Journal of Jilin University(Earth Science Edition) ›› 2025, Vol. 55 ›› Issue (3): 987-1000.doi: 10.13278/j.cnki.jjuese.20240035

Previous Articles     Next Articles

A Three-Dimensional Fault Seismic Recognition Method Based on Lightweight Fusion Semantic Segmentation

Shan Huilin1, 2, 3, Wang Xingtao2, Xu Yijun1, Wang Zhihao1, Huang Haohan1, Zhang Yinsheng1, 2, 3   

  1. 1. School of Electronic & Information Engineering, Wuxi University, Wuxi 214105, Jiangsu, China
    2. School of Electronics & Information Engineering, Nanjing University of Information Science & Technology, Nanjing 210044, 
    China
    3. Key Laboratory of Intelligent Support Technology for Complex Environment (Nanjing University of Information Science and 
    Technology), Ministry of Education, Nanjing 210044, China
  • Online:2025-05-26 Published:2025-06-06
  • Supported by:
    Supported by the National Natural Science Foundation of China (62071240, 62106111) and Wuxi “Light of Taihu Lake” Science and Technology Research (Basic Research) Project (K20231004)

Abstract:  At present, deep learning-based fault recognition methods are emerging in an endless stream, focusing on the U-shaped network. However, the U-shaped network uses a large number of conventional convolutions, ignoring the problems of feature redundancy and over-fitting while improving the effect of feature extraction, resulting in high network complexity. In order to ensure the recognition effect and reduce the problem of feature redundancy, this paper proposes a lightweight fusion semantic segmentation network (LF-SeNet) for three-dimensional fault recognition. Compared with the traditional fault recognition network, LF-SeNet combines the idea of skip connection and feature fusion. The feature fusion module includes three-dimensional separable convolution, simple attention mechanism (SimAM), Dropout layer and finite matrix product operation, forming a lightweight feature fusion module. The effect of feature extraction is effectively guaranteed. In order to effectively reduce the complexity of the network, this paper combines the dilated convolution and the lightweight feature fusion module. On the one hand, it reduces the computational complexity of the network, and on the other hand, it reduces the feature redundancy problem caused by conventional convolution. In addition, this paper uses the Dropout layer and data enhancement method to improve the generalization ability of the network and alleviate the problem of overfitting. The method is tested on the FaultSeg3D dataset. The results show that the parameter amount of LF-SeNet is 2.56M, the number of floating-point operations is reduced by 95.59G, and the intersection-over-union ratio is increased by 2% compared with the traditional U-shaped network. Finally, this paper uses three-dimensional data synthesis technology to visualize the fault identification map. The experimental results show that the faults identified by LF-SeNet are continuous and clear, indicating that the network has better generalization ability, which proves the effectiveness of LF-SeNet in fault identification. 


Key words: semantic segmentation, SimAM, three-dimensional depth separable convolution, fault identification

CLC Number: 

  • P631.4
[1] Gao Kangzhe, Wang Fengyan, Liu Ziwei, Wang Mingchang. Semantic Segmentation of Remote Sensing Images Based on Improved U-Net [J]. Journal of Jilin University(Earth Science Edition), 2024, 54(5): 1752-1763.
[2] Wang Wei, Xiong Yizhou, Wang Xin. NHNet: A Novel Hierarchical Semantic Segmentation Network for Remote Sensing Images [J]. Journal of Jilin University(Earth Science Edition), 2024, 54(5): 1764-1772.
[3] Wang Minshui, Kong Xiangming, Chen Xueye, Yang Guodong, Wang Mingchang, Zhang Haiming. Remote Sensing Image Change Detection Based on Random Patches and DeepLabV3+ Network [J]. Journal of Jilin University(Earth Science Edition), 2021, 51(6): 1932-1938.
[4] Zheng Guolei, Xu Xinxue, Li Shibin, Yuan Hang, Ma Wei, Ye Qing. Inversion of Gravity Data in Tianjin [J]. Journal of Jilin University(Earth Science Edition), 2018, 48(4): 1221-1230.
Viewed
Full text


Abstract

Cited

  Shared   
  Discussed   
No Suggested Reading articles found!