par Willame, Martin;Yildirim, Hasan Can ;Storrer, Laurent ;Horlin, François ;Louveaux, Jérôme
Référence (17-22 March, 2024: Glasgow, UK), Proc. of the 18th European Cnference on Antennas and Propagation (EuCAP)
Publication Publié, 2024-03-17
Référence (17-22 March, 2024: Glasgow, UK), Proc. of the 18th European Cnference on Antennas and Propagation (EuCAP)
Publication Publié, 2024-03-17
Publication dans des actes
Résumé : | This study investigates the problem of angle-based localization of multiple targets using a multistatic OFDM radar. Although the maximum likelihood (ML) approach can be employed to merge data from different radar pairs, this method requires a high complexity multidimensional search process. The multiple signal classification (MUSIC) algorithm simplifies the complexity to a two-dimensional search, but no framework is derived for combining MUSIC pseudo-spectrums in a multistatic configuration. This paper exploits the relationship between MU-SIC and ML estimators to approximate the multidimensional ML parameter estimation with a weighted combination of MUSIC pseudo-spectrum. This enables the computation of a likelihood map on which a peak selection is applied for target detection. In addition to reducing the computational complexity, the proposed method relies only on transmitting the estimated channel covariance matrices of each radar pair to the central processor. A numerical analysis is conducted to assess the benefits of the proposed fusion. |