Abstract
In this study, the authors discuss the topic of joint angle and Doppler frequency estimation in a monostatic multipleinput- multiple-output radar and a compressed sensing parallel factor (CS-PARAFAC) analysis-based algorithm is proposed. In this algorithm, the joint estimation problem is firstly linked to the compressed sensing trilinear model, then the estimated compressed matrix can be derived through trilinear alternating least square method and the angle and Doppler frequency are jointly estimated with sparsity from the compressed matrices. The proposed CS-PARAFAC algorithm, which can obtain automatically paired angle and Doppler frequency estimation, has very close estimation performance to the conventional parallel factor analysis algorithm. When compared to the conventional subspace-based algorithm, such as estimation of signal parameters via rotational invariance techniques, it can achieve much better joint angle and Doppler frequency estimation performance. As the compression, the proposed algorithm has much lower computational complexity and smaller memory capacity meanwhile. Numerical simulations verify the efficiency and illustrate performance improvement of the proposed algorithm.
Cite
CITATION STYLE
Cao, R., Zhang, X., & Chen, W. (2014). Compressed sensing parallel factor analysis-based joint angle and Doppler frequency estimation for monostatic multiple-input-multiple-output radar. IET Radar, Sonar and Navigation, 8(6), 597–606. https://doi.org/10.1049/iet-rsn.2013.0242
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