Unique Maximum Likelihood Localization of Nuclear Sources

2019 IEEE 58TH CONFERENCE ON DECISION AND CONTROL (CDC)(2019)

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摘要
In an earlier paper, [1], we have considered the Maximum Likelihood (ML) localization of a stationary nuclear source using the time of arrival of particles modeled as a Poisson process at a sensing vehicle moving with a constant velocity. In this paper we consider whether the ML location estimate characterized in [1] is unique. Using Morse theory we show that not only is the likelihood function unimodal on either side of the line the sensor moves on (note the source can only be localized uniquely if one knows on which side it resides), but that in fact it has only one critical point in each side and this critical point is the global maximum. These results strongly indicate that gradient ascent maximization will always work. We verify these results with real field data.
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关键词
unique Maximum Likelihood localization,stationary nuclear source,time of arrival,Poisson process,sensing vehicle,constant velocity,ML location estimate,Morse theory,likelihood function unimodal,critical point,global maximum,gradient ascent maximization
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