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Detection of Fungus-Infected Corn Kernels Using Near-Infrared Reflectance Spectroscopy and Color Imaging

机译:近红外反射光谱和彩色成像技术检测真菌感染的玉米粒

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摘要

Contamination of grain products by fungus can lead to economic losses and is deleterious to human and livestock health. Detection and quantification of fungus-infected corn kernels would be advantageous for producers and breeders in evaluating qualityand in selecting hybrids with resistance to infection. This study evaluated the performance of single-kernel near-infrared reflectance spectroscopy (NIRS) and color imaging to discriminate corn kernels infected by eight fungus species at different levels of infection. Discrimination was done according to the level of infection and the mold species. NIR spectra (904 to 1685 nm) and color images were used to develop linear and nonlinear prediction models using linear discriminant analysis (LDA) and multi-layer perceptron (MLP) neural networks. NIRS was able to accurately detect 98% of the uninfected control kernels, compared to about 89% for the color imaging. Results for detecting all levels of infection using NIR were 89% and 79% for the uninfected control and infected kernels, respectively; color imaging was able to discriminate 75%o of both the control and infected kernels. In general, there was better discrimination for control kernels than for infected kernels, and certain mold species had betterclassification accuracy than others when using NIR. The vision system was not able to classify mold species well. The use of principal component analysis on image data did not improve the classification results, while LDA performed almost as well as MLPmodels. LDA and mean centering NIR spectra gave better classification models. Compared to the results of NIR spectrometry, the classification accuracy of the color imaging system was less attractive, although the instrument has a lower cost and a higherthroughput.
机译:真菌污染谷物产品会导致经济损失,并对人类和牲畜健康有害。检测和定量感染真菌的玉米粒对生产者和育种者在评估质量和选择具有抗感染性的杂种方面将是有利的。这项研究评估了单核近红外反射光谱(NIRS)和彩色成像在区分感染程度不同的8种真菌种类的玉米粒中的性能。根据感染程度和霉菌种类进行区分。使用线性判别分析(LDA)和多层感知器(MLP)神经网络,将近红外光谱(904至1685 nm)和彩色图像用于开发线性和非线性预测模型。与彩色成像的约89%相比,NIRS能够准确检测出98%的未感染对照仁。使用NIR检测所有感染水平的结果,未感染对照和受感染谷粒分别为89%和79%;彩色成像能够区分对照和受感染的籽粒中的75%。通常,对控制粒的区分要比对感染粒的区分更好,并且使用NIR时,某些霉菌的分类准确度要比其他种类高。视觉系统无法很好地对霉菌种类进行分类。在图像数据上使用主成分分析并不能改善分类结果,而LDA的表现几乎与MLP模型相同。 LDA和平均居中NIR光谱提供了更好的分类模型。与NIR光谱仪的结果相比,彩色成像系统的分类精度吸引力较低,尽管该仪器成本较低且通量较高。

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