DocumentCode
905254
Title
Optimum weighting functions for the detection of sampled signals in noise
Author
Capon, Jack
Volume
10
Issue
2
fYear
1964
fDate
4/1/1964 12:00:00 AM
Firstpage
152
Lastpage
159
Abstract
The problem of designing a linear predetection filter for the detection of a sampled random signal in additive noise is considered. The design of the filter is based on an optimality criterion which maximizes the signal-to-noise ratio enhancement. The optimum weighting function obtained in this manner has the advantage that it is independent of signal characteristics and depends only on the covariance function of the noise. The optimum filter, for general covariance functions, is obtained for
and
samples. The asymptotic solution for large
is also presented by employing results from the theory of Teeplitz forms. In addition, the complete solution for all
is given for several particular covariance matrices. An application of the results is made to the problem of designing a linear predetection filter in a moving target indication (MTI) radar system. The optimum weighting function for
is a single-cancellation unit, while that for
is similar but not quite the same as a double-cancellation unit. It is shown that the signal-to-noise ratio enhancement provided by the double-cancellation scheme is
db worse than that of the optimum filter when the noise has a Gaussian covariance function.
and
samples. The asymptotic solution for large
is also presented by employing results from the theory of Teeplitz forms. In addition, the complete solution for all
is given for several particular covariance matrices. An application of the results is made to the problem of designing a linear predetection filter in a moving target indication (MTI) radar system. The optimum weighting function for
is a single-cancellation unit, while that for
is similar but not quite the same as a double-cancellation unit. It is shown that the signal-to-noise ratio enhancement provided by the double-cancellation scheme is
db worse than that of the optimum filter when the noise has a Gaussian covariance function.Keywords
Filtering; MTI radar; Signal detection; Acoustic signal detection; Additive noise; Covariance matrix; Information theory; Nonlinear filters; Signal design; Signal detection; Signal processing; Signal to noise ratio; Testing;
fLanguage
English
Journal_Title
Information Theory, IEEE Transactions on
Publisher
ieee
ISSN
0018-9448
Type
jour
DOI
10.1109/TIT.1964.1053664
Filename
1053664
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