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首页> 外文期刊>Biosystems Engineering >Classification of blueberry fruit and leaves based on spectral signatures.
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Classification of blueberry fruit and leaves based on spectral signatures.

机译:根据光谱特征对蓝莓果实和叶子进行分类。

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Blueberry spectral analysis can provide necessary wavelengths, for use in multispectral imaging that could be applied in blueberry yield estimation system. Samples of fruit and leaves were obtained from a commercial blueberry field in Waldo, Florida and an experimental field in Citra, Florida, USA in 2011. Samples were also collected in 2010 in Waldo. Seven representative southern highbush varieties were chosen for the experiment. Spectral reflectance was measured in the 200-2500 nm with an increment of 1 nm. Samples were divided into leaf, mature fruit, near-mature fruit, near-young fruit and young fruit. Normalised indices were used as the candidate variables for classification. Each index was composed of the two wavelengths that had the greatest difference in reflectance between two classes. Classification tree, principal component analysis (PCA) and multinomial logistic regression (MNR) were conducted to develop classification models. An MNR model with six wavelengths (233, 551, 554, 691, 699 and 1373 nm) performed the best for the 2011 dataset, with a prediction accuracy of 100% for leaf and mature fruit, 97.8% for young fruit, 97.9% for near-young fruit and 94.6% for near-mature fruit. Four wavelengths (553, 688, 698 and 1373 nm) were used in the classification models of two years' data with four classes (mature fruit, intermediate fruit, young fruit and leaf), and accuracies of 100%, 100%, 99%, and 98.5% were obtained for the classification of leaf, mature fruit, intermediate fruit and young fruit, respectively. An easy-to-use and low cost blueberry fruit detector could thus be developed using multispectral imaging.Digital Object Identifier http://dx.doi.org/10.1016/j.biosystemseng.2012.09.009
机译:蓝莓光谱分析可以提供必要的波长,以用于可用于蓝莓产量估算系统的多光谱成像。水果和树叶的样品于2011年从佛罗里达州沃尔多市的商业蓝莓田和美国佛罗里达州Citra的实验田获得。2010年,沃尔多市也采集了样品。选择了七个代表性的南方高灌木品种进行实验。在200-2500 nm范围内以1 nm的增量测量光谱反射率。样品分为叶,成熟果实,近成熟果实,近年轻果实和幼果。归一化索引用作分类的候选变量。每个指标由两个波长之间的反射率差异最大的两个波长组成。进行分类树,主成分分析(PCA)和多项逻辑回归(MNR)来开发分类模型。具有六个波长(233、551、554、691、699和1373 nm)的MNR模型对于2011年数据集表现最佳,其叶和成熟果实的预测准确度为100%,幼果的预测准确度为97.8%,9%的预测准确度为接近年轻的果实,接近成熟的果实占94.6%。在两年数据的分类模型中使用四个波长(553、688、698和1373 nm),分为四个类别(成熟果实,中间果实,幼果和叶),准确度为100%,100%,99%叶,成熟果实,中间果实和幼果分别获得98.5%的分类。因此,可以使用多光谱成像技术开发出一种易于使用且价格低廉的蓝莓水果检测器。数字对象标识符http://dx.doi.org/10.1016/j.biosystemseng.2012.09.009

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