An overview on the time delay estimate in active and passive systems for target localization
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TL;DR: The analysis shows that in the case of low SNR and when signal and noise autospectra are constants over the band or signal and noises fall off at the same rate, the minimum standard deviation of the time delay estimate varies inversely to the SNR, to the square root of the product of observation time and bandwidth, and to the center frequency.
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Abstract: Sonar and radar systems not only detect targets but also localize them. The process of localization involves bearing and range estimation. These objectives of bearing and range estimation can be accomplished actively or passively, depending on the situation. In active sonar or radar systems, a pulsed signal is transmitted to the target and the echo is received at the receiver. The range of the target is determined from the time delay obtained from the echo. In passive sonar systems, the target is detected from acoustic signals emitted by the target, and it is localized using time delays obtained from received signals at spacially separated points. Several authors have calculated the variance of the time delay estimate in the neighborhood of true time delays and have presented their results in terms of coherence function and signal and noise autospectra. Here we analyze these derivations and show that they are the same for the case of low signal-to-noise ratio (SNR). We also address a practical problem with a target-generated wide-band signal and present the Cramer-Rao lower bound on the variance of the time delay estimate as a function of commonly understood terms such as SNR, bandwidth, observation time, and center frequency of the band. The analysis shows that in the case of low SNR and when signal and noise autospectra are constants over the band or signal and noise autospectra fall off at the same rate, the minimum standard deviation of the time delay estimate varies inversely to the SNR, to the square root of the product of observation time and bandwidth, and to the center frequency (provided W^{2}/12 f\min{0}\max{2} \ll 1 , where W = bandwidth and f_{0} = center frequency of the band). The only difference in the case of a high SNR is that the standard deviation varies inversely to the square root of the SNR, and all other parameter relationships are the same. We also address the effects of different signal and noise autospectral slopes on the variance of the time delay estimate in passive localization.
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References
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TL;DR: In this paper, a maximum likelihood estimator is developed for determining time delay between signals received at two spatially separated sensors in the presence of uncorrelated noise, where the role of the prefilters is to accentuate the signal passed to the correlator at frequencies for which the signal-to-noise (S/N) ratio is highest and suppress the noise power.
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Optimum signal processing for passive sonar range and bearing estimation
TL;DR: In this paper, the Cramer-Rao bound is used to determine an optimum signal processor for passive sonar target range and bearing estimation, where the sonar array consists of an M • element linear array of hydrophone point detectors.
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Optimum Passive Bearing Estimation in a Spatially Incoherent Noise Environment
TL;DR: In this article, the Cramer-Rao technique is used to set a lower bound on the rms bearing error and the results are compared with the bearing error of a slightly modified split-beam tracker.
203
Locating a passive source with array measurements a summary of results
P.M. Schultheiss
- 01 Apr 1979
TL;DR: Lower bounds on bearing and range accuracy and their implications for practical instrumentations are given and sensitivity to uncertainties in sensor location and ambiguities in delay measurement caused by very narrowband signals is examined.
30
5 – simple theory of radar reception
P.M. Woodward
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TL;DR: In this paper, the authors discuss the informationally essential operations of reception in a simple idealized radar system for detecting the presence and measuring the range of an isolated point-target.
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