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Deep learning in denoising of micro-computed tomography images of rock samples

机译:岩石样品微计算断层扫描图像的深入学习

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摘要

Nowadays, the advantages of Digital Rock Physics (DRP) are well known and widely applied in comprehensive core analysis. It is also known that the quality of the 3D pore scale model drastically influences the results of rock properties simulation, which makes the preprocessing stage of DRP very important. In this work, we consider the application of Deep Convolutional Neural Networks (CNNs) for the preprocessing of CT images, specifically for denoising, in two setups - conventional fully-supervised learning and the self-supervised learning, when the only available data is the noisy images. To train CNNs in a supervised setup, we use images processed by a combination of bilateral and bandpass filters. We trained CNNs of the same architecture with different loss functions to find out how the choice of a loss function influences the model?s performance. Some of the obtained CNNs yielded the highest quality in terms of full-reference and no-reference metrics and significant histogram effect (bimodal intensity distribution). Images denoised with these models were qualitatively and quantitatively better than the reference ?ground truth? images used for training. We use the Deep Image Prior algorithm to train denoising models in a self-supervised setup. The obtained models are much better than ones obtained in fullysupervised setup, but are too slow, as they are optimization-based rather than feed-forward. Such an algorithm can be used in the dataset generation for feed-forward meta-models. These results could help to develop an AI-based instrument to build high-quality 3D segmented models of rocks for DRP applications.
机译:如今,数字岩体物理(DRP)的优势是众所周知的,广泛应用于综合核心分析。还众所周知,3D孔比模型的质量大大影响了岩石特性模拟的结果,这使得DRP的预处理阶段非常重要。在这项工作中,我们考虑了深度卷积神经网络(CNNS)的应用,用于CT图像的预处理,专门用于去噪,在两个设置 - 传统的完全监督学习和自我监督的学习中,当唯一可用的数据是嘈杂的图像。要在监督设置中培训CNN,我们使用双边和带通滤波器组合处理的图像。我们通过不同的损耗函数培训了相同架构的CNN,以了解损失功能的选择如何影响模型的性能。一些获得的CNNS在全引用和无参考度量和显着的直方图效应(双峰强度分布)方面产生了最高质量。与这些模型的图像进行定性和定量比参考更好?地面真相?用于培训的图像。我们使用深映像现有算法在自我监督的设置中训练去噪模式。所获得的模型比在全普化的设置中获得的模型要好得多,但是太慢,因为它们是基于优化而不是前馈。这种算法可以用于前馈元模型的数据集生成。这些结果有助于开发基于AI的仪器,为DRP应用构建高质量的3D分段模型。

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