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Improved classification accuracy of powdery mildew infection levels of wine grapes by spatial-spectral analysis of hyperspectral images

机译:通过高光谱图像的空间光谱分析提高酿酒葡萄白粉病感染水平的分类准确性

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BackgroundHyperspectral imaging is an emerging means of assessing plant vitality, stress parameters, nutrition status, and diseases. Extraction of target values from the high-dimensional datasets either relies on pixel-wise processing of the full spectral information, appropriate selection of individual bands, or calculation of spectral indices. Limitations of such approaches are reduced classification accuracy, reduced robustness due to spatial variation of the spectral information across the surface of the objects measured as well as a loss of information intrinsic to band selection and use of spectral indices. In this paper we present an improved spatial-spectral segmentation approach for the analysis of hyperspectral imaging data and its application for the prediction of powdery mildew infection levels (disease severity) of intact Chardonnay grape bunches shortly before veraison. ResultsInstead of calculating texture features (spatial features) for the huge number of spectral bands independently, dimensionality reduction by means of Linear Discriminant Analysis (LDA) was applied first to derive a few descriptive image bands. Subsequent classification was based on modified Random Forest classifiers and selective extraction of texture parameters from the integral image representation of the image bands generated. Dimensionality reduction, integral images, and the selective feature extraction led to improved classification accuracies of up to (0.998pm 0.003) for detached berries used as a reference sample (training dataset). Our approach was validated by predicting infection levels for a sample of 30 intact bunches. Classification accuracy improved with the number of decision trees of the Random Forest classifier. These results corresponded with qPCR results. An accuracy of 0.87 was achieved in classification of healthy, infected, and severely diseased bunches. However, discrimination between visually healthy and infected bunches proved to be challenging for a few samples, perhaps due to colonized berries or sparse mycelia hidden within the bunch or airborne conidia on the berries that were detected by qPCR. ConclusionsAn advanced approach to hyperspectral image classification based on combined spatial and spectral image features, potentially applicable to many available hyperspectral sensor technologies, has been developed and validated to improve the detection of powdery mildew infection levels of Chardonnay grape bunches. The spatial-spectral approach improved especially the detection of light infection levels compared with pixel-wise spectral data analysis. This approach is expected to improve the speed and accuracy of disease detection once the thresholds for fungal biomass detected by hyperspectral imaging are established; it can also facilitate monitoring in plant phenotyping of grapevine and additional crops.
机译:背景高光谱成像是评估植物活力,胁迫参数,营养状况和疾病的新兴手段。从高维数据集目标值的提取或者依靠的全部频谱信息逐像素处理,个别频带的适当选择,或频谱指数的计算。这种方法的局限性是分类精度降低,由于在被测物体表面上光谱信息的空间变化而导致的鲁棒性降低以及频带选择和使用光谱指数所固有的信息损失。在本文中,我们提出了一种改进的空间光谱分割方法,用于分析高光谱成像数据,并将其应用在即将检验之前的完整霞多丽葡萄串的白粉病感染水平(疾病严重程度)的预测中。结果与其独立地计算大量光谱带的纹理特征(空间特征),不如通过线性判别分析(LDA)进行降维,首先得出一些描述性图像带。随后的分类基于修改后的随机森林分类器,并从生成的图像带的完整图像表示中选择性提取纹理参数。降维,积分图像和选择性特征提取导致作为参考样本(训练数据集)的分离浆果的分类精度提高到(0.998 pm 0.003 )。我们的方法通过预测30个完整束样本的感染水平进行了验证。分类精度随着随机森林分类器的决策树数量的增加而提高。这些结果与qPCR结果相对应。在对健康,感染和严重疾病串进行分类时,准确度达到0.87。但是,对于一些样本,在视觉上健康的一束和感染的一束之间的区分被证明是具有挑战性的,这可能是由于qPCR检测到的浆果中隐藏的浆果或稀疏的菌丝体或浆果上的空气传播的分生孢子。结论已开发出一种有效的基于空间和光谱图像特征的高光谱图像分类方法,该方法可能适用于许多可用的高光谱传感器技术,可以改善霞多丽葡萄串中白粉病感染水平的检测。与逐像素光谱数据分析相比,空间光谱方法尤其改善了光感染水平的检测。一旦建立了通过高光谱成像检测到的真菌生物量的阈值,这种方法有望提高疾病检测的速度和准确性。它还可以促进对葡萄和其他农作物的植物表型监测。

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