Peng Tan, Hasitha Sithadara Wijesuriya, Nicholas Sitar
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引用次数: 0
摘要
我们探索了一些计算效率高的技术,以改进对低分辨率和高噪声图像的 XRCT 图像处理,用于重建密集的天然砂矿床结构。为此,我们对图像预处理工作流程进行了评估,该流程包括图像去噪、单幅图像超分辨率、图像分割和水平集(LS)重建。我们的研究表明,非局部均值(NLM)滤波器虽然计算量大,但它能在不影响图像中可见结构的情况下提高信噪比,从而改善颗粒材料 XRCT 图像的质量,其性能优于传统的局部滤波器。然后,我们探讨了一种基于稀疏信号表示的图像超分辨率技术,结果表明该技术在处理噪声数据时表现良好,并能改善后续阶段的二值化。图像二值化是通过隐马尔可夫随机场(HMRF)与加权期望最大化(WEM)算法来实现的,该算法将空间信息考虑在内,在高分辨率图像上表现良好,但在低质量图像上仍有困难。然后,我们使用水平集方法来定义晶粒几何形状,并证明距离正则化 LS 演化(DRLSE)是处理大量晶粒数据集的有效方法。最后,我们在 LS 函数的演化过程中引入了惩罚项,以解决粘土等更细颗粒在重建头像表面的附着问题,同时保持颗粒的主要形态细节。
XRCT image processing for sand fabric reconstruction
We explore computationally efficient techniques to improve the XRCT image processing of low resolution and very noisy images for use in reconstruction of the fabric of densely packed, natural sand deposits. To this end we evaluate an image preprocessing workflow that incorporates image denoising, single image super resolution, image segmentation and level-set (LS) reconstruction. We show that, although computationally intensive, the Non-Local Mean (NLM) filter improves the quality of XRCT images of granular material by increasing the signal-to-noise ratio without impairing visible structures in the images, and outperforms more traditional local filters. We then explore an image super-resolution technique based on sparse signal representation and show that it performs well with noisy data and improves the subsequent stage of binarization. The image binarization is performed using a Hidden Markov Random Fields (HMRF) with Weighted Expectation Maximization (WEM) algorithm which takes the spatial information into account and performs well on high resolution images, however it still struggles with low quality images. We then use the level set method to define the grain geometry and show that the Distance Regularized LS Evolution (DRLSE) is an efficient approach for data sets with large numbers of grains. Finally, we introduce a penalty term into the evolution of the LS function, to address the issue of adhesion of much finer particles, such as clay, on the surface of the reconstructed avatars, while maintaining the main morphological details of the grains.
期刊介绍:
Although many phenomena observed in granular materials are still not yet fully understood, important contributions have been made to further our understanding using modern tools from statistical mechanics, micro-mechanics, and computational science.
These modern tools apply to disordered systems, phase transitions, instabilities or intermittent behavior and the performance of discrete particle simulations.
>> Until now, however, many of these results were only to be found scattered throughout the literature. Physicists are often unaware of the theories and results published by engineers or other fields - and vice versa.
The journal Granular Matter thus serves as an interdisciplinary platform of communication among researchers of various disciplines who are involved in the basic research on granular media. It helps to establish a common language and gather articles under one single roof that up to now have been spread over many journals in a variety of fields. Notwithstanding, highly applied or technical work is beyond the scope of this journal.