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基于VAC-U-Net的盐体识别方法OA

Salt body identification using VAC-U-Net

中文摘要英文摘要

精确定位地下盐体结构对于油气资源的高效勘探与开采具有重要意义.传统深度学习方法在盐体边界识别精度和细节还原等方面仍存在不足.为提升盐体识别精度,提出了一种基于改进型 U-Net架构的 VAC-U-Net模型.该模型以 VGG16网络前13个卷积层作为编码器提取图像特征,融入带残差连接机制的空洞空间金字塔池化(ASPP)模块,增强了多尺度上下文信息的捕获能力.然后,引入融合了通道、空间与像素三级注意力机制的内容引导注意力融合模块(CGAFusion),从而有效集中关键区域与边界特征的多层信息整合,提升高低层语义信息的交互能力.最后,通过多级上采样与解码结构实现盐体分割.在 TGS盐体分割数据集上进行验证,交并比为 85.49%,像素准确率为 96.21%,F1分数为 91.84%,在像素精度和边界还原方面相较于原始模型均有显著提高,表现出更好的鲁棒性和泛化能力,为地下盐体识别提供了有效的技术支撑.

Accurately locating subsurface salt structures is crucial for efficient hydrocarbon exploration and production.However,conventional deep learning methods still struggle with accurately delineating salt boundaries and preserving detailed structural features.This paper proposes VAC-U-Net,an improved U-Net architecture for enhanced salt identification.This model uses the first 13 convolutional layers of the VGG16 network as an encoder to extract image features,and incorporates an atrous spatial pyramid pooling(ASPP)module with residual connections to enhance the capture of multi-scale contextual information.A content-guided attention fusion(CGAFusion)module,incorporating channel,spatial,and pixel attention mechanisms,is then introduced to effectively integrate multi-level information from key regions and boundaries and thereby enhance the interaction between high-level and low-level semantic information.Salt segmentation is ultimately achieved using a multi-level upsampling and decoding structure.TGS data validation achieves an intersection over union of 85.49%,pixel accuracy of 96.21%,and F1-score of 91.84%.Compared with its original counterpart,our model shows significant improvements in pixel accuracy and boundary restoration,demonstrating better robustness and generalization capability.It provides effective technical support for subsurface salt identification.

邓健志;黄磊;熊彬

桂林理工大学物理与电子信息工程学院,广西 桂林 541004||桂林理工大学地球科学学院,广西 桂林 541004桂林理工大学物理与电子信息工程学院,广西 桂林 541004桂林理工大学地球科学学院,广西 桂林 541004

能源科技

油气勘探盐体识别深度学习U-Net注意力机制特征融合

oil and gas explorationsalt identificationdeep learningU-Netattention mechanismfeature fusion

《石油物探》 2026 (3)

478-492,15

广西科技重大专项(桂科 AA23062035 和桂科 AA24263038)资助. This research is financially supported by the Major Science and Technology Projects in Guangxi(Grant Nos.AA23062035,AA24263038).

10.12431/issn.1000-1441.2025.0108

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