首页> 外文期刊>Transactions of the ASABE >INTEGRATION OF FLUORESCENCE AND REFLECTANCE VISIBLE NEAR-INFRARED (VNIR) HYPERSPECTRAL IMAGES FOR DETECTION OF AFLATOXINS IN CORN KERNELS
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INTEGRATION OF FLUORESCENCE AND REFLECTANCE VISIBLE NEAR-INFRARED (VNIR) HYPERSPECTRAL IMAGES FOR DETECTION OF AFLATOXINS IN CORN KERNELS

机译:荧光和反射可见光近红外(VNIR)高光谱图像的集成,用于检测玉米仁中的黄曲霉毒素

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Aflatoxin contamination in agricultural products has been an important and long-standing problem around the world. Produced by certain fungal species of the Aspergillus genus, aflatoxins are highly toxic and carcinogenic. This study investigated the integration of fluorescence and reflectance visible near-infrared (VNIR) hyperspectral images to detect aflatoxins in whole corn kernels. Field-inoculated corn ears were harvested, and kernels having different aflatoxin contamination levels were collected. Both fluorescence hyperspectral images under ultraviolet (UV) excitation and reflectance hyperspectral images under halogen illumination were recorded on the two sides of the kernels (endosperm and germ). Subsequent chemical analysis was performed on each kernel to provide reference aflatoxin concentration. Threshold values of 20 and 100 ppb were adopted separately to group kernels as contaminated or healthy. Contaminated kernels exhibited different fluorescence and reflectance spectral features compared with healthy kernels. Spectral datasets were compressed and interpreted using principal component analysis (PCA). Least squares support vector machines (LS-SVM) and k-nearest neighbor (KNN) classifiers were used on the fluorescence PC, reflectance PC, and integrated fluorescence and reflectance PC variables for classifying both sides of kernels as contaminated or healthy. The best overall prediction accuracy was 95.33% for the LS-SVM model with the 100 ppb threshold on the germ side in the integrated analysis. Overall, the germ side performed better than the endosperm side, especially for the true positive rate (TPR). Fluorescence and reflectance image data generally achieved similar classification accuracy. The integrated analysis achieved better results than separate fluorescence or reflectance analysis on the germ side, and conspicuous improvement in the TPR of the germ side was observed after integration. The mean aflatoxin concentration in the prediction samples was reduced from 2662.01 ppb to 64.04, 87.33, and 7.59 ppb after removing samples that were classified as contaminated by fluorescence, reflectance, and integrated analysis, respectively, on the germ side. This study demonstrated the potential of the integrated technique for better screening of aflatoxin-contaminated kernels and could lead to rapid and non-destructive scanning-based detection in the corn industry.
机译:农产品中的黄曲霉毒素污染已成为世界范围内一个重要且长期存在的问题。黄曲霉毒素由曲霉属的某些真菌种类产生,具有剧毒和致癌性。这项研究调查了荧光和反射可见光近红外(VNIR)高光谱图像的集成,以检测整个玉米粒中的黄曲霉毒素。收获田间接种的玉米穗,并收集具有不同黄曲霉毒素污染水平的玉米粒。在籽粒的两侧(胚乳和胚芽)都记录了紫外线(UV)激发下的荧光高光谱图像和卤素灯下的反射高光谱图像。随后对每个籽粒进行化学分析,以提供参考黄曲霉毒素浓度。分别采用20 ppb和100 ppb的阈值将被污染或健康的谷粒分组。与健康谷物相比,被污染的谷物表现出不同的荧光和反射光谱特征。使用主成分分析(PCA)压缩和解释光谱数据集。最小二乘支持向量机(LS-SVM)和k近邻(KNN)分类器用于荧光PC,反射PC以及集成的荧光和反射PC变量,以将籽粒的两侧分类为受污染或健康的。 LS-SVM模型的最佳总体预测准确度为95.33%,在综合分析中细菌侧的阈值为100 ppb。总体而言,细菌方面的表现要好于胚乳方面,尤其是对于真阳性率(TPR)。荧光和反射图像数据通常达到相似的分类精度。整合分析比细菌侧的单独荧光或反射分析获得了更好的结果,整合后观察到了细菌侧TPR的显着改善。在去除细菌侧分别被荧光,反射和综合分析污染的样本后,预测样本中的黄曲霉毒素平均浓度从2662.01 ppb降至64.04、87.33和7.59 ppb。这项研究证明了整合技术用于更好地筛选受黄曲霉毒素污染的玉米粒的潜力,并可能导致玉米行业中基于扫描的快速无损检测。

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