Bayesian quickest signal detection in a discrete-time observation
Abstract
This paper deals with the problem of quickest detection of a signal in discrete-time observations where the noise is not necessarily additive. By introducing a new cost function, penalizing the decision delay, in addition to penalizing wrong decisions as in the classical case, a global risk function is derived for use in a Bayesian framework. The minimization of the average risk leads to the optimum Bayesian decision regions, giving the structure of the optimum receiver. Some simplifications for elementary costs and some applications are investigated. The optimum receiver is shown to be a parallel bank of classical optimum filters, each one matched to a particular delay of the signal to be detected. This approach is shown to apply to the detection of certain changes in a stochastic process.
- Publication:
-
NASA STI/Recon Technical Report A
- Pub Date:
- March 1986
- Bibcode:
- 1986STIA...8635720B
- Keywords:
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- Bayes Theorem;
- Matched Filters;
- Random Noise;
- Signal Detection;
- Stochastic Processes;
- White Noise;
- Receivers;
- Warning Systems;
- Communications and Radar