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On the periodogram estimators of periods from interleaved sparse, noisy timing data

Authors :
I. Vaughan L. Clarkson
Robby G. McKilliam
Barry G. Quinn
Quinn, Barry G
Clarkson, I
McKilliam, Robert George
Workshop on Statistical Signal Processing (SSP 14) Gold Coast, Australia 2014-06-29
Source :
SSP
Publication Year :
2014
Publisher :
US : IEEE Press, 2014.

Abstract

We examine the problem of estimating the periods of interleaved periodic point processes. We are particularly interested in the case where times of arrival (TOAs) are either measured with noise or not measured at all. This can arise in communications surveillance, where communications signals of different bauds may lie within the same surveillance bandwidth, and likewise in Electronic Surveillance (ES), where pulses or scans from different radars are observed together. In [1], the authors developed a general asymptotic theory for the Bartlett point-process periodogram estimator of the period of a single periodic process. In this paper, we extend the model to multiple periodic processes, each with a distinct period. The TOAs are observed unlabelled and in time order, i.e., they are interleaved. The largest local maximizers of the periodogram are shown to be good estimators of the unknown periods, asymptotically, and central limit theorems are proved. Simulations highlight a number of practical problems, and some problems with outstanding solutions are suggested.

Details

Language :
English
Database :
OpenAIRE
Journal :
SSP
Accession number :
edsair.doi.dedup.....50d48dce66579c6f1db1f0cd9c3e1d28