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Avoiding local minima in entropy-based SAR autofocus

机译:在基于熵的SAR自动对焦中避免局部极小值

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This paper explores the problem of avoiding local minima solutions in entropy-based synthetic aperture radar (SAR) autofocus. These autofocus algorithms correct defocused SAR images by determining the phase error estimate that produces the image with minimum entropy. However, the optimization strategy may converge to local minima solutions that correspond to incorrect image restorations. We propose two methods for reducing the likelihood of achieving such solutions. The first is a novel wavelet-based decomposition technique that determines the neighborhood of the global entropy minimum. A second strategy is the application of simulated annealing techniques to the optimization. We explore the performance of these methods using simulated SAR data, and provide a justification for how they work. Worst case phase errors in which the phase is random and uncorrelated between elements are considered.
机译:本文探讨了在基于熵的合成孔径雷达(SAR)自动聚焦中避免局部极小值解的问题。这些自动聚焦算法通过确定产生具有最小熵的图像的相位误差估计来校正散焦SAR图像。但是,优化策略可能会收敛到与错误的图像恢复相对应的局部极小值解决方案。我们提出了两种方法来减少实现这种解决方案的可能性。第一种是新颖的基于小波的分解技术,可确定全局熵最小值的邻域。第二种策略是将模拟退火技术应用于优化。我们使用模拟的SAR数据探索这些方法的性能,并为它们的工作原理提供依据。考虑最坏情况下的相位误差,其中相位是随机的并且元素之间不相关。

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