Title :
An automatic method for eliminating spurious data from sensor networks
Author :
Nicholson, David
Author_Institution :
Adv. Technol. Centre, BAE SYSTEMS, Bristol, UK
Abstract :
The operational benefits of network-centric data fusion systems are underpinned by the assumption of statistically consistent data fusion processes. This assumption may be severely tested when redundant and intermittently corrupted data is allowed to proliferate through the network. The challenge is thus to find a robust and unified solution framework. The paper presents such a framework, centred on the covariance intersection (CI) and covariance union (CU) data fusion algorithms. It reports a simulation-based evaluation of these algorithms, with respect to a grid network of sensors engaged in target tracking and track fusion. The network topology and the identity of corrupt data entries in the network are a priori unknown to the fusion processes. The performance of the combined CI/CU is measured with respect to its ability to eliminate the spurious data from the network automatically.
Keywords :
covariance analysis; distributed sensors; network topology; sensor fusion; target tracking; corrupted data; covariance intersection data fusion algorithm; covariance union data fusion algorithm; decentralised data fusion; grid sensor network; network topology; redundant data; sensor fusion; sensor networks; spurious data elimination; target tracking; track fusion;
Conference_Titel :
Target Tracking 2004: Algorithms and Applications, IEE
Print_ISBN :
0-86341-397-8
DOI :
10.1049/ic:20040052