Title :
Nonstochastic adaptive decision fusion in distributed-detection systems
Author_Institution :
Ain Shams Univ., Cairo, Egypt
fDate :
10/1/2002 12:00:00 AM
Abstract :
Implementing the optimal Neyman-Pearson (NP) fusion rule in distributed detection systems requires the sensor error probabilities to be a priori known and constant during the system operation. Such a requirement is practically impossible to fulfil for every resolution cell in a multiflying target multisensor environment. The true performance of the fusion center is often worse than expected due to fluctuations of the observed environment and instabilities of sensor thresholds. This work considers a nonparametric data fusion situation in which the fusion center knows only the number of the sensors, but ignores their error probabilities and cannot control their thresholds. A data adaptive approach to the problem is adopted, and combining P reports from Q independent distributed sensors through a least squares (LS) formulation to make a global decision is investigated. Such a fusion scheme does not entail strict stationarity of the noise environment nor strict invariance of the sensor error probabilities as is required in the NP formulation. The LS fusion scheme is analyzed in detail to simplify its form and determine its asymptotic behavior. Conditions of performance improvement as P increases and of quickness of such improvement are found. These conditions are usually valid in netted radar surveillance systems.
Keywords :
adaptive signal detection; distributed sensors; error statistics; jamming; least squares approximations; radar detection; search radar; sensor fusion; LS fusion scheme; Monte-Carlo simulations; asymptotic behavior; data adaptive approach; distributed detection systems; fusion center recovery; global decision; jamming; least squares fusion; multiflying target multisensor environment; netted radar surveillance systems; nonparametric data fusion situation; nonstochastic adaptive decision fusion; optimal Neyman-Pearson fusion rule; performance improvement; sensor error probabilities; sensor failure; Detectors; Error probability; Fluctuations; Gaussian noise; Jamming; Least squares methods; Sensor fusion; Sensor systems; Statistical distributions; Testing;
Journal_Title :
Aerospace and Electronic Systems, IEEE Transactions on
DOI :
10.1109/TAES.2002.1145740