Title :
Optimal, causal, simultaneous detection and estimation of random signal fields in a Gaussian noise field
fDate :
5/1/1978 12:00:00 AM
Abstract :
Two methods are presented for simultaneously detecting a random signal field and estimating its Markovian parameters in the qq prurience of a white Gaussian noise field. The first method provides the Neyman-Pearson decision rule for determining the absence-or-presence of the signal and the maximum {em a posteriori} likelihood estimators of the parameters. The second provides the Bayes decision rule for the absence-or-presence of the signal and the minimum mean-square error estimators of the parameters. Both methods allow continual causal detection and estimation based on the continuous space-time data, and their detection and estimation statistics are given in terms of a single statistic, which is the solution of a certain stochastic integral equation. Furthermore, an approximate scheme is developed for recursively generating this statistic by using spatially and temporally sampled data.
Keywords :
Bayes procedures; Least-squares estimation; Markov processes; Multidimensional signal processing; Signal detection; Signal estimation; maximum-likelihood (ML) estimation; Amplitude estimation; Frequency estimation; Gaussian noise; Integral equations; Parameter estimation; Recursive estimation; Signal detection; Statistics; Stochastic resonance; White noise;
Journal_Title :
Information Theory, IEEE Transactions on
DOI :
10.1109/TIT.1978.1055887