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首页> 外文期刊>IEEE Geoscience and Remote Sensing Letters >Enhanced Target Detection for HFSWR by 2-D MUSIC Based on Sparse Recovery
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Enhanced Target Detection for HFSWR by 2-D MUSIC Based on Sparse Recovery

机译:基于稀疏恢复的二维MUSIC对HFSWR的增强目标检测

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This letter proposes using the 2-D multiple-signal classification (MUSIC) based on sparse recovery (SR) to improve the target-detection capability of high-frequency surface wave radar (HFSWR). Usually, for wide-beam HFSWRs, target detection is first conducted in the range-Doppler spectrum, and bearings are then estimated by superresolution methods such as MUSIC. Unfortunately, the conventional cascaded method can easily result in unfavorable deterioration of multitarget detection when different target signals tend to become mixed in the Doppler spectrum. Moreover, sea clutter is an unwanted signal that frequently masks target signals. To enhance the detection of multiple targets and targets embedded in sea clutter, spatial-temporal joint estimation has been proposed. However, because of the lack of spatial-temporal snapshots caused by the nonstationarity of target signals, the efficiency of the estimator cannot be guaranteed. To overcome this shortcoming, multiple-measurement-vector-based SR, which has been used to solve many under-sampling problems in the past ten years, is adopted. Our approach can effectively detect a target embedded in sea clutter as well as multiple adjacent targets and distinguish them from each other. Results obtained using real data with opportunistic targets validate our approach. Therefore, the proposed 2-D SR-MUSIC approach improves target detection and outperforms conventional cascaded methods.
机译:这封信提出使用基于稀疏恢复(SR)的二维多信号分类(MUSIC)来提高高频表面波雷达(HFSWR)的目标检测能力。通常,对于宽光束HFSWR,首先在距离多普勒光谱中进行目标检测,然后通过超分辨率方法(例如MUSIC)估算方位。不幸的是,当不同的目标信号倾向于在多普勒频谱中混合时,传统的级联方法可能容易导致多目标检测的不利恶化。而且,海杂波是不想要的信号,经常掩盖目标信号。为了增强对多个目标以及海杂波中嵌入的目标的检测,提出了时空联合估计。然而,由于缺乏由目标信号的非平稳性引起的时空快照,因此无法保证估计器的效率。为了克服该缺点,采用了基于多测量矢量的SR,该SR在过去十年中已用于解决许多欠采样问题。我们的方法可以有效地检测嵌入在海杂波中的目标以及多个相邻目标,并将它们彼此区分开。使用机会主义目标的真实数据获得的结果验证了我们的方法。因此,所提出的2-D SR-MUSIC方法改善了目标检测并优于传统的级联方法。

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