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首页> 外文期刊>IEEE Transactions on Geoscience and Remote Sensing >Reweighted Tensor Factorization Method for SAR Narrowband and Wideband Interference Mitigation Using Smoothing Multiview Tensor Model
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Reweighted Tensor Factorization Method for SAR Narrowband and Wideband Interference Mitigation Using Smoothing Multiview Tensor Model

机译:SAR窄带和宽带干扰减轻使用平滑多视图张量模型的重复张力分解方法

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摘要

For the interference suppression problem on synthetic aperture radar (SAR) systems, traditional methods have focused on how to remove one kind of interference through nonparametric methods and parametric methods. However, complicated interferences, including both narrowband interferences (NBIs) and wideband interferences (WBIs), severely affect SAR imaging in practical scenarios. Also, the spectra of the complicated interferences can be continuously distributed, which are even harder to mitigate from the received signal. Hence, in this article, we propose a smoothing multiview (SMV) tensor model in range-azimuth-space domain to represent the intrinsically unified characteristics of the NBIs and the WBIs for SAR systems, reserving more azimuth degrees-of-freedom (DOFs) than the previous MV tensor model. The proposed SMV tensor model can enhance the potential low-rank property of the complicated interferences, even though the interferences may be continuously distributed in low-dimensional domains. Moreover, due to the larger scale of the SMV model than those of the traditional models, a complex reweighted tensor factorization (CRTF) algorithm is proposed to factorize the large-scale tensor into the product of two small-scale tensors, achieving both better computational efficiency and better low-rank approximation of complicated interferences. Finally, the measured SAR data with different kinds of simulated complicated interferences are employed to demonstrate the effectiveness and efficiency of the newly designed SMV model and the proposed method compared with the MV model and the complex tensor robust principal component analysis (CT-RPCA) method.
机译:对于合成孔径雷达(SAR)系统的干扰抑制问题,传统方法专注于如何通过非参数方法和参数方法去除一种干扰。然而,复杂的干扰,包括窄带干扰(NBIS)和宽带干扰(WBIS),严重影响SAR成像在实际情况中。而且,可以连续分布复杂干扰的光谱,这甚至更难地从接收信号减轻。因此,在本文中,我们提出了在范围 - 方位空间域中的平滑多视图(SMV)张量模型,以表示NBIS和SAR系统的内部统一特性,保留更多方位的自由度(DOF)比以前的MV张量模型。所提出的SMV张量模型可以增强复杂干扰的潜在低级特性,即使干扰可以连续分布在低维结构域中。此外,由于SMV模型的规模大于传统模型的规模,提出了一种复杂的重新重量张解分解(CRTF)算法,以将大规模的张量分解成两个小规模张量的产品,实现更好的计算效率和更好的低秩近似复杂干扰。最后,采用不同种类模拟复杂干扰的测量的SAR数据来证明新设计的SMV模型的有效性和效率和与MV模型相比的新设计的SMV模型和所提出的方法的效率和拟议的方法(CT-RPCA)方法相比。

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