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Compressive Sensing-Based ISAR Imaging via the Combination of the Sparsity and Nonlocal Total Variation

机译:结合稀疏性和非局部总变化的基于压缩感知的ISAR成像

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摘要

The sparsity of targets intrinsically paves a new way to apply compressive sensing (CS) to inverse SAR (ISAR) imaging. However, in the CS-based ISAR imaging system, the ISAR image is considered as a vector composed of random and independent scattering points, and the dependence between pixels is ignored, which always results in the degradation of the shape and geometry of targets, especially when the number of CS measurements and the signal-to-noise ratio are small. In this letter, a novel ISAR imaging framework is proposed via a combination of local sparsity constraint and nonlocal total variation (NLTV). The sparsity is a form prior that the number of strong scattering points is smaller than that of pixels in the image plane. It plays the role of classification of the strong scattering point from the clutter background. NLTV aims to suppress the noise and to remove some false strong scattering centers or clutter and simultaneously preserves the shape and geometry of target regions. Experiments on real data confirm the proposed method's validity.
机译:目标的稀疏性本质上为将压缩感测(CS)应用于反SAR(ISAR)成像开辟了一条新途径。然而,在基于CS的ISAR成像系统中,ISAR图像被视为由随机且独立的散射点组成的矢量,并且像素之间的依赖性被忽略,这总是导致目标的形状和几何形状下降,尤其是当CS测量次数和信噪比较小时。在这封信中,通过结合局部稀疏约束和非局部总变化(NLTV)提出了一种新颖的ISAR成像框架。稀疏性是强散射点的数量小于图像平面中像素的数量的一种形式。它起从杂乱背景分类强散射点的作用。 NLTV旨在抑制噪声并消除一些错误的强散射中心或杂波,同时保留目标区域的形状和几何形状。真实数据实验证明了该方法的有效性。

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