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Improved phase gradient autofocus algorithm based on segments of variable lengths and minimum entropy phase correction

机译:基于可变长度段和最小熵相位校正的改进相位梯度自动聚焦算法

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In this paper, an improved phase gradient autofocus (PGA) Algorithm motion compensation (MOCO) approaches is proposed for the unmanned aerial vehicle (UAV) synthetic aperture radar (SAR) imagery. The approach is implemented in two-steps. The first step determines the length of segments depending on number of good quality scatterers and motion errors obtained from navigation data. In the second step, a novel minimum-entropy phase correction based on the Discrete Cosine Transform (DCT) coefficients is proposed. In this approach, transform phase error estimates by PGA to DCT-coefficient. The entropy of a focused image is utilized as the optimization function of the DCT coefficients to improve the final images quality. Finally, real-data experiments show that the proposed approach is appropriate for highly precise imaging of UAV SAR.
机译:本文针对无人机(UAV)合成孔径雷达(SAR)图像提出了一种改进的相位梯度自动聚焦(PGA)算法运动补偿(MOCO)方法。该方法分两步实施。第一步,根据高质量散射体的数量和从导航数据获得的运动误差,确定路段的长度。第二步,提出了一种基于离散余弦变换(DCT)系数的最小熵相位校正方法。在这种方法中,将PGA的相位误差估计值转换为DCT系数。聚焦图像的熵被用作DCT系数的优化函数,以提高最终图像质量。最后,实际数据实验表明,该方法适用于无人机SAR的高精度成像。

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