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Using k-NN to analyse images of diverse germination phenotypes and detect single seed germination in Miscanthus sinensis

机译:利用k-NN分析中国芒草的不同发芽表型图像并检测单种子发芽

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Background Miscanthus is a leading second generation bio-energy crop. It is mostly rhizome propagated; however, the increasing use of seed is resulting in a greater need to investigate germination. Miscanthus seed are small, germination is often poor and carried out without sterilisation; therefore, automated methods applied to germination detection must be able to cope with, for example, thresholding of small objects, low germination frequency and the presence or absence of mould. ResultsMachine learning using k -NN improved the scoring of different phenotypes encountered in Miscanthus seed. The k -NN-based algorithm was effective in scoring the germination of seed images when compared with human scores of the same images. The trueness of the k -NN result was 0.69–0.7, as measured using the area under a ROC curve. When the k -NN classifier was tested on an optimised image subset of seed an area under the ROC curve of 0.89 was achieved. The method compared favourably to an established technique. ConclusionsWith non-ideal seed images that included mould and broken seed the k -NN classifier was less consistent with human assessments. The most accurate assessment of germination with which to train classifiers is difficult to determine but the k -NN classifier provided an impartial consistent measurement of this important trait. It was more reproducible than the existing human scoring methods and was demonstrated to give a high degree of trueness to the human score.
机译:背景芒草是领先的第二代生物能源作物。它主要是根茎繁殖。然而,种子使用的增加导致对发芽研究的更大需求。芒草种子很小,发芽通常很差,并且未经灭菌即可进行。因此,应用于发芽检测的自动化方法必须能够应对例如小物体的阈值,低发芽频率以及是否存在霉菌。结果使用k -NN进行机器学习可提高在芒草种子中遇到的不同表型的评分。与相同图像的人类得分相比,基于k -NN的算法可有效评估种子图像的发芽。使用ROC曲线下的面积测得的k -NN结果的真实度为0.69–0.7。当在种子的优化图像子集上测试k -NN分类器时,ROC曲线下的面积达到0.89。该方法与现有技术相比具有优势。结论对于包含霉菌和破损种子的非理想种子图像,k -NN分类器与人类评估的一致性较差。难以确定用于训练分类器的最准确的发芽评估,但k -NN分类器对这一重要特征提供了公正,一致的度量。它比现有的人类评分方法具有更高的可重复性,并被证明具有很高的真实性。

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