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Deep Neural Networks for Ring Artifacts Segmentation and Corrections in Fragments of CT Images

机译:用于CT图像碎片中环形伪影分割和校正的深神经网络

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Ring artifacts are typical defects of computed tomography (CT) that degrade the quality of a 3D reconstructed image. Existing techniques for a ring reduction have various shortcomings and limitations, in particular, a lot of them are unable to process arbitrary fragments of the image and blur artifact-free regions. We propose an algorithm for ring artifacts segmentation and reduction by deep convolutional neural networks that correct 3D fragments of the CT image by inpainting. We compare 2D and 3D architectures of networks. For the creation of a dataset with a big number of ring artifacts, we propose a procedure that is able to transfer an artifact from one image to an arbitrary place of another image. The appearance of the transferred artifact changes. For ring artifact segmentation and correction in images of sandstones and sand, the proposed networks demonstrate good visual results and outperform existing methods. The proposed technique concentrates on the Digital Rock workflow, but the networks can be adjusted for the processing of other CT images as well.
机译:环形伪影是计算断层扫描(CT)的典型缺陷,其降低了3D重建图像的质量。 Ring减小的现有技术具有各种缺点和限制,特别是许多人无法处理图像的任意碎片和不自由伪像区域。我们提出了一种用于环形伪影的算法,由深度卷积神经网络进行了校正CT图像的深度卷积神经网络的减少。我们比较2D和3D网络的架构。为了创建具有大量环形伪影的数据集,我们提出了一种能够将伪像从一个图像传送到另一图像的任意位置的过程。转移的伪影变化的外观。对于砂岩和沙子图像中的环形伪影分割和校正,所提出的网络展示了良好的视觉结果和现有方法。所提出的技术集中在数字摇滚工作流程上,但是可以调整网络的其他CT图像的处理。

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