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ROBUST SEQUENTIAL TESTING OF MULTIPLE HYPOTHESES IN DISTRIBUTED SENSOR NETWORKS

Citation Author(s):
Mark R. Leonard, Maximilian Stiefel, Michael Fauss, Abdelhak M. Zoubir
Submitted by:
Mark Leonard
Last updated:
12 April 2018 - 12:06pm
Document Type:
Poster
Document Year:
2018
Event:
Presenters:
Mark R. Leonard
Paper Code:
SPTM-P6.1
 

The problem of sequential multiple hypothesis testing in a distributed sensor network is considered and two algorithms are proposed: the Consensus + Innovations Matrix Sequential Probability Ratio Test (CIMSPRT) for multiple simple hypotheses and the robust Least-Favorable-Density-CIMSPRT for hypotheses with uncertainties in the corresponding distributions. Simulations are performed to verify and evaluate the performance of both algorithms under different network conditions and noise contaminations.

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