Novel maximum likelihood approach for passive detection and localisation of multiple emitters

Abstract In this paper, a novel target acquisition and localisation algorithm (TALA) is introduced that offers a capability for detecting and localising multiple targets using the intermittent “signals-of-opportunity” (e.g. acoustic impulses or radio frequency transmissions) they generate. The TALA...

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Main Author: Marcel Hernandez
Format: Article
Language:English
Published: SpringerOpen 2017-05-01
Series:EURASIP Journal on Advances in Signal Processing
Subjects:
Online Access:http://link.springer.com/article/10.1186/s13634-017-0473-0
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spelling doaj-23716138f0994b0ba160a7459cf9720f2020-11-25T00:32:15ZengSpringerOpenEURASIP Journal on Advances in Signal Processing1687-61802017-05-012017112410.1186/s13634-017-0473-0Novel maximum likelihood approach for passive detection and localisation of multiple emittersMarcel Hernandez0Hernandez Technical Solutions LtdAbstract In this paper, a novel target acquisition and localisation algorithm (TALA) is introduced that offers a capability for detecting and localising multiple targets using the intermittent “signals-of-opportunity” (e.g. acoustic impulses or radio frequency transmissions) they generate. The TALA is a batch estimator that addresses the complex multi-sensor/multi-target data association problem in order to estimate the locations of an unknown number of targets. The TALA is unique in that it does not require measurements to be of a specific type, and can be implemented for systems composed of either homogeneous or heterogeneous sensors. The performance of the TALA is demonstrated in simulated scenarios with a network of 20 sensors and up to 10 targets. The sensors generate angle-of-arrival (AOA), time-of-arrival (TOA), or hybrid AOA/TOA measurements. It is shown that the TALA is able to successfully detect 83–99% of the targets, with a negligible number of false targets declared. Furthermore, the localisation errors of the TALA are typically within 10% of the errors generated by a “genie” algorithm that is given the correct measurement-to-target associations. The TALA also performs well in comparison with an optimistic Cramér-Rao lower bound, with typical differences in performance of 10–20%, and differences in performance of 40–50% in the most difficult scenarios considered. The computational expense of the TALA is also controllable, which allows the TALA to maintain computational feasibility even in the most challenging scenarios considered. This allows the approach to be implemented in time-critical scenarios, such as in the localisation of artillery firing events. It is concluded that the TALA provides a powerful situational awareness aid for passive surveillance operations.http://link.springer.com/article/10.1186/s13634-017-0473-0Passive detection and localisationMulti-sensor/multi-target data associationMaximum likelihood estimationGauss-Newton gradient descentCramér-Rao lower boundTime-of-arrival measurements
collection DOAJ
language English
format Article
sources DOAJ
author Marcel Hernandez
spellingShingle Marcel Hernandez
Novel maximum likelihood approach for passive detection and localisation of multiple emitters
EURASIP Journal on Advances in Signal Processing
Passive detection and localisation
Multi-sensor/multi-target data association
Maximum likelihood estimation
Gauss-Newton gradient descent
Cramér-Rao lower bound
Time-of-arrival measurements
author_facet Marcel Hernandez
author_sort Marcel Hernandez
title Novel maximum likelihood approach for passive detection and localisation of multiple emitters
title_short Novel maximum likelihood approach for passive detection and localisation of multiple emitters
title_full Novel maximum likelihood approach for passive detection and localisation of multiple emitters
title_fullStr Novel maximum likelihood approach for passive detection and localisation of multiple emitters
title_full_unstemmed Novel maximum likelihood approach for passive detection and localisation of multiple emitters
title_sort novel maximum likelihood approach for passive detection and localisation of multiple emitters
publisher SpringerOpen
series EURASIP Journal on Advances in Signal Processing
issn 1687-6180
publishDate 2017-05-01
description Abstract In this paper, a novel target acquisition and localisation algorithm (TALA) is introduced that offers a capability for detecting and localising multiple targets using the intermittent “signals-of-opportunity” (e.g. acoustic impulses or radio frequency transmissions) they generate. The TALA is a batch estimator that addresses the complex multi-sensor/multi-target data association problem in order to estimate the locations of an unknown number of targets. The TALA is unique in that it does not require measurements to be of a specific type, and can be implemented for systems composed of either homogeneous or heterogeneous sensors. The performance of the TALA is demonstrated in simulated scenarios with a network of 20 sensors and up to 10 targets. The sensors generate angle-of-arrival (AOA), time-of-arrival (TOA), or hybrid AOA/TOA measurements. It is shown that the TALA is able to successfully detect 83–99% of the targets, with a negligible number of false targets declared. Furthermore, the localisation errors of the TALA are typically within 10% of the errors generated by a “genie” algorithm that is given the correct measurement-to-target associations. The TALA also performs well in comparison with an optimistic Cramér-Rao lower bound, with typical differences in performance of 10–20%, and differences in performance of 40–50% in the most difficult scenarios considered. The computational expense of the TALA is also controllable, which allows the TALA to maintain computational feasibility even in the most challenging scenarios considered. This allows the approach to be implemented in time-critical scenarios, such as in the localisation of artillery firing events. It is concluded that the TALA provides a powerful situational awareness aid for passive surveillance operations.
topic Passive detection and localisation
Multi-sensor/multi-target data association
Maximum likelihood estimation
Gauss-Newton gradient descent
Cramér-Rao lower bound
Time-of-arrival measurements
url http://link.springer.com/article/10.1186/s13634-017-0473-0
work_keys_str_mv AT marcelhernandez novelmaximumlikelihoodapproachforpassivedetectionandlocalisationofmultipleemitters
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