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Pattern recognition-based optical technique for non-destructive detection of Ectomyelois ceratoniae infestation in pomegranates during hidden activity of the larvae

机译:基于模式识别的幼虫隐藏活性在石榴中非破坏性检测的基于模式识别的光学技术

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In this research, the feasibility of utilizing visible/near-infrared (Vis/NIR) spectroscopy as an optical non-destructive technique combined with both supervised and unsupervised pattern recognition methods was assessed for detection of Ectomyelois ceratoniae, carob moth, infestation in pomegranates during hidden activity of the larvae. To this end, some fruits were artificially contaminated to the carob moth larvae. Vis/NIR spectra of the blank samples and the contaminated pomegranates without and with external visual symptoms of larvae infestation were analyzed one and two weeks after contaminating the samples as three groups of "Healthy", "Unhealthy-A" and "Unhealthy-B", respectively. Principal component analysis (PCA) as unsupervised pattern recognition method was used to verify the possibility of clustering of the pomegranate samples into the three groups. Discriminant analysis (DA) based on PCA was also used as a powerful supervised pattern recognition method to classify the samples. The calibration models of linear, quadratic and Mahalanobis discriminant analyses were developed based on different spectral pre-processing techniques. The best PCA-DA model was obtained using Mahalanobis distance method and first derivative (D1) pre-processing. The total percentage of correctly classified samples with the best calibration model was 97.9%. The developed model could also predict unknown samples with total percentage of correctly classified samples of 90.6%. It was concluded that Vis/NIR spectroscopy combined with pattern recognition method of PCA-DA can be an appropriate and rapid technology for non-destructively screening the pomegranates for detection of carob moth infestation during hidden activity of the larvae. (C) 2018 Elsevier B.V. All rights reserved.
机译:在该研究中,利用可见/近红外(可见/近红外)光谱法作为光学非破坏性技术与两个组合的可行性监督和无监督模式识别方法进行了评估期间检测Ectomyelois ceratoniae,角豆树蛾,侵染石榴幼虫的隐蔽活动。为此,一些水果被人为污染的角豆蛾幼虫。可见/空白样品和被污染的石榴没有和有幼虫侵染的外部视觉症状的NIR光谱污染样本作为三组“健康”的后一周和两周分析,“不健康-A”和“不健康-B” , 分别。如无监督模式识别方法主成分分析(PCA)被用来验证聚类石榴样品的成三组的可能性。基于PCA判别分析(DA)也被用来作为一个强大的监督模式识别方法对样本进行分类。线性,二次和马哈拉诺比斯判别分析的校准模型是基于不同的光谱预处理技术开发的。使用马哈拉诺比斯距离的方法和一阶导数(D1)预处理而获得最好的PCA-DA模型。正确分类的样本具有最佳校正模型的总比例为97.9%。开发的模型还可以预测未知样品的90.6%正确分类样本的总百分比。得出的结论是可见/近红外光谱与PCA-DA的模式识别方法相结合可以是用于幼虫隐藏活动期间非破坏性地筛选检测角豆蛾侵扰的石榴适当且快速的技术。 (c)2018年elestvier b.v.保留所有权利。

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