Methods and System Design of the IFD03 Information Fusion Demonstrator

The Swedish Defence Research Agency has developed a concept demonstrator for demonstrating information fusion methodology focused on intelligence processing at the division level for a future Network Based Defence (NBF) / Network Centric Warfare (NCW) C4ISR system. The demonstrator integrates force aggregation, particle filtering and sensor allocation methods to construct, dynamically update and maintain a situation picture.

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