An Outlook on Seismic Diffraction Imaging Using Pattern Recognition

B. Lowney, I. Lokmer, C. Bean, G. O'Brien, M. Igoe
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引用次数: 4

Abstract

A seismic image is formed by interactions of the seismic wavefield with geological interfaces, in the form of reflections, diffractions, and other coherent noise. While in conventional processing workflows reflections are favoured over diffractions, this is only beneficial in areas with uniform stratigraphy. Diffractions form as interactions of the wavefield with discontinuities and therefore can be used to image them. However, to image diffractions, they must first be separated from the seismic wavefield. Here we propose a pattern recognition approach for separation, employing image segmentation. We then compare this to two existing diffraction imaging methods, plane-wave destruction and f-k filtering. Image segmentation can be used to divide the image into pixels which share certain criteria. Here, we have separated the image first by amplitude using a histogram-based segmentation method, followed by edge detection with a Sobel operator to locate the hyperbola. The image segmentation method successfully locates diffraction hyperbola which can then be separated and migrated for diffraction imaging. When compared with plane-wave destruction and f-k filtering, the image segmentation method proves beneficial as it allows for identification of the hyperbolae without noise. However, the method can fail to identify hyperbolae in noisier environments and when hyperbolae overlap.
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模式识别在地震衍射成像中的应用展望
地震图像是由地震波场与地质界面以反射、衍射和其他相干噪声的形式相互作用形成的。虽然在传统的处理工作流程中,反射比衍射更有利,但这只在地层均匀的地区有益。衍射形成与不连续的波场的相互作用,因此可以用来成像。然而,为了成像衍射,它们必须首先从地震波场中分离出来。在这里,我们提出了一种模式识别方法的分离,采用图像分割。然后,我们将其与两种现有的衍射成像方法,平面波破坏和f-k滤波进行了比较。图像分割可用于将图像划分为共享某些标准的像素。在这里,我们首先使用基于直方图的分割方法通过幅度分离图像,然后使用Sobel算子进行边缘检测以定位双曲线。图像分割方法成功地定位了衍射双曲线,并对其进行了分离和迁移,实现了衍射成像。当与平面波破坏和f-k滤波相比较时,图像分割方法被证明是有益的,因为它允许在没有噪声的情况下识别双曲线。然而,该方法在噪声环境和双曲线重叠时无法识别双曲线。
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