Title :
The system probability information content (PIC) relationship to contributing components, combining independent multi-source beliefs, hybrid and pedigree pignistic probabilities
Author_Institution :
Lockheed Martin, Moorestown, NJ, USA
Abstract :
In the design of information fusion systems, the reduction of computational complexity is a key design parameter for real-time implementations. One way to simplify the computations is to decompose the system into subsystems of non-correlated informational components, such as a qualitative informational component, a quantitative informational component, and a complement informational component. A probability information content (PIC) variable (Sudano, 2001) assigns an information content value to any set of system or sub-system probability distributions. The PIC variable is the normalized entropy computed from the probability distribution. This article derives a PIC variable for a subsystem represented by the complement probabilities. This article also derives a relationship between the PIC variable of sub-system components and the system informational PIC variable. A hybrid pignistic probability is introduced that is robust in estimating a probability for any maturity of the incomplete data set. A new methodology of combining independent multisource beliefs is presented. A pedigree pignistic probability is introduced that uses some information of the original fused data sets to compute a better pignistic probability.
Keywords :
belief maintenance; computational complexity; data handling; probability; real-time systems; sensor fusion; complement informational component; computational complexity; hybrid pignistic probability; incomplete data set; information content value; information fusion systems; multi-source belief combination; normalized entropy; pedigree pignistic probability; probability distributions; probability information content; qualitative informational component; quantitative informational component; real-time implementations; Computational complexity; Decision making; Distributed computing; Entropy; Probability distribution; Real time systems; Robustness;
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.2002.1020960