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An Application of Deep Neural Networks for Segmentation of Microtomographic Images of Rock Samples

机译:深神经网络在岩石样品微观图谱图像分割中的应用

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Image segmentation is a crucial step of almost any Digital Rock workflow. In this paper, we propose an approach for generation of a labelled dataset and investigate an application of three popular convolutional neural networks (CNN) architectures for segmentation of 3D microtomographic images of samples of various rocks. Our dataset contains eight pairs of images of five specimens of sand and sandstones. For each sample, we obtain a single set of microtomographic shadow projections, but run reconstruction twice: one regular high-quality reconstruction, and one using just a quarter of all available shadow projections. Thoughtful manual Indicator Kriging (IK) segmentation of the full-quality image is used as the ground truth for segmentation of images with reduced quality. We assess the generalization capability of CNN by splitting our dataset into training and validation sets by five different manners. In addition, we compare neural networks results with segmentation by IK and thresholding. Segmentation outcomes by 2D and 3D U-nets are comparable to IK, but the deep neural networks operate in automatic mode, and there is big room for improvements in solutions based on CNN. The main difficulties are associated with the segmentation of fine structures that are relatively uncommon in our dataset.
机译:图像分割是几乎任何数字摇滚工作流程的重要步骤。在本文中,我们提出了一种生成标记数据集的方法,并研究三个流行的卷积神经网络(CNN)架构的应用,以便分割各种岩石样本的3D微观图图像。我们的数据集包含八对图像的五个沙子和砂岩标本。对于每个样本,我们获得一组单一的微观图束投影,但运行两次重建:一个常规的高质量重建,以及仅使用所有可用的阴影投影的一个。全质量图像的周到手动指示器Kriging(IK)分割用作具有降低质量图像的地面真实性。我们通过五种不同的方式将我们的数据集分成培训和验证集来评估CNN的泛化能力。此外,我们将神经网络与IK和阈值平衡进行分割。 2D和3D U-Net的分段结果与IK相当,但深神经网络在自动模式下运行,并且基于CNN的解决方案有大空间。主要困难与在我们的数据集中相对罕见的细结构的分割相关。

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