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Soil Porosity Analysis Using Combined Maximum Entropy and Class Variance Thresholding

机译:土壤孔隙率分析使用组合最大熵和类差异阈值

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Soil is a type of a compound mixture. Computer tomography (CT) images have a greater potential in providing finer and thinner soil porous space of different medium. CT samples preserve all the information of solid and void spaces of soil in a nondestructive manner. Decision handling by a human is a negotiable duty in an automated soil management system. Image thresholding generally segments void and solid medium in CT image samples. In earlier versions, the most referred automated global thresholding is Otsu's class-based and Kapur's maximum entropy-based thresholding. In Otsu's class-based thresholding, maximized interclass variances of objects between foreground and background of the object were used whereas in Kapur's maximum entropy, it maximizes the entropy of self-dissimilar junction between foreground and background. In both these threshold-based segmentations, specific delimitations such as misinformation about pore and solid spaces in the object prevail. The above two historical methods are most excellent in finding macropores, but moreover, real-time sample images contain a number of micropores. To reimburse the drawback in identification of micropores and low resolution of gray scale images, a segmentation model that integrates both class variance and entropy of the signals was needed. The proposed combined maximum entropy-class variance thresholding (CME-CV) will be most useful in attaining accurate identification of pore structure. Finally, it was compared with the typical methods to validate the impact on porosity, void ratio, relative porosity, and misclassification error. Comparative analysis reveals that crossbreed optimal thresholding has been effective in detecting micropores. Otsu thresholding; Maximum entropy thresholding Combined maximum entropy-class variance thresholding (CME-CV) ? Porosity
机译:土壤是一种类型的化合物的混合物的。计算机断层摄影(CT)图像在提供更精细的和不同介质的较薄的土壤多孔空间具有更大的潜力。 CT样品保存在非破坏性的方式土壤的固体和空舱的所有信息。由一个人处理决定是在自动土壤管理系统的可转让的义务。图像阈值通常段CT图像样本中的空隙和固体培养基。在早期版本中,最被称为自动全局阈值是大津的阶级基础和卡普尔的基于最大熵阈值。在大津的基于类的阈值,最大化组间前景和对象的背景之间对象的方差被用来而在卡普尔的最大熵,它最大化前景与背景之间的自异种结的熵。在这两种基于阈值的分割,例如约孔隙和固体的空间中的对象误传特定划界为准。上述两个历史方法都是最优秀的在寻找大孔,但此外,实时采样图像包含了许多微孔。偿还缺点在微孔和灰度图像的分辨率低的识别,需要集成两个类方差和的信号的熵分割模型。所提出的组合的最大熵级方差阈值(CME-CV)将在实现孔隙结构的准确识别最有用的。最后,将其与典型的方法相比,以验证对孔隙度,孔隙比,相对孔隙率和误分的影响。对比分析表明,杂交最佳阈值已有效地检测微孔。大津阈值;最大熵阈值结合最大熵内方差阈值(CME-CV)?孔隙度

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