Seismic data processing heavily relies on the solution of physics-driven inverse problems. In the presence of unfavourable data acquisition conditions (e.g., regular or irregular coarse sampling of sources and/or receivers), the underlying inverse problem becomes very ill-posed and prior information is required to obtain a satisfactory solution. Sparsity-promoting inversion, coupled with fixed-basis sparsifying transforms, represent the go-to approach for many processing tasks due to its simplicity of implementation and proven successful application in a variety of acquisition scenarios. Leveraging the ability of deep neural networks to find compact representations of complex, multi-dimensional vector spaces, we propose to train an AutoEncoder network to learn a direct mapping between the input seismic data and a representative latent manifold. The trained decoder is subsequently used as a nonlinear preconditioner for the physics-driven inverse problem at hand. Synthetic and field data are presented for a variety of seismic processing tasks and the proposed nonlinear, learned transformations are shown to outperform fixed-basis transforms and convergence faster to the sought solution.
翻译:地震数据处理严重依赖物理学驱动的逆向问题的解决方案。在存在不利的数据获取条件(例如,源和/或接收器的常规或非常规粗采样)的情况下,潜在的反向问题变得非常糟糕,需要事先提供信息才能获得令人满意的解决办法。促进分化的内向,加上固定基底的分解变换,代表着许多处理任务的上移方法,因为其实施简单,并证明在各种获取情景中应用成功。我们利用深神经网络的能力来找到复杂、多维矢量空间的缩压式表示,我们提议培训一个自动Encoder网络,以学习输入地震数据和具有代表性的深层潜流体之间的直接绘图。经过培训的解码器随后被用作物理学驱动的反向问题的非线性先决条件。合成数据和实地数据用于各种地震处理任务,而拟议的非线式变换显示,比固定基底基变形更快地与所寻求的解决方案趋同。