Automatic fault instance segmentation based on mask propagation neural network

Ruoshui Zhou, Yufei Cai, Jingjing Zong, Xingmiao Yao, Fucai Yu, Guangmin Hu
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引用次数: 7

Abstract

Fault interpretation plays a critical role in understanding the crustal development and exploring the subsurface reservoirs such as gas and oil. Recently, significant advances have been made towards fault semantic segmentation using deep learning. However, few studies employ deep learning in fault instance segmentation. We introduce mask propagation neural network for fault instance segmentation. Our study focuses on the description of the differences and relationships between each fault profile and the consistency of fault instance segmentations with adjacent profiles. Our method refers to the reference-guided mask propagation network, which is firstly used in video object segmentation: taking the seismic profiles as video frames while the seismic data volume as a video sequence along the inline direction we can achieve fault instance segmentation based on the mask propagation method. As a multi-level convolutional neural network, the mask propagation network receives a small number of user-defined tags as the guidance and outputs the fault instance segmentation on 3D seismic data, which can facilitate the fault reconstruction workflow. Compared with the traditional deep learning method, the introduced mask propagation neural network can complete the fault instance segmentation work under the premise of ensuring the accuracy of fault detection.

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基于掩码传播神经网络的故障实例自动分割
断层解释对于认识地壳发育和勘探地下油气等储层具有重要意义。近年来,深度学习在故障语义分割方面取得了重大进展。然而,将深度学习应用于故障实例分割的研究很少。引入掩码传播神经网络进行故障实例分割。我们的研究重点是描述每个断层剖面之间的差异和关系,以及断层实例分割与相邻剖面的一致性。我们的方法参考了参考制导掩码传播网络,该方法首次应用于视频对象分割,以地震剖面为视频帧,地震数据体为内联方向的视频序列,实现基于掩码传播方法的故障实例分割。掩码传播网络作为一种多级卷积神经网络,以少量用户自定义标签为导向,在三维地震数据上输出故障实例分割,便于故障重构工作。与传统的深度学习方法相比,所引入的掩模传播神经网络可以在保证故障检测准确性的前提下完成故障实例分割工作。
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