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Automatic Stomatal Segmentation Based on Delaunay-Rayleigh Frequency Distance

机译:基于Delaunay-Rayleigh频率距离的自动气孔分割

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摘要

The CO2 and water vapor exchange between leaf and atmosphere are relevant for plant physiology. This process is done through the stomata. These structures are fundamental in the study of plants since their properties are linked to the evolutionary process of the plant, as well as its environmental and phytohormonal conditions. Stomatal detection is a complex task due to the noise and morphology of the microscopic images. Although in recent years segmentation algorithms have been developed that automate this process, they all use techniques that explore chromatic characteristics. This research explores a unique feature in plants, which corresponds to the stomatal spatial distribution within the leaf structure. Unlike segmentation techniques based on deep learning tools, we emphasize the search for an optimal threshold level, so that a high percentage of stomata can be detected, independent of the size and shape of the stomata. This last feature has not been reported in the literature, except for those results of geometric structure formation in the salt formation and other biological formations.
机译:叶子和大气之间的CO2和水蒸气交换与植物生理学相关。这个过程通过气孔完成。这些结构是对植物研究的基础,因为它们的性质与植物的进化过程相关联,以及其环境和植物激情病症。由于显微图像的噪声和形态,气孔检测是一种复杂的任务。虽然近年来,已经开发了自动化该过程的分割算法,但它们都使用探索色彩特性的技术。该研究探讨了植物中的独特特征,其对应于叶片结构内的气孔空间分布。与基于深度学习工具的分割技术不同,我们强调寻找最佳阈值水平,从而可以检测到高百分比的气孔,与气孔的尺寸和形状无关。除了在盐形成和其他生物学形成的几何结构形成的结果外,还没有报道最后一个特征。

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