论文标题
一个新型的注意地震量检测的新型注意力模型
A novel attention model for salient structure detection in seismic volumes
论文作者
论文摘要
提出了一种新的地震解释方法,以利用视觉感知和人类视觉系统建模。具体而言,提出了基于新型注意模型的显着检测算法,用于识别地震数据量内的地下结构。该算法采用3D-FFT和多维光谱投影,该光谱投影将局部光谱分解为三个不同的组件,每个组件都描绘了沿数据的不同维度的变化。随后,提出了一个新颖的定向中心突出模型,以结合每个体素周围的方向比较,以在每个投影维度内进行显着性检测。接下来,将所得的显着性图沿每个维度组合在一起,以产生一个合并的显着图,该图突出了各种结构,这些结构具有微妙的变化和相对于其相邻部分的相对运动。有关地震数据的先验信息可以在定向比较中嵌入提出的注意模型中,也可以通过指定模板在适应性的情况下指定模板来纳入算法中。新西兰北海和大南盆地的两个真实地震数据集的实验结果证明了所提出的算法在一次镜头中检测不同性质和外观的显着地震结构的有效性,这与传统的地震解释算法有很大差异。结果进一步表明,所提出的方法优于自然图像和视频的可比最新显着性检测算法,而这些算法对于地震成像数据而言不足。
A new approach to seismic interpretation is proposed to leverage visual perception and human visual system modeling. Specifically, a saliency detection algorithm based on a novel attention model is proposed for identifying subsurface structures within seismic data volumes. The algorithm employs 3D-FFT and a multi-dimensional spectral projection, which decomposes local spectra into three distinct components, each depicting variations along different dimensions of the data. Subsequently, a novel directional center-surround attention model is proposed to incorporate directional comparisons around each voxel for saliency detection within each projected dimension. Next, the resulting saliency maps along each dimension are combined adaptively to yield a consolidated saliency map, which highlights various structures characterized by subtle variations and relative motion with respect to their neighboring sections. A priori information about the seismic data can be either embedded into the proposed attention model in the directional comparisons, or incorporated into the algorithm by specifying a template when combining saliency maps adaptively. Experimental results on two real seismic datasets from the North Sea, Netherlands and Great South Basin, New Zealand demonstrate the effectiveness of the proposed algorithm for detecting salient seismic structures of different natures and appearances in one shot, which differs significantly from traditional seismic interpretation algorithms. The results further demonstrate that the proposed method outperforms comparable state-of-the-art saliency detection algorithms for natural images and videos, which are inadequate for seismic imaging data.