Deep Learning-based Model for Automatic Salt Rock Segmentation

被引:0
作者
Hong Li
Qintao Hu
Yao Mao
Fanglian Niu
Chao Liu
机构
[1] Chinese Academy of Sciences,Institute of Optics and Electronics
[2] Chinese Academy of Sciences,Key Laboratory of Optical Engineering
[3] University of Chinese Academy of Sciences,School of International Studies
[4] Sun Yat-Sen University,undefined
来源
Rock Mechanics and Rock Engineering | 2022年 / 55卷
关键词
Deep learning; Seismic image; Semantic segmentation of salt rock image; Deep supervision; Multi-task and collaborative optimization;
D O I
暂无
中图分类号
学科分类号
摘要
In places where petroleum and natural gas accumulate, a large number of salt layer deposits are likely to form under the surface of the earth. Locations of petroleum and natural gas can be found through precise positioning. Salt rock areas are traditionally located by experts through annotations on seismic images from professional equipment. However, manual labeling is a tedious and lengthy process, and is not objective. The inaccurate judgment of the location of a salt body will create hidden safety hazards. For a more accurate and automatic process, a salt rock segmentation method based on a U-Net model and deep supervision is proposed, using Kaggle platform data provided by the TGS-NOPEC Geophysical Company (TGS). Based on the data, single model precision of 87.32% mAP is obtained by training the model directly. Using transfer learning, ResNeSt loaded with a pretrained model is used as the backbone network of the encoder. To further improve the accuracy, some modules are added to the decoder. A series of experiments are conducted using a standardized method, whose results show that the proposed model delivers higher accuracy than some state-of-the-art models do.
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收藏
页码:3735 / 3747
页数:12
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