利用深度学习技术对SEM图像进行多矿物分割

V. Alekseev, D. Orlov, D. Koroteev
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引用次数: 0

摘要

数字核心的构建途径和使用方法正在迅速发展。这些方法的应用使非破坏性方法快速获取岩石物性信息成为可能。数字岩石物理包括两个主要阶段:建立模型和在得到的模型上对各种物理过程进行建模。我们的工作建议使用深度学习方法来分割矿物和孔隙空间,而不是传统的方法,如阈值图像处理。深度神经网络在计算机视觉的许多领域早已显示出其优势。本文提出并测试了有助于从扫描电子显微镜图像中识别不同矿物的方法。我们使用了阿奇莫夫组的岩石图像作为样本,这些岩石是岩石。我们测试了各种深度神经网络,如LinkNet、U-Net、ResUNet和pix2pix,并确定了那些在分割方面表现最好的神经网络。
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Multi-Mineral Segmentation of SEM Images Using Deep Learning Techniques
The approaches of building and methods of using the digital core are currently developing rapidly. The use of these methods makes it possible to obtain petrophysical information by non-destructive methods quickly. Digital rock physics includes two main stages: constructing models and modeling various physical processes on the obtained models. Our work proposes using deep learning methods for mineral and pore space segmentation instead of classical methods such as threshold image processing. Deep neural networks have long been able to show their advantages in many areas of computer vision. This paper proposes and tests methods that help identify different minerals in images from a scanning electron microscope. We used images of rocks of the Achimov formation, which are arkoses, as samples. We tested various deep neural networks such as LinkNet, U-Net, ResUNet, and pix2pix and identified those that performed best in segmentation.
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