Modelling based on probabilistic inference can be used to estimate the quality of information delivered by a military sensor network. Different modelling tools have complementary characteristics that can be leveraged to create an accurate model open to intuitive and efficient querying. In particular, stochastic process models can be used to abstract away from the physical reality by describing it as components that exist in discrete states with probabilistically invoked actions that change the state. The quality of information may be assessed by using the model to compute the probability that reports made by the network to its users are correct. In contrast, dynamic Bayesian network models, which have been used in a variety of military appl...
Traditional database systems, particularly those focused on capturing and managing data from the rea...
We present a robust distributed algorithm for approximate probabilistic inference in dynamical syste...
This dissertation discusses the mathematical modeling of dynamical systems under uncertainty, Bayesi...
Modelling based on probabilistic inference can be used to estimate the quality of information delive...
The anticipated 'sensing environments' of the near future pose new requirements to the data manageme...
Graduation date: 2013Networks of distributed, remote sensors are providing ecological scientists wit...
One of NASA’s key mission requirements is robust state estimation. Sensing, using a wide range of se...
10.1109/ISSNIP.2007.4496937Proceedings of the 2007 International Conference on Intelligent Sensors, ...
This paper develops a new theory and model for information and sensor validation. The model represen...
During the past few years, the number of applications that need to process large-scale data has grow...
This report demonstrates the application of Bayesian networks for modelling and reasoning about unce...
Bayesian network, decision support, information fusion In this paper we consider a typical military ...
Declarative queries are proving to be an attractive paradigm for interacting with networks of wirele...
In this article, we consider the problem faced by a sensor network operator who must infer, in real ...
Sensor networks are designed to detect events and their applicability is dependent on the likelihood...
Traditional database systems, particularly those focused on capturing and managing data from the rea...
We present a robust distributed algorithm for approximate probabilistic inference in dynamical syste...
This dissertation discusses the mathematical modeling of dynamical systems under uncertainty, Bayesi...
Modelling based on probabilistic inference can be used to estimate the quality of information delive...
The anticipated 'sensing environments' of the near future pose new requirements to the data manageme...
Graduation date: 2013Networks of distributed, remote sensors are providing ecological scientists wit...
One of NASA’s key mission requirements is robust state estimation. Sensing, using a wide range of se...
10.1109/ISSNIP.2007.4496937Proceedings of the 2007 International Conference on Intelligent Sensors, ...
This paper develops a new theory and model for information and sensor validation. The model represen...
During the past few years, the number of applications that need to process large-scale data has grow...
This report demonstrates the application of Bayesian networks for modelling and reasoning about unce...
Bayesian network, decision support, information fusion In this paper we consider a typical military ...
Declarative queries are proving to be an attractive paradigm for interacting with networks of wirele...
In this article, we consider the problem faced by a sensor network operator who must infer, in real ...
Sensor networks are designed to detect events and their applicability is dependent on the likelihood...
Traditional database systems, particularly those focused on capturing and managing data from the rea...
We present a robust distributed algorithm for approximate probabilistic inference in dynamical syste...
This dissertation discusses the mathematical modeling of dynamical systems under uncertainty, Bayesi...