Language : English
Cheng Gong

Journal Publications

Enhancing fault detection using CHRRA-Unet and focal loss functions for imbalanced data:A case study in Luoping county, Yunnan, China

Affiliation of Author(s):中南大学地球科学与信息物理学院

Teaching and Research Group:GIS

Journal:Artificial Intelligence in Geosciences

Place of Publication:中国

Key Words:Fault detection Imbalance datasets Focal loss function CHRRA-Unet Hrrformer models Remote sensing data

Abstract:Recent advancements in remote sensing technology have made it easier to detect surface faults. Deep learning, especially convolutional models, offers new potential for automatic fault detection from remote sensing imagery. However, these models often struggle with segmentation accuracy due to their limitations in handling spatial hierarchies and short-range dependencies. They process data in local contexts, which is insufficient for tasks requiring an understanding of global structures, like fault detection. This leads to inaccurate boundary divisions and incomplete fault trace detections. To address these issues, the Convolution Holographic Reduced Representations-Based Unet (CHRRA-Unet) is introduced. This U-shaped network combines convolution and a novel attention-based transformer for remote sensing image segmentation. By extracting both local and global features, the CHRRA-Unet significantly improves the detection of geological faults in remote sensing images. By incorporating a convolutional module (CM) and holographic reduced representation attention (HRRA), local and global feature extraction is improved. To minimize computational complexity, the traditional Multi-Layer Perceptron (MLP) is replaced with the Local Perception Module (LPM). The Multi-Feature Conversion Module (MFCM) ensures an effective combination of feature maps during encoding and decoding, enhancing the network’s ability to accurately detect fault traces. Extensive experiments show that CHRRA-Unet achieves a high accuracy rate of 97.20 % in remote sensing image segmentation, outperforming existing models and providing superior fault detection capabilities over current methods.

First Author:Gong Cheng

Indexed by:Journal paper

Correspondence Author:Yingdong Yang, Syed Hussain

Document Code:100163

Discipline:Engineering

First-Level Discipline:Geological Resources and Geological Engineering

Document Type:J

Volume:7

Translation or Not:no

Included Journals:SCI