powerful and generic approach built upon an efficient multi-output Gaussian process that facilitates this information acquisition and processing. Our algorithm allows effective inference even with minimal domain knowledge, and we further introduce a formulation of Bayesian Monte Carlo to permit the principled management of the hyperparameters introduced by our flexible models. We demonstrate how our methods can be applied in cases where the data is delayed, intermittently missing, censored, and/or cor...
The anticipated 'sensing environments' of the near future pose new requirements to the data manageme...
How to sample the data in an optimization algorithm is important in an environmental monitoring prob...
We develop spatial statistical methodology to design large-scale air pollution monitoring networks w...
In this article, we consider the problem faced by a sensor network operator who must infer, in real ...
In this article, we consider the problem faced by a sensor network operator who must infer, in real ...
In this paper, we describe a novel, computationally efficient algorithm that facilitates the autonom...
In this paper, we describe a novel, computationally efficient algorithm that facilitates the autonom...
We develop a family of Bayesian algorithms built around Gaussian processes for various problems pose...
© Cambridge University Press 2011.Sensor networks have recently generated a great deal of research i...
This brief introduces a class of problems and models for the prediction of the scalar field of inter...
Graduation date: 2013Networks of distributed, remote sensors are providing ecological scientists wit...
We consider the problem of selecting an optimal set of sensors, as determined, for example, by the p...
Environmental sensors have been deployed in various cities for early detection of contaminant releas...
In this paper, we describe an information agent, that resides on a mobile computer or personal digit...
Abstract. Streams of sensor measurements arise from twitter, mobile phone networks, internet traffic...
The anticipated 'sensing environments' of the near future pose new requirements to the data manageme...
How to sample the data in an optimization algorithm is important in an environmental monitoring prob...
We develop spatial statistical methodology to design large-scale air pollution monitoring networks w...
In this article, we consider the problem faced by a sensor network operator who must infer, in real ...
In this article, we consider the problem faced by a sensor network operator who must infer, in real ...
In this paper, we describe a novel, computationally efficient algorithm that facilitates the autonom...
In this paper, we describe a novel, computationally efficient algorithm that facilitates the autonom...
We develop a family of Bayesian algorithms built around Gaussian processes for various problems pose...
© Cambridge University Press 2011.Sensor networks have recently generated a great deal of research i...
This brief introduces a class of problems and models for the prediction of the scalar field of inter...
Graduation date: 2013Networks of distributed, remote sensors are providing ecological scientists wit...
We consider the problem of selecting an optimal set of sensors, as determined, for example, by the p...
Environmental sensors have been deployed in various cities for early detection of contaminant releas...
In this paper, we describe an information agent, that resides on a mobile computer or personal digit...
Abstract. Streams of sensor measurements arise from twitter, mobile phone networks, internet traffic...
The anticipated 'sensing environments' of the near future pose new requirements to the data manageme...
How to sample the data in an optimization algorithm is important in an environmental monitoring prob...
We develop spatial statistical methodology to design large-scale air pollution monitoring networks w...