In this paper, we describe a novel, computationally efficient algorithm that facilitates the autonomous acquisition of readings from sensor networks (deciding when and which sensor to acquire readings from at any time), and which can, with minimal domain knowledge, perform a range of information processing tasks including modelling the accuracy of the sensor readings, predicting the value of missing sensor readings, and predicting how the monitored environmental variables will evolve into the future. Our motivating scenario is the need to provide situational awareness support to first responders at the scene of a large scale incident, and to this end, we describe a novel iterative formulation of a multi-output Gaussian process that can buil...
Most sensor network applications aim at monitoring the spatiotemporal evolution of physical quantiti...
Devices that sense some aspect of the environment, or collect data about it, process the sensed data...
Abstract — This paper presents an explorative navigation method using sparse Gaussian processes for ...
In this paper, we describe a novel, computationally efficient algorithm that facilitates the autonom...
In this article, we consider the problem faced by a sensor network operator who must infer, in real ...
In this paper, we describe an information agent, that resides on a mobile computer or personal digit...
© Cambridge University Press 2011.Sensor networks have recently generated a great deal of research i...
In this article, we consider the problem faced by a sensor network operator who must infer, in real ...
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...
We develop a family of Bayesian algorithms built around Gaussian processes for various problems pose...
SensorScope is a collaborative project between network, sig-nal processing, and environmental resear...
Wireless sensor networks are commonly used to remotely and automatically monitor environments.One of...
Abstract—In this paper, we consider mobile sensor networks that use spatiotemporal Gaussian processe...
Meteorological and hydrological sensors deployed over several hundred kilometers of geographical are...
Most sensor network applications aim at monitoring the spatiotemporal evolution of physical quantiti...
Devices that sense some aspect of the environment, or collect data about it, process the sensed data...
Abstract — This paper presents an explorative navigation method using sparse Gaussian processes for ...
In this paper, we describe a novel, computationally efficient algorithm that facilitates the autonom...
In this article, we consider the problem faced by a sensor network operator who must infer, in real ...
In this paper, we describe an information agent, that resides on a mobile computer or personal digit...
© Cambridge University Press 2011.Sensor networks have recently generated a great deal of research i...
In this article, we consider the problem faced by a sensor network operator who must infer, in real ...
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...
We develop a family of Bayesian algorithms built around Gaussian processes for various problems pose...
SensorScope is a collaborative project between network, sig-nal processing, and environmental resear...
Wireless sensor networks are commonly used to remotely and automatically monitor environments.One of...
Abstract—In this paper, we consider mobile sensor networks that use spatiotemporal Gaussian processe...
Meteorological and hydrological sensors deployed over several hundred kilometers of geographical are...
Most sensor network applications aim at monitoring the spatiotemporal evolution of physical quantiti...
Devices that sense some aspect of the environment, or collect data about it, process the sensed data...
Abstract — This paper presents an explorative navigation method using sparse Gaussian processes for ...