Gridless super-resolution sparse recovery for non-sidelooking STAP using reweighted atomic norm minimization

被引:0
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作者
Tao Zhang
Yongsheng Hu
Ran Lai
机构
[1] Civil Aviation University of China,Tianjin Key Laboratory for Advanced Signal Processing
[2] Binzhou University,School of Information Engineering
关键词
Airborne radar; Space–time adaptive processing; Off-grid; Reweighted atomic norm minimization;
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摘要
The sparse recovery space–time adaptive processing (SR-STAP) can reduce the requirements of clutter samples and suppress clutter effectively using limited training samples for airborne radar. Commonly, the whole angle-Doppler plane is uniformly discretized into small grid points in SR-STAP methods. However, the clutter patches deviate from the pre-discretized grid points in a non-sidelooking SR-STAP radar. The off-grid effect degrades the SR-STAP performance significantly. In this paper, a gridless SR-STAP method based on reweighted atomic norm minimization is proposed, in which the clutter spectrum is precisely estimated in the continuous angle-Doppler domain without resolution limit. Numerical simulations are conducted and the results show that the proposed method can achieve better performance than the SR-STAP methods with discretized dictionaries and the SR-STAP methods utilizing atomic norm minimization.
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页码:1259 / 1276
页数:17
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