木材光学显微图像中细胞组织的自动表征:在细胞文件识别中的应用

G. Brunel, P. Borianne, G. Subsol, M. Jaeger, Y. Caraglio
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引用次数: 12

摘要

木材解剖剖面的自动分析对了解植物的生长发育具有重要意义。在本文中,我们提出了一种新的方法来表征光显微镜下木材切片图像中的细胞组织。它的目的是在大规模处理的背景下自动识别细胞文件。该方法的独创性在于我们的细胞分类过程。与许多监督方法不同,我们的方法是自条件的,基于决策树,该决策树的阈值根据每个图像的特定生物特征自动评估。为了评估所提出的系统的性能并允许细胞系检测的认证,我们引入了表征结果准确性的质量指标和这些结果的参数。它们与细胞文件在全局和局部尺度上的拓扑和几何特征有关。此外,我们还提出了一个确定性指数,以便在进一步的统计研究中选择性地利用结果。该方法是作为ImageJ的插件实现的。在不同的木材截面对比良好的图像上进行测试,在细胞文件检测和处理速度方面显示出良好的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic characterization of the cell organization in light microscopic images of wood: Application to the identification of the cell file
Automated analysis of wood anatomical sections is of great interest in understanding the growth and development of plants. In this paper, we propose a novel method to characterize the cell organization in light microscopic wood section images. It aims to identify automatically the cell file in a context of mass treatment. The originality of the proposed method is our cell classification process. Unlike many supervised methods, our method is self conditioned, based on a decision tree which thresholds are automatically evaluated according to specific biological characteristics of each image. In order to evaluate the performances of the proposed system and allow the certification of the cell line detection, we introduced indices of quality characterizing the accuracy of results and parameters of these results. Those are related to topological and geometrical characters of the cell file at both global and local scales. Moreover, we propose an index of certainty for selective results exploitation in further statistical studies. The proposed method was is implemented as a plugin for ImageJ. Tests hold on various wood section well contrasted images show good results in terms of cell file detection and process speed.
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