利用高光谱成像检测水果加工产品的物理危害,并基于 PLS-DA 和逻辑回归机器学习模型进行预测

Na-Yeon Lee , In-Su Na , Kang-Woo Lee , Dong-Ho Lee , Jin-Woo Kim , Moo-Chang Kook , Suk-Ju Hong , Jae-Yong Son , A-Young Lee , Ae-Son Om , Young-Min Kim , Soon-Mi Shim
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引用次数: 0

摘要

目前的研究旨在通过高光谱成像(HSI)技术获得的反射值和光谱角度映射器(SAM)研究一个预测模型,用于检测与各种水果加工产品相关的三种外来物质--树枝、小刀和橡胶。研究发现,果汁(苹果、葡萄、番茄)和果酱(草莓、桃子、番茄)在 900 到 1700 纳米范围内的最大和最小反射值因是否存在物理危害而不同。SAM 图像的颜色差异也证实了物理危害的存在。通过 Anaconda 提示,在 Jupyter Notebook 平台上实施了偏最小二乘判别分析模型(PLS-DA)和逻辑回归,根据混淆矩阵提供了准确性、F1 分数、特异性和灵敏度。在测试集中,PLS-DA 建模结果的最大值为 100.0%,最小值为 97.6%。逻辑回归建模也有类似的结果:在测试集中,最大值为 100.0%,最小值为 97.8%。在测试集中,PLS-DA 和逻辑回归的灵敏度值最大均为 100.0%,这对于检测物理危害来说是一个有意义的结果。本次研究的结果表明,通过高光谱成像获得的反射值和 SAM 数据可以构建一个大数据平台,用于早期确定农产品加工过程中的物理危害。
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Detection of physical hazards from fruit processed products using hyperspectral imaging and prediction based on PLS-DA and logistic regression machine learning models

The current study aims to investigate a prediction model from reflection values and the spectral angle mapper (SAM) obtained from hyperspectral imaging (HSI) technology for the detection of three types of foreign materials – a branch, a knife, and rubber – that are associated with the various fruit-processed products. The study found that the maximum and minimum reflection values in the 900 to 1700 nm range for juices (apple, grape, tomato) and jams (strawberry, peach, tomato) differed depending on the presence or absence of physical hazards. The presence of physical hazards was also confirmed by the color difference in the SAM image. The partial least squares discriminant analysis model (PLS-DA) and logistic regression implemented on the Jupyter Notebook platform through the Anaconda prompt provided accuracy, F1 score, specificity, and sensitivity based on the confusion matrix. The maximum value was 100.0 %, while the minimum value was 97.6 % of the result of the PLS-DA modeling in the testing set. Logistic regression modeling also had a similar result: the maximum value was 100.0 %, while the minimum value was 97.8 % in the testing set. The sensitivity value in the testing set, which is a meaningful result for detecting physical hazards, was a maximum of 100.0 % for both PLS-DA and logistic regression. Results from the current study suggest that the reflection value and SAM data obtained through hyperspectral imaging could build a big data platform for early determination of physical hazards during agricultural product processing.

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