PROJECT TITLE :
Distributed fuzzy maximum-censored mean level detector-constant false alarm rate detector based on voting fuzzy fusion rule
ABSTRACT:
In this study, a brand new distributed fuzzy most-censored mean level detector (MX-CMLD) constant false alarm rate (CFAR) detection based mostly on fuzzy area and voting fuzzy fusion rule is presented. Within the distributed fuzzy MX-CMLD CFAR detector, each sensor computes the worth of the membership operate to the false alarm house from the samples of the reference cells and transmits it to the fusion centre. The values are combined according to the voting fuzzy fusion rule and therefore the credibility measure of every sensor to produce a international membership perform to the false alarm house within the fusion centre. The simulation results show that the detection performance of the distributed fuzzy MX-CMLD CFAR detector is healthier than the opposite fuzzy distributed detectors in homogeneous and non-homogeneous background. Furthermore, the simulation results indicate that the fuzzy algebraic product operator rule offers higher performance than the binary AND and therefore the binary OR fusion rules.
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