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Ring artifacts segmentation on microtomographic images by convolutional neural networks

机译:卷积神经网络在显微断层图像上进行环伪影分割

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Ring artifacts in X-ray microtomographic images can lead to errors in the construction of digital twins of rock samples for flow simulation. Previously, we considered an algorithm for detecting ring artifacts by means of matching filtering of image slices in a polar coordinate system. However, that approach is inapplicable for an arbitrary fragment of an image and requires adjustment of parameters from image to image. In this paper, we propose the segmentation method based on convolutional neural network. Two network architectures are considered: SegNet and U-net. To create a big and representative training and validation datasets, we propose an algorithm for transferring ring artifacts detected by the existing approach from one image to another. Our task-specific data augmentation improves outcomes in comparison with conventional augmentation techniques. The trained model successfully segments ring artifacts even for sample images and artifacts that were not in the training set. The developed algorithm is used to assess the quality of microtomographic images and local correction of image regions damaged by ring artifacts.
机译:X射线显微断层图像中的环状伪影可能会导致构造用于流动模拟的岩石样品数字双胞胎时出现错误。以前,我们考虑了一种通过在极坐标系中对图像切片进行匹配滤波来检测环形伪影的算法。但是,该方法不适用于图像的任意片段,并且需要在图像之间调整参数。本文提出了一种基于卷积神经网络的分割方法。考虑了两种网络体系结构:SegNet和U-net。为了创建一个大型且具有代表性的训练和验证数据集,我们提出了一种算法,用于将现有方法检测到的环形伪像从一幅图像转移到另一幅图像。与传统的扩充技术相比,我们针对特定任务的数据扩充可改善结果。训练后的模型甚至可以对样本图像和训练集中所没有的伪像成功地分割环形伪像。所开发的算法用于评估显微断层图像的质量以及对环伪影损坏的图像区域进行局部校正。

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