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Xylem Vessels Segmentation Through a Deep Learning Approach: a First Look

机译:通过深度学习方法进行的木质部容器分割:初探

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Xylem is a vascular tissue that conveys water and dissolved minerals from the roots to the rest of the plant and also provides physical support. The most important cells present in xylem are called vessels. These cells are arranged to form long pipes that carry water through the tree. The identification, counting and subsequent characterization of xylem vessels is essential for monitoring tree health and its relationship with climatic conditions. Although automatic and semi-automatic image processing tools are available to analyze the structure of xylem at the cellular level, they usually require the supervision of an expert to obtain optimal segmentation, making it a highly time-consuming process. To overcome this limitation, a Convolutional Neural Network model was used to process digital images of 23 branch sections in order to segment the xylem vessels. The obtained results were compared with other two classical methods, Otsu's thresholding method, and an active contour method known as Chan-Vese segmentation algorithm. The obtained results show the potential of convolutional neural networks to overcome aspects such as non-homogeneous illumination of images, where conventional methods tend to obtain unsatisfactory results.
机译:木质部是维管组织,将水和溶解的矿物质从根部输送到植物的其余部分,并提供物理支持。木质部中存在的最重要的细胞称为血管。这些单元被布置成形成长管,该长管载水通过树。木质部容器的识别,计数和随后的表征对于监测树木健康及其与气候条件的关系至关重要。尽管可以使用自动和半自动图像处理工具在细胞水平上分析木质部的结构,但它们通常需要专家的监督才能获得最佳的分割效果,这是一个非常耗时的过程。为了克服此限制,使用卷积神经网络模型处理23个分支部分的数字图像,以分割木质部血管。将获得的结果与其他两种经典方法(大津的阈值方法和称为Chan-Vese分割算法的主动轮廓方法)进行了比较。所获得的结果显示了卷积神经网络克服诸如非均匀照明图像等方面的潜力,而传统方法往往无法获得令人满意的结果。

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