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Energy-based binary segmentation of snow microtomographic images

机译:雪显微断层图像的基于能量的二进制分割

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X-ray microtomography has become an essential tool for investigating the mechanical and physical properties of snow, which are tied to its microstructure. To allow a quantitative characterization of the microstructure, the grayscale X-ray attenuation coefficient image has to be segmented into a binary ice/pore image. This step, called binary segmentation, is crucial and affects all subsequent analysis and modeling. Common segmentation methods are based on thresholding. In practice, these methods present some drawbacks and often require time-consuming manual post-processing. Here we present a binary segmentation algorithm based on the minimization of a segmentation energy. This energy is composed of a data fidelity term and a regularization term penalizing large interface area, which is of particular interest for snow where sintering naturally tends to reduce the surface energy. The accuracy of the method is demonstrated on a synthetic image. The method is then successfully applied on microtomographic images of snow and compared to the threshold-based segmentation. The main advantage of the presented approach is that it benefits from local spatial information. Moreover, the effective resolution of the segmented image is clearly defined and can be chosen a priori.
机译:X射线断层摄影术已成为研究雪的机械和物理性质的重要工具,而雪的机械和物理性质与雪的微观结构有关。为了对微观结构进行定量表征,必须将灰度X射线衰减系数图像分割成二进制的冰/孔图像。此步骤称为二进制分段,非常关键,它会影响所有后续分析和建模。常见的分割方法基于阈值。在实践中,这些方法存在一些缺点,并且通常需要耗时的手动后处理。在这里,我们提出一种基于最小化分割能量的二进制分割算法。该能量由数据保真度项和惩罚较大界面面积的正则化项组成,这对于积雪特别感兴趣,因为在雪中烧结自然会降低表面能。在合成图像上证明了该方法的准确性。该方法随后成功地应用于雪的显微图像上,并与基于阈值的分割进行了比较。所提出的方法的主要优点是它受益于局部空间信息。此外,清楚地定义了分割图像的有效分辨率,并且可以事先选择。

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