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Sparsity-Driven Change Detection in Multitemporal SAR Images

机译:多时相SAR图像中的稀疏驱动变化检测

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摘要

In this letter, a method for detecting changes in multitemporal synthetic aperture radar (SAR) images by minimizing a novel cost function is proposed. This cost function is constructed with log-ratio-based data fidelity terms and an $ell_{1}$-norm-based total variation (TV) regularization term. Log-ratio terms model the changes between the two SAR images where the TV regularization term imposes smoothness on these changes in a sparse manner such that fine details are extracted while effects like speckle noise are reduced. The proposed method, sparsity-driven change detection (SDCD), employs accurate approximation techniques for the minimization of the cost function since data fidelity terms are not convex and the employed $ell_{1}$-norm TV regularization term is not differentiable. The performance of the SDCD is shown on real-world SAR images obtained from various SAR sensors.
机译:在这封信中,提出了一种通过最小化新型成本函数来检测多时相合成孔径雷达(SAR)图像变化的方法。该成本函数由基于对数比率的数据保真度项和基于$ ell_ {1} $范数的总变化(TV)正则化项构成。对数比率项对两个SAR图像之间的变化进行建模,其中TV正则化项以稀疏方式对这些变化施加了平滑度,从而提取了细微的细节,同时减少了诸如斑点噪声的影响。由于数据保真度项不是凸的并且所采用的$ ell_ {1} $-norm TV正则化项是不可微的,因此所提出的方法(稀疏驱动的变化检测(SDCD))采用精确的近似技术来使成本函数最小化。 SDCD的性能显示在从各种SAR传感器获得的真实SAR图像上。

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