Title :
Distributed data fusion using support vector machines
Author :
Challa, Challa S. ; Palaniswami, Palaniswami M. ; Shilton, Shilton A.
Author_Institution :
Dept. of Electr. & Electron. Eng., Melbourne Univ., Parkville, Vic., Australia
Abstract :
The basic quantity to be estimated in the Bayesian approach to data fusion is the conditional probability density function (CPDF). Computationally efficient particle filtering approaches are becoming more important in estimating these CPDFs. In this approach, IID samples are used to represent the conditional probability densities. However, their application in data fusion is severely limited due to the fact that the information is stored in the form of a large set of samples. In all practical data fusion systems that have limited communication bandwidth, broadcasting this probabilistic information, available as a set of samples, to the fusion center is impractical. Support vector machines, through statistical learning theory, provide a way of compressing information by generating optimal kernal based representations. In this paper we use SVM to compress the probabilistic information available in the form of IID samples and apply it to solve the Bayesian data fusion problem. We demonstrate this technique on a multi-sensor tracking example.
Keywords :
Bayes methods; data compression; learning automata; sensor fusion; Bayesian data fusion problem; IID samples; conditional probability density function; distributed data fusion; multi-sensor tracking; optimal kernal based representations; particle filtering approaches; probabilistic information compression; statistical learning theory; support vector machines; Bandwidth; Bayesian methods; Density functional theory; Filtering; Fusion power generation; Particle filters; Recursive estimation; Remote sensing; Statistical learning; Support vector machines;
Conference_Titel :
Information Fusion, 2002. Proceedings of the Fifth International Conference on
Conference_Location :
Annapolis, MD, USA
Print_ISBN :
0-9721844-1-4
DOI :
10.1109/ICIF.2002.1020902