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Considerations regarding the use of hyperspectral Imaging data in classifications of food products, exemplified by analysis of maize kernels

机译:关于在食品分类中使用高光谱成像数据的注意事项,以玉米粒分析为例

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Development of robust analytical procedures is critical when using hyperspectral imaging technology in food technology and agriculture. This study used near-isogenic inbred corn lines to address two basic questions: (1) To what extent is classification accuracy increased by grinding maize kernels? (2) Can the classification accuracy of two near-isogenic inbred lines be increased by using a spectral filter to classify only certain hyperspectral profiles from each image cube? Whole kernels and ground kernels in two particle intervals, 0.250-0.354 mm (size 1) and 0.354-0.841 mm (size 2), were examined. Spectral profiles acquired from ground kernels had higher spectral repeatability than data collected from whole kernels. The classification error of discriminant functions from whole kernels was > 3 times lower than that of size 1 ground particles. Applying a spectral filter to input data had negligible effect on classifications of hyperspectral profiles from whole kernels and size 2 ground particles, but for size 1 ground particles a considerable increase in accuracy was observed. Independent validation confirmed that distinction between wild type and mutant inbred maize lines could be conducted with > 80% accuracy after the proposed spectral filter had been applied to hyperspectral profiles of size 1 ground particles. A combination of discriminant analysis and regression analysis could be used to accurately predict mixture ratios of the two inbred lines. The use of spectral filtering to increase the level of spectral repeatability and the use of hyperspectral imaging technology in large-scale commercial operations are discussed.
机译:在食品技术和农业中使用高光谱成像技术时,开发可靠的分析程序至关重要。这项研究使用近等基因自交系玉米来解决两个基本问题:(1)磨玉米粒将分类精度提高到何种程度? (2)是否可以通过使用光谱滤波器对每个图像立方体中的某些高光谱轮廓进行分类来提高两个近等基因近交系的分类精度?检查了两个颗粒间隔为0.250-0.354 mm(尺寸1)和0.354-0.841 mm(尺寸2)的整个籽粒和磨碎的籽粒。从地面籽粒获得的光谱图谱具有比从整个籽粒收集的数据更高的光谱重复性。来自整个内核的判别函数的分类错误比1号地面颗粒的分类错误小3倍以上。将光谱滤镜应用于输入数据对来自整个内核和2号地面颗粒的高光谱轮廓的分类的影响可忽略不计,但是对于1号地面颗粒,观察到准确性显着提高。独立验证确认,在将拟议的光谱滤光片应用于1号地面颗粒的高光谱图谱后,野生型和突变型近交玉米品系之间的区别可以> 80%的精度进行。判别分析和回归分析的组合可用于准确预测两个自交系的混合比。讨论了在大型商业运营中使用光谱滤波来提高光谱可重复性的级别以及使用高光谱成像技术。

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