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基于像素的近红外高光谱成像结合机器学习与特征选择对苹果中苹果蠹蛾侵染情况的无损检测

Nondestructive Detection of Codling Moth Infestation in Apples Using Pixel-Based NIR Hyperspectral Imaging with Machine Learning and Feature Selection.

作者信息

Ekramirad Nader, Khaled Alfadhl Y, Doyle Lauren E, Loeb Julia R, Donohue Kevin D, Villanueva Raul T, Adedeji Akinbode A

机构信息

Department of Biosystems and Agricultural Engineering, University of Kentucky, Lexington, KY 40546, USA.

Department of Electrical and Computer Engineering, University of Kentucky, Lexington, KY 40546, USA.

出版信息

Foods. 2021 Dec 21;11(1):8. doi: 10.3390/foods11010008.

Abstract

Codling moth (CM) ( L.), a devastating pest, creates a serious issue for apple production and marketing in apple-producing countries. Therefore, effective nondestructive early detection of external and internal defects in CM-infested apples could remarkably prevent postharvest losses and improve the quality of the final product. In this study, near-infrared (NIR) hyperspectral reflectance imaging in the wavelength range of 900-1700 nm was applied to detect CM infestation at the pixel level for three organic apple cultivars, namely Gala, Fuji and Granny Smith. An effective region of interest (ROI) acquisition procedure along with different machine learning and data processing methods were used to build robust and high accuracy classification models. Optimal wavelength selection was implemented using sequential stepwise selection methods to build multispectral imaging models for fast and effective classification purposes. The results showed that the infested and healthy samples were classified at pixel level with up to 97.4% total accuracy for validation dataset using a gradient tree boosting (GTB) ensemble classifier, among others. The feature selection algorithm obtained a maximum accuracy of 91.6% with only 22 selected wavelengths. These findings indicate the high potential of NIR hyperspectral imaging (HSI) in detecting and classifying latent CM infestation in apples of different cultivars.

摘要

苹果蠹蛾(CM)(鳞翅目:卷蛾科)是一种极具破坏力的害虫,给苹果生产国的苹果生产和销售带来了严重问题。因此,对受苹果蠹蛾侵害的苹果进行有效的外部和内部缺陷无损早期检测,可显著防止采后损失并提高最终产品的质量。在本研究中,应用900 - 1700 nm波长范围内的近红外(NIR)高光谱反射成像技术,在像素级别检测三个有机苹果品种(即嘎啦、富士和澳洲青苹)的苹果蠹蛾侵害情况。采用有效的感兴趣区域(ROI)获取程序以及不同的机器学习和数据处理方法,构建稳健且高精度的分类模型。使用顺序逐步选择方法进行最佳波长选择,以构建用于快速有效分类的多光谱成像模型。结果表明,使用梯度树提升(GTB)集成分类器等方法,对于验证数据集,受侵害和健康样本在像素级别分类的总准确率高达97.4%。特征选择算法仅使用22个选定波长就获得了91.6%的最大准确率。这些发现表明,近红外高光谱成像(HSI)在检测和分类不同品种苹果中潜在的苹果蠹蛾侵害方面具有很高的潜力。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/2236/8750721/f6286a442ec3/foods-11-00008-g001.jpg

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