The paper deals with distributed tracking of a maneuvering target by means of a network of heterogeneous sensors and communication nodes. To effectively cope with target maneuvers, multiple-model filtering is adopted after being extended to a fully distributed processing framework by means of suitable consensus techniques. Novel Distributed first-order Generalized Pseudo Bayesian (DGPB1) and Distributed Interacting Multiple Model (DIMM) algorithms are presented. Simulation experiments on critical tracking case studies involving a highly maneuvering target and sensor networks characterized by weak connectivity and target observability properties demonstrate the effectiveness of the proposed distributed multiple-model filters.
Multiple-model algorithms for distributed tracking of a maneuvering target / C. Fantacci; G. Battistelli; L. Chisci; A. Farina; A. Graziano. - STAMPA. - (2012), pp. 1028-1035. (Intervento presentato al convegno 15th International Conference on Information Fusion, FUSION 2012 tenutosi a Singapore).
Multiple-model algorithms for distributed tracking of a maneuvering target
FANTACCI, CLAUDIO;BATTISTELLI, GIORGIO;CHISCI, LUIGI;
2012
Abstract
The paper deals with distributed tracking of a maneuvering target by means of a network of heterogeneous sensors and communication nodes. To effectively cope with target maneuvers, multiple-model filtering is adopted after being extended to a fully distributed processing framework by means of suitable consensus techniques. Novel Distributed first-order Generalized Pseudo Bayesian (DGPB1) and Distributed Interacting Multiple Model (DIMM) algorithms are presented. Simulation experiments on critical tracking case studies involving a highly maneuvering target and sensor networks characterized by weak connectivity and target observability properties demonstrate the effectiveness of the proposed distributed multiple-model filters.I documenti in FLORE sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.