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首页> 外文期刊>Selected Topics in Applied Earth Observations and Remote Sensing, IEEE Journal of >Sparsity-Driven SAR Imaging for Highly Maneuvering Ground Target by the Combination of Time-Frequency Analysis and Parametric Bayesian Learning
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Sparsity-Driven SAR Imaging for Highly Maneuvering Ground Target by the Combination of Time-Frequency Analysis and Parametric Bayesian Learning

机译:时频分析与参数贝叶斯学习相结合的稀疏驱动SAR成像技术用于高机动地面目标

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摘要

In this paper, a well-focused synthetic aperture radar (SAR) image for highly maneuvering ground target is formed. For high-resolution SAR imaging, the phase modulation from the maneuverer's high-order movements severely degrades the focusing quality of the target image, if the conventional SAR imaging algorithm under the constant target velocity assumption is used. To deal with this problem, a new SAR ground moving target imaging (GMTIm) algorithm is presented with a two-step strategy to obtain a high-resolution maneuvering target image with highly focused responses. Pseudo Wigner-Ville distribution is first employed to access and compensate for the bulk of the high-order phase. Then, to further enhance the target image quality, the SAR-GMTIm problem is solved by sparse Bayesian learning (SBL), where an accurate phase autofocusing is incorporated for the compensation of the residual high-order phase. A novel time-frequency representation, known as Lv's distribution, is adopted to determine the parametric dictionary used in the SBL processing. To accommodate the possible multiple-target imaging scenario, the intended SAR-GMTIm algorithm is developed in a coarse-to-fine compensation procedure. Finally, both simulated data and real Gotcha data are applied to validate the effectiveness and superiority of the proposed SAR imaging algorithm for ground maneuvering targets.
机译:在本文中,形成了用于高度机动地面目标的聚焦良好的合成孔径雷达(SAR)图像。对于高分辨率SAR成像,如果使用恒定目标速度假设下的常规SAR成像算法,则操纵者的高阶运动产生的相位调制会严重降低目标图像的聚焦质量。为了解决这个问题,提出了一种新的SAR地面移动目标成像(GMTIm)算法,该算法采用两步策略来获得具有高度聚焦响应的高分辨率机动目标图像。首先使用伪Wigner-Ville分布来访问和补偿高阶相位的大部分。然后,为进一步提高目标图像质量,通过稀疏贝叶斯学习(SBL)解决了SAR-GMTIm问题,其中结合了精确的相位自动聚焦功能以补偿残留的高阶相位。采用一种新颖的时频表示形式,即Lv分布,来确定SBL处理中使用的参数字典。为了适应可能的多目标成像情况,在粗到精补偿程序中开发了预期的SAR-GMTIm算法。最后,通过仿真数据和实际Gotcha数据来验证所提出的SAR成像算法对地面机动目标的有效性和优越性。

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