一种计算可行的SAR反平移运动补偿优化方法

Risto Vehmas, J. Jylha, Minna Vaila, Jarkko Kylmala
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引用次数: 4

摘要

传统的逆合成孔径雷达平动补偿方法是解决距离对准和自动对焦两个不同部分的问题。本文在此基础上,提出了一种基于全局距离对准和对比度优化的自动对焦方法。所提出的距离对准程序将轨迹参数化为样条多项式,并最小化由包络差的平方和决定的损失函数。采用差分进化算法进行必要的数值全局优化。自动对焦问题的求解采用了一阶数值优化方法,利用损失函数的梯度表达式求解。在本文中,我们考虑了反向投影的情况,但所提出的方法很容易扩展到其他重建技术。我们用模拟的逆合成孔径雷达数据来验证所提出的方法,并说明其计算效率。
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A computationally feasible optimization approach to inverse SAR translational motion compensation
The traditional approach to inverse synthetic aperture radar translational motion compensation is to solve the problem in the two distinct parts of range alignment and autofocus. In this paper, we follow this practice and propose an approach based on the global range alignment and contrast optimization autofocus methods. The proposed range alignment procedure parametrizes the track as a spline polynomial and minimizes the loss function determined by the sum of the squared envelope differences. The necessary numerical global optimization is performed with the differential evolution algorithm. The solution of the autofocus problem is produced with first order numerical optimization, as we solve it by using an expression derived for the gradient of the loss function. In this paper, we consider the back-projection case but the proposed approach is easily extended to other reconstruction techniques. We use simulated inverse synthetic aperture radar data to demonstrate the proposed approach and to illustrate its computational efficiency.
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