基于深度学习的致密砂岩显微图像识别

Microscopic Recognition of Tight Sandstone Based on Deep Learning

  • 摘要: 以岩石薄片鉴定为代表的传统地质实验,具有人工依赖性强、实验周期性长、鉴定内容复杂的特点,对该实验进行智能化提升是地质实验数字化转型的关键。致密砂岩岩石矿物类型以石英、斜长石、钾长石、变质岩岩屑和火成岩岩屑为主。致密砂岩铸体薄片鉴定可进行组分结构、孔隙喉道和填隙物类型的定性定量分析,为微观储层特征研究和评价提供重要实验支持。因致密砂岩具有颗粒粒径细、成岩作用强和储集空间复杂的特点,进行智能识别难点主要有三个方面:细粒颗粒分割、易混淆矿物识别及微孔隙定量分析。本文阐述了一种基于深度学习的致密砂岩薄片显微图像组构智能识别方法。首先,建立致密砂岩铸体薄片单偏光和正交偏光的显微图像库,利用语义分割、SAM (Segment Anything Model)算法对图像中的矿物颗粒边界进行分割,再利用深度卷积神经网络自动提取薄片显微图像中矿物的单偏光和正交偏光下完整消光周期的光性特征和结构特征,对致密砂岩薄片显微图像颗粒的矿物识别、矿物定量及分选磨圆结构分析,同时实现面孔率分类和孔隙定量分析。对鄂尔多斯盆地临兴—神府区块的致密砂岩铸体薄片测试图像集进行验证,矿物颗粒分割准确率可以达到95%,石英、斜长石和钾长石等主要矿物的识别准确率达到91%。该研究避免了人工繁琐重复性矿物鉴定及定量统计工作,为致密砂岩薄片显微图像智能化提供技术支撑。

     

    Abstract: Traditional geological experiments, such as rock thin section identification, are often labor-intensive, time-consuming, and involve complex analytical procedures. The intelligent transformation of these methods is crucial for advancing the digitalization of geological research. Tight sandstone is primarily composed of minerals such as quartz, plagioclase, potassium feldspar, and contains metamorphic and igneous rock fragments. The analysis of casting thin sections of tight sandstone enables qualitative and quantitative identification of compositional structure, pore-throat characteristics, and filler types, offering essential experimental insights for studying and evaluating micro-reservoir properties. However, intelligent identification faces three main challenges: fine-grained mineral segmentation, discrimination of visually similar minerals, and quantitative analysis of micro-pores, all arising from the fine grain size, strong diagenetic alteration, and complex pore systems of tight sandstone. Here, we present an intelligent identification method based on deep learning for analyzing the microfabric of tight sandstone thin sections. First, a multi-angle microscopic image database of tight sandstone casting thin sections under both plane-polarized and cross-polarized light was constructed. Semantic segmentation and segment anything model (SAM) were employed to delineate mineral grain boundaries. Subsequently, a deep convolutional neural network automatically extracted optical and structural features from the thin section images, enabling mineral identification, quantification, and analysis of grain sorting and roundness. The method also supports pore-type classification and quantitative pore analysis. Validation on a test set of casting thin section images from the Linxing-Shenfu block in the Ordos Basin demonstrates a mineral grain segmentation accuracy of up to 95%, and a recognition accuracy of over 91% for major minerals such as quartz, plagioclase, and potassium feldspar. This research demonstrates that the cumbersome and repetitive manual work of mineral identification and quantitative statistics can be avoided, providing technical support for the intelligent microscopic images of tight sandstone thin sections.

     

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