DocumentCode
911315
Title
An efficient nonparametric detector based on a three-sample classification model
Author
Woinsky, Melvin N. ; Kurz, Ludwik
Volume
14
Issue
5
fYear
1968
fDate
9/1/1968 12:00:00 AM
Firstpage
744
Lastpage
751
Abstract
The proposed detector uses three vector samples to decide which one of two distinct stationary or quasi-stationary stochastic processes is present at its input. A reference sample is obtained from each of the two processes during an initial learning interval, and the third sample is taken on the decision interval. It is assumed that independent samples can be obtained from the stochastic processes. A weighted linear combination of two
-sample Mann-Whitney statistics defined on the three vector samples is used at the detector. An upper bound on the asymptotic or large-sample error probability is obtained, which indicates that, unlike the
-sample detector, the new detector is insensitive to the {em a priori} signal probability and operates well in an unspecified environment. Comparisons are made between the proposed model and the standard
-sample model at both small and large values of signal-to-noise ratio. An extension to intermediate values of signal-to-noise ratio is obtained by considering two examples, dc signal in additive noise and Lehmann\´s nonparametric class of alternatives. Owing mainly to an invariant optimum threshold setting, the proposed procedure results in a significantly better performance over a wide range of signal-to-noise ratio.
-sample Mann-Whitney statistics defined on the three vector samples is used at the detector. An upper bound on the asymptotic or large-sample error probability is obtained, which indicates that, unlike the
-sample detector, the new detector is insensitive to the {em a priori} signal probability and operates well in an unspecified environment. Comparisons are made between the proposed model and the standard
-sample model at both small and large values of signal-to-noise ratio. An extension to intermediate values of signal-to-noise ratio is obtained by considering two examples, dc signal in additive noise and Lehmann\´s nonparametric class of alternatives. Owing mainly to an invariant optimum threshold setting, the proposed procedure results in a significantly better performance over a wide range of signal-to-noise ratio.Keywords
Nonparametric detection; Pattern classification; Additive noise; Detectors; Probability; Signal detection; Signal to noise ratio; Statistics; Stochastic processes; Telephony; Testing; Vectors;
fLanguage
English
Journal_Title
Information Theory, IEEE Transactions on
Publisher
ieee
ISSN
0018-9448
Type
jour
DOI
10.1109/TIT.1968.1054218
Filename
1054218
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