Tensor-Based Near-Field Localization in Bistatic MIMO Radar Systems

Ivan Podkurkov1, Liana Hamidullina1, Evgenii Traikov2, Martin Haardt1, Thomas Jost3

  • 1Ilmenau University of Technology
  • 2Ilmenau University of Technology, Kazan National Research Technical University
  • 3German Aerospace Center (DLR)

Details

12:10 - 14:20 | Fri 16 Mar | ID 04/445 | P02-6

Session: Signal Processing for Wireless

Abstract

Several new algorithms have been proposed recently for near-field target localization and parameter estimation in Bistatic MIMO Radar systems. The new approaches include the usage of the exact spherical wavefront model, which avoids a systematic error introduced by the Fresnel approximation that is commonly made on impinging wavefronts in order to simplify the estimation problem. In this paper, we propose a new Tensor based Near-Field Localization (TeNFiL) algorithm that utilizes the Canonical Polyadic (CP) decomposition of the received data in order to obtain high-resolution estimates of the parameters of the dominant targets that are automatically paired. Those parameters include the distances to the transmit and the receive reference antennas, the directions of departure (DoDs) and the directions of arrival (DoAs). The algorithm is based on the Semi-algebraic framework for approximate CP decompositions via Simultaneous Matrix Diagonalizations (SECSI). It is used to compute an approximate low rank CP decomposition of the noise corrupted measurements in a robust and efficient way. The simulations show that TeNFiL outperforms recent state of the art algorithms, especially if the targets are closely spaced.