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Passive detection of a random signal common to multi-sensor reference and surveillance arrays

Abstract: This paper addresses the passive detection of a common rank-one subspace signal received in two multi-sensor arrays. We consider the case of a one-antenna transmitter sending a common Gaussian signal, independent Gaussian noises with arbitrary spatial covariance, and known channel subspaces. The detector derived in this paper is a generalized likelihood ratio (GLR) test. For all but one of the unknown parameters, it is possible to find closed-form maximum likelihood (ML) estimator functions. We can further compress the likelihood to only an unknown vector whose ML estimate requires maximizing a product of ratios in quadratic forms, which is carried out using a trust-region algorithm. We propose two approximations of the GLR that do not require any numerical optimization: one based on a sample-based estimator of the unknown parameter whose ML estimate cannot be obtained in closed-form, and one derived under low-SNR conditions. Notably, all the detectors are scale-invariant, and the approximations are functions of beamformed data. However, they are not GLRTs for data that has been pre-processed with a beamformer, a point that is elaborated in the paper. These detectors outperform previously published correlation detectors on simulated data, in many cases quite significantly. Moreover, performance results quantify the performance gains over detectors that assume only the dimension of the subspace to be.

 Autoría: Ramirez D., Santamaria I., Scharf L.L.,

 Fuente: IEEE Transactions on Vehicular Technology, 2024, 73(7), 10106-10117

 Editorial: Institute of Electrical and Electronics Engineers, Inc.

 Fecha de publicación: 16/02/2024

 Nº de páginas: 12

 Tipo de publicación: Artículo de Revista

 DOI: 10.1109/TVT.2024.3366757

 ISSN: 0018-9545,1939-9359

 Proyecto español: PID2021-123182OB-I00

 Url de la publicación: https://.doi.org/10.1109/TVT.2024.3366757

Autoría

DAVID RAMIREZ GARCIA

LOUIS L. SCHARF