2009
DOI: 10.1029/2009wr008087
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Segmentation of X‐ray computed tomography images of porous materials: A crucial step for characterization and quantitative analysis of pore structures

Abstract: [1] Nondestructive imaging methods such as X-ray computed tomography (CT) yield high-resolution, three-dimensional representations of pore space and fluid distribution within porous materials. Steadily increasing computational capabilities and easier access to X-ray CT facilities have contributed to a recent surge in microporous media research with objectives ranging from theoretical aspects of fluid and interfacial dynamics at the pore scale to practical applications such as dense nonaqueous phase liquid tran… Show more

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Cited by 521 publications
(359 citation statements)
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References 128 publications
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“…However, these automated thresholding algorithms usually fail for CT data of cellular structures. [16] Within the present work, a new approach for the thresholdbased segmentation procedure, suitable especially for lower resolution CT data is discussed. This approach is based on the differential analysis of the porosity results calculated for a set of binarization threshold values varied over the entire 8 bit gray scale.…”
Section: Introductionmentioning
confidence: 99%
“…However, these automated thresholding algorithms usually fail for CT data of cellular structures. [16] Within the present work, a new approach for the thresholdbased segmentation procedure, suitable especially for lower resolution CT data is discussed. This approach is based on the differential analysis of the porosity results calculated for a set of binarization threshold values varied over the entire 8 bit gray scale.…”
Section: Introductionmentioning
confidence: 99%
“…As soon as "water" from different basins meets, a so-called watershed boundary is placed in between (Vincent and Soille, 1991; Wang, 1997). The algorithm performs well, placing watersheds on sharp intensity edges showing steep gradients and producing maxima in the gradient image as discussed in detail in previous literature (Iassonov et al, 2009;Bleau and Leon, 2000). With this approach it was possible to extract the hydrate phase and the gas-water phase.…”
Section: Segmentation and Volume Renderingmentioning
confidence: 94%
“…The quantitative results obtained by 3D analysis can thus be considered as relative rather than absolute numbers. In recent years, other segmentation algorithms dealing with this issue have gained importance (Iassonov et al, 2009).…”
Section: Operator Dependencymentioning
confidence: 99%