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首页> 外文期刊>Applied Engineering in Agriculture >DISCRIMINATION OF PEPPER SEED VARIETIES BY MULTISPECTRAL IMAGING COMBINED WITH MACHINE LEARNING
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DISCRIMINATION OF PEPPER SEED VARIETIES BY MULTISPECTRAL IMAGING COMBINED WITH MACHINE LEARNING

机译:多光谱成像与机器学习结合辣椒种子品种的歧视

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When non-seed materials are mixed in seeds or seed varieties of loll value are mixed in high value varieties, it will cause losses to growers or businesses. Thus, the successful discrimination of seed varieties is critical for improvement of seed ralue. In recent years, convolutional neural networks (CNNs) have been used in classification of seed varieties. The feasibility of using multispectral imaging combined with one-dimensional convolutional neural network (1D-CNN) to classify pepper seed varieties was studied. The total number of three varieties of samples was 1472, and the average spectral curve between 365nm and 970nm of the three varieties was studied. The data were analyzed using full bands of the spectrum or the feature bands selected by successive projection algorithm (SPA). SPA extracted 9 feature bands from 19 bands (430, 450, 470, 490, 515, 570, 660, 780, and 880 nm). The classification accuracy of the three classification models developed with full band using K nearest neighbors (KNN), support vector machine (SUM), and 1D-CNN were 85.81%, 97.70%, and 90.50%, respectively. With full bands, SUM and 1D-CNN performed significantly better than KNN, and SVM performed slightly better than 1D-CNN. With feature bands, the testing accuracies of SUM and 1D-CNN were 97.30% and 92.6%, respectively. Although the classification accuracy of 1D-CNN was not the highest, the ease of operation made it the most feasible method for pepper seed variety prediction.
机译:当在种子或种子品种中混合非种子材料,在高价值品种中混合时,它将导致种植者或企业损失。因此,种子品种的成功辨别对于改善种子罗卢至关重要。近年来,卷积神经网络(CNNS)已用于种子品种的分类。研究了使用多光谱成像与一维卷积神经网络(1D-CNN)进行分类辣椒种子品种的可行性。三种样品的总数为1472,研究了三种品种365nm和970nm之间的平均光谱曲线。使用频谱的全频带或由连续投影算法(SPA)选择的特征频带进行分析数据。水疗中心提取来自19条带(430,450,470,490,515,570,660,780和880nm)的9个功能带。使用K最近邻居(KNN),支持向量机(SUM)和1d-CNN的全带开发的三种分类模型的分类准确性分别为85.81%,97.70%和90.50%。对于全带,总和和1D-CNN明显优于KNN,SVM略高于1D-CNN。具有特征条件,总和和1D-CNN的测试精度分别为97.30%和92.6%。虽然1D-CNN的分类准确性不是最高的,但易于操作使其成为辣椒种子品种预测最可行的方法。

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