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Sparse representation-based volumetric super-resolution algorithm for 3D CT images of reservoir rocks

机译:基于稀疏表示的储层岩石3D CT图像的体积超分辨率算法

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The parameter evaluation of reservoir rocks can help us to identify components and calculate the permeability and other parameters, and it plays an important role in the petroleum industry. Until now, computed tomography (CT) has remained an irreplaceable way to acquire the microstructure of reservoir rocks. During the evaluation and analysis, large samples and high-resolution images are required in order to obtain accurate results. Owing to the inherent limitations of CT, however, a large field of view results in low-resolution images, and high-resolution images entail a smaller field of view. Our method is a promising solution to these data collection limitations. In this study, a framework for sparse representation-based 3D volumetric super-resolution is proposed to enhance the resolution of 3D voxel images of reservoirs scanned with CT. A single reservoir structure and its downgraded model are divided into a large number of 3D cubes of voxel pairs and these cube pairs are used to calculate two overcomplete dictionaries and the sparse-representation coefficients in order to estimate the high frequency component. Future more, to better result, a new feature extract method with combine BM4D together with Laplacian filter are introduced. In addition, we conducted a visual evaluation of the method, and used the PSNR and FSIM to evaluate it qualitatively. (C) 2017 Elsevier B.V. All rights reserved.
机译:储层岩石的参数评估可以帮助我们识别组件并计算渗透性和其他参数,并在石油工业中发挥着重要作用。到目前为止,计算断层扫描(CT)仍然是一种不可替代的方式来获取水库岩石的微观结构。在评估和分析期间,需要大型样品和高分辨率图像以获得准确的结果。然而,由于CT的固有局限性,在低分辨率图像中导致大型视野,并且高分辨率图像需要较小的视野。我们的方法是对这些数据收集限制的有希望的解决方案。在该研究中,提出了一种基于稀疏表示的3D体积超分辨率的框架,以增强CT扫描的储存器的3D体素图像的分辨率。单个储存器结构及其降级模型分为大量的体素对的3D立方体,并且这些立方体对来计算两个超便于替代的词典和稀疏表示系数,以估计高频分量。未来更多,为了更好的结果,介绍了一种与Laplacian滤波器组合在一起的新特征提取方法。此外,我们对该方法进行了视觉评估,并使用PSNR和FSIM进行定性评估。 (c)2017 Elsevier B.v.保留所有权利。

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