Machine Learning based Sorting of Somatic Embryos for In-Line processing in Automated SE Fluidics System

Punnag Chatterjee
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Abstract

Somatic embryogenesis (SE) can be a viable method for the clonal propagation of many economically significant forest trees, particularly coniferous trees like pines and spruces. However, large-scale production of SE plants requires automation to reduce manual labor and attain cost-efficiency. The most labor-intensive step of the SE process for SE plant production is selecting and harvesting mature embryos. Embryo maturation is not a synchronized process; selecting the most developed embryos capable of continuous development is necessary. However, there needs to be more research conducted on mapping morphological features to germination-competent mature somatic embryos. This paper lays down the preliminary work of employing machine learning techniques for classifying large volumes of images of mature somatic embryos processed using an automated SE processing system based on fluidics processing referred to as SE Fluidics system. The results show that machine learning could be an alternative classification methodology instead of the traditional manual morphology-based classification process based on image analysis. The paper discusses two popular image classification techniques, namely Convolution Neural Network (CNN) and Support Vector Machine (SVM), applying them to both binary (black and white) and grayscale images. It is observed that grayscale images provide better accuracy with the SVM technique and outperform morphology-based classification in terms of processing speed (17.6% faster) across the test envelope. On the other hand, CNN-based classification shows better processing speeds only at a lower number of convolution layers. Hence, the data scientist can optimally select the number of convolution layers to get the desired accuracy-processing speed combination.
基于机器学习的体细胞胚胎分拣技术,用于 SE 流体自动系统的在线处理
体细胞胚胎发生(SE)是克隆繁殖许多具有重要经济价值的林木,尤其是松树和云杉等针叶树的可行方法。然而,体细胞胚胎发生植物的大规模生产需要自动化,以减少人工劳动并实现成本效益。SE 植物生产过程中劳动密集程度最高的步骤是选择和收获成熟胚胎。胚胎成熟不是一个同步过程,因此必须选择能够持续发育的最成熟胚胎。然而,还需要开展更多的研究,以绘制具有发芽能力的成熟体细胞胚胎的形态特征图。本文介绍了利用机器学习技术对大量成熟体细胞胚胎图像进行分类的初步工作,这些图像是利用基于流体学处理的自动 SE 处理系统(简称 SE 流体学系统)处理的。结果表明,机器学习可以作为一种替代分类方法,取代传统的基于图像分析的人工形态学分类过程。本文讨论了两种流行的图像分类技术,即卷积神经网络(CNN)和支持向量机(SVM),并将它们应用于二值图像(黑白图像)和灰度图像。结果表明,使用 SVM 技术,灰度图像的准确度更高,在整个测试包络的处理速度方面也优于基于形态学的分类技术(快 17.6%)。另一方面,基于 CNN 的分类只有在卷积层数较少的情况下才能显示出更好的处理速度。因此,数据科学家可以优化选择卷积层数,以获得所需的准确性-处理速度组合。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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