- 【Updated on May 12, 2025】 Integration of CiNii Dissertations and CiNii Books into CiNii Research
- Trial version of CiNii Research Knowledge Graph Search feature is available on CiNii Labs
- 【Updated on June 30, 2025】Suspension and deletion of data provided by Nikkei BP
- Regarding the recording of “Research Data” and “Evidence Data”
Building realistic structure models to train convolutional neural networks for seismic structural interpretation
-
- Xinming Wu
- University of Science and Technology of China, School of Earth and Space Sciences, Hefei, China.(corresponding author).
-
- Zhicheng Geng
- The University of Texas at Austin, Bureau of Economic Geology, Austin, Texas, USA..
-
- Yunzhi Shi
- The University of Texas at Austin, Bureau of Economic Geology, Austin, Texas, USA..
-
- Nam Pham
- The University of Texas at Austin, Bureau of Economic Geology, Austin, Texas, USA..
-
- Sergey Fomel
- The University of Texas at Austin, Bureau of Economic Geology, Austin, Texas, USA..
-
- Guillaume Caumon
- University of Lorraine, Nancy, France..
Search this article
Description
<jats:p> Seismic structural interpretation involves highlighting and extracting faults and horizons that are apparent as geometric features in a seismic image. Although seismic image processing methods have been proposed to automate fault and horizon interpretation, each of which today still requires significant human effort. We improve automatic structural interpretation in seismic images by using convolutional neural networks (CNNs) that recently have shown excellent performances in detecting and extracting useful image features and objects. The main limitation of applying CNNs in seismic interpretation is the preparation of many training data sets and especially the corresponding geologic labels. Manually labeling geologic features in a seismic image is highly time-consuming and subjective, which often results in incompletely or inaccurately labeled training images. To solve this problem, we have developed a workflow to automatically build diverse structure models with realistic folding and faulting features. In this workflow, with some assumptions about typical folding and faulting patterns, we simulate structural features in a 3D model by using a set of parameters. By randomly choosing the parameters from some predefined ranges, we are able to automatically generate numerous structure models with realistic and diverse structural features. Based on these structure models with known structural information, we further automatically create numerous synthetic seismic images and the corresponding ground truth of structural labels to train CNNs for structural interpretation in field seismic images. Accurate results of structural interpretation in multiple field seismic images indicate that our workflow simulates realistic and generalized structure models from which the CNNs effectively learn to recognize real structures in field images. </jats:p>
Journal
-
- GEOPHYSICS
-
GEOPHYSICS 85 (4), WA27-WA39, 2020-01-16
Society of Exploration Geophysicists
- Tweet
Details 詳細情報について
-
- CRID
- 1360303975605890304
-
- ISSN
- 19422156
- 00168033
-
- Data Source
-
- Crossref