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Identification of moldy corn kernels using visible/near-infraredhyperspectral images

机译:使用可见/近三角形晶体图像识别发霉的玉米核

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Visible/near-infrared (VIS/NIR) hyperspectral imaging was used to identify moldy corn kernels in this work. A total of 200 corn kernels in the same variety collected from field were divided into moldy group and health group. Hyperspectral images of moldy and healthy kernels were acquired with a spectral range of400-1000 nm. Band math and principle component analysis (PCA) were employed to remove background, bad pixels and noise. After that, PCA was performed again on the cleaned hyperspectral images.Score images were used to initially judge whether the corn kernels were moldy or not. A support vector machine (SVM) model based on the first three PCs was established, and the classification accuracies were 98.00%, 96.00% and 97.00% for calibration set, validation set and cross validation set. Further, four wavelengths (664, 515, 970 and440nm) were selected by Successive projections algorithm (SPA). A new SVM model was built, the classification accuracies of calibration, validation and cross validation set were 98.67%, 98.00% and 98.00% respectively, based on the characteristic wavelengths SVM model, a prediction map of moldy kernels was established. The map showed the position of the moldy corn kernels. All the results illustrated the VIS/NIR hyperspectral imaging has the potential to identify and separate moldy com kernels from healthy ones.
机译:可见/近红外(VI / NIR)高光谱成像用于鉴定该工作中的发霉玉米核。从场收集的同一品种中共有200种玉米核分为发霉的群体和健康组。通过400-1000nm的光谱范围获得发霉和健康核的高光谱图像。使用频段数学和原理分量分析(PCA)来删除背景,不良像素和噪声。之后,在清洁的高光谱图像上再次进行PCA。使用图像用于最初判断玉米粒是否是发霉的。建立了基于前三名PC的支持向量机(SVM)模型,校准集,验证集和交叉验证集的分类精度为98.00%,96.00%和97.00%。此外,通过连续投影算法(SPA)选择四个波长(664,515,970和440nm)。建立了一种新的SVM模型,基于特征波长SVM模型,校准,验证和交叉验证集的分类精度分别为98.67%,98.00%和98.00%,建立了碳氢化合物的预测图。地图显示了发霉的玉米粒的位置。所有结果所示的所有结果都有可能识别和将Moldify Com核从健康的成像识别和分开。

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