Compressive imaging by wavefield inversion with group sparsity

F. Herrmann
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引用次数: 15

Abstract

Migration relies on multi-dimensional correlations between sourceand residual wavefields. These multi-dimensional correlations are computationally expensive because they involve operations with explicit and full matrices that contain both wavefields. By leveraging recent insights from compressive sampling, we present an alternative method where linear correlation-based imaging is replaced by imaging via multidimensional deconvolutions of compressibly sampled wavefields. Even though this approach goes at the expense of having to solve a sparsity-promotion recovery program for the image, our wavefield inversion approach has the advantage of reducing the system size in accordance to transform-domain sparsity of the image. Because seismic images also exhibit a focusing of the energy towards zero offset, the compressive-wavefield inversion itself is carried out using a recent extension of one-norm solver technology towards matrix-valued problems. These so-called hybrid (1, 2)-norm solvers allow us to penalize pre-stack energy away from zero offset while exploiting joint sparsity amongst near-offset images. Contrary to earlier work to reduce modeling and imaging costs through random phase-encoded sources, our method compressively samples wavefields in model space. This approach has several advantages amongst which improved system-size reduction, and more flexibility during subsequent inversions for subsurface properties.
群稀疏波场反演压缩成像
偏移依赖于源波场和剩余波场之间的多维相关性。这些多维关联在计算上是昂贵的,因为它们涉及包含两个波场的显式和完整矩阵的操作。通过利用压缩采样的最新见解,我们提出了一种替代方法,即通过压缩采样波场的多维反卷积成像取代基于线性相关的成像。尽管这种方法的代价是必须解决图像的稀疏性增强恢复程序,但我们的波场反演方法具有根据图像的变换域稀疏性减小系统尺寸的优点。由于地震图像也表现出向零偏移的能量聚焦,因此压缩波场反演本身是使用最近对矩阵值问题的一范数求解器技术的扩展进行的。这些所谓的混合(1,2)范数求解器允许我们在利用近偏移图像之间的联合稀疏性的同时,惩罚远离零偏移的堆栈前能量。与早期通过随机相位编码源降低建模和成像成本的工作相反,我们的方法对模型空间中的波场进行压缩采样。这种方法有几个优点,其中包括改进了系统尺寸的减小,以及在随后的地下性质反演中更具灵活性。
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