Two-stage domain adaptation for fracture segmentation in electric imaging logging images

0 ENERGY & FUELS
Qifeng Sun , Shuang Li , Yong Zhai , Faming Gong , Qizhen Du
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引用次数: 0

Abstract

Electric imaging logging images are widely used for fracture identification due to their high resolution and intuitive characteristics, which is helpful in guiding the development of oil and gas resources. Nevertheless, existing fracture identification methods often face challenges in complex geological backgrounds and when training samples are limited. To address these challenges, this paper presents a two-stage fracture identification method for electric imaging logging images based on domain adaptation. In the first stage, a pseudo electric imaging logging data generator (PEDG) including style transfer algorithm is designed to generate an labeled dataset that is realistic and diverse in fracture morphologies, mitigating the problem of insufficient training samples through image-level domain adaptation. In the second stage, a patch-based output space multi-scale adversarial learning network (pOMAL) is proposed. pOMAL employs adversarial learning between the semantic segmentation model and a multi-scale discriminator (MSD), encouraging the segmentation results of real images resemble those of pseudo-images and improving the generalization ability and noise resistance of the segmentation model through output-level domain adaptation. Experimental results demonstrate that the proposed method achieves better fracture segmentation results in complex electric imaging images with limited training samples.
电成像测井图像具有分辨率高、直观等特点,被广泛用于裂缝识别,有助于指导油气资源的开发。然而,现有的断裂识别方法在复杂地质背景和训练样本有限的情况下往往面临挑战。为了应对这些挑战,本文提出了一种基于域自适应的两阶段电成像测井图像断裂识别方法。在第一阶段,设计了一个包含样式转移算法的伪电动成像测井数据生成器(PEDG),以生成一个标注数据集,该数据集在断裂形态上真实且多样,通过图像级域适应来缓解训练样本不足的问题。pOMAL 采用语义分割模型与多尺度判别器(MSD)之间的对抗学习,鼓励真实图像的分割结果与伪图像相似,并通过输出级域自适应提高分割模型的泛化能力和抗噪能力。实验结果表明,所提出的方法在训练样本有限的复杂电学成像图像中取得了较好的骨折分割结果。
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