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首页> 外文期刊>Journal of Applied Geophysics >Channel boundary detection based on 2D shearlet transformation: An application to the seismic data in the South Caspian Sea
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Channel boundary detection based on 2D shearlet transformation: An application to the seismic data in the South Caspian Sea

机译:基于2D Shearlet转换的信道边界检测:南方海洋地震数据的应用

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摘要

AbstractBecause channels are seen as potential reservoirs and drilling risks, channel interpretation of seismic data can be considered as one of the demanding tasks in interpretation workstations. Shearlet transform, as a multi-scale and multi-directional transformation, is highly capable of detecting features with different dips and has found numerous applications in image processing tasks. The anisotropy property of the shearlet transform can be employed to detect edges where channels may occur in the seismic data. In this study, cone-adapted compactly-supported 2D shearlet transform was applied to both synthetic and real seismic data in the South Caspian Sea containing channels in order to decompose the data into different scales and directions. In order to detect the edges, the local maxima of shearlet coefficients were calculated at each pixel location at the finest scale of decomposition in both horizontal and vertical cones based on maximizing the shearlet coefficients for all shearing directions. Global thresholding based on the histogram of the local maxima followed by thinning were applied to delineate the edge pixels. The results of the proposed algorithm were compared qualitatively and quantitatively with those from classic image processing edge detectors such as Sobel and Canny. In both synthetic and real seismic data examples, our algorithm outperformed Sobel and Canny operators.Highlights
机译:<![cdata [ 抽象 因为频道被视为潜在的储层和钻孔风险,地震数据的渠道解释可以被视为其中一个令人苛刻的诠释工作站。作为多尺度和多向变换的Shearlet变换非常能够检测具有不同点的功能,并在图像处理任务中找到了许多应用。可以采用Shearlet变换的各向异性特性来检测在地震数据中可能发生通道的边缘。在本研究中,锥形适应的紧凑型支撑的2D Shearlet变换应用于南部Caspian海洋的合成和实际地震数据,以便将数据分解为不同的刻度和方向。为了检测边缘,基于为所有剪切方向最大化的剪切系数,在水平和垂直锥体中的每个像素位置计算Shearlet系数的局部最大值。基于本地最大值的直方图,然后施加变薄的全局阈值化以描绘边缘像素。质量且定量地比较了所提出的算法的结果,与来自经典图像处理边缘探测器(如Sobel和Canny)的那些进行比较。在合成和实际地震数据示例中,我们的算法优于Sobel和Canny运算符。 亮点

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