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Deep Convolutional Neural Networks Based Framework for Estimation of Stomata Density and Structure from Microscopic Images

机译:基于深度卷积神经网络的框架,用于估计微观图像的气孔密度和结构

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摘要

Analysis of stomata density and its configuration based on scanning electron microscopic (SEM) image of a leaf surface, is an effective way to characterize the plant's behaviour under various environmental stresses (drought, salinity etc.). Existing methods for phenotyping these stomatal traits are often based on manual or semi-automatic labeling and segmentation of SEM images. This is a low-throughput process when large number of SEM images is investigated for statistical analysis. To overcome this limitation, we propose a novel automated pipeline leveraging deep convolutional neural networks for stomata detection and its quantification. The proposed framework shows a superior performance in contrast to the existing stomata detection methods in terms of precision and recall, 0.91 and 0.89 respectively. Furthermore, the morphological traits (i.e. length & width) obtained at stomata quantification step shows a correlation of 0.95 and 0.91 with manually computed traits, resulting in an efficient and high-throughput solution for stomata phenotyping.
机译:基于扫描电子显微镜(SEM)图像的气孔密度及其构型的分析是一种有效的植物在各种环境应力(干旱,盐度等)下表征植物行为的有效方法。这些气孔特征的现有方法通常基于手动或半自动标记和SEM图像的分割。这是在调查大量SEM图像以进行统计分析时的低通量过程。为了克服这一限制,我们提出了一种新的自动化管道,利用深度卷积神经网络进行气孔检测及其量化。所提出的框架分别与Precision和Recall,0.91和0.89分别的现有气孔检测方法形成较高的性能。此外,在气孔定量步骤中获得的形态特征(即长度和宽度)显示出与手动计算的特征0.95和0.91的相关性,导致气孔表型的有效和高通量的解决方案。

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