D, Nikhil and Khan, Mohammed Zafar Ali
(2018)
Reduced Complexity Optimal Hard Decision
Fusion under Neyman-Pearson Criterion.
Masters thesis, Indian Institute of Technology Hyderabad.
Abstract
Distributed detection is an important part of many of the applications like wireless sensor networks,
cooperative spectrum sensing in the cognitive radio network. Traditionally optimal non-randomized
hard decision fusion rule under Neyman Pearson(NP) criterion is exponential in complexity. But
recently [4] this was solved using dynamic programming. As mentioned in [4] that decision fusion
problem exhibits semi-monotonic property in a special case. We use this property in our simulations
and eventually apply dynamic programming to solve the problem with further reduced complexity.
Further, we study the e�ect of using multiple antennas at FC with reduced complexity rule.
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