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Application of near-infrared hyperspectral imaging to identify a variety of silage maize seeds and common maize seeds

机译:近红外高光谱成像在鉴定各种青贮玉米种子和常见玉米种子中的应用

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Common maize seeds and silage maize seeds are similar in appearance and are difficult to identify with the naked eye. Four varieties of common maize seeds and four varieties of silage maize seeds were identified by near-infrared hyperspectral imaging (NIR-HSI) combined with chemometrics. The pixel-wise principal component analysis was used to distinguish the differences among different varieties of maize seeds. The object-wise spectra of each single seed sample were extracted to build classification models. Support vector machine (SVM) and radial basis function neural network (RBFNN) classification models were established using two different classification strategies. First, the maize seeds were directly classified into eight varieties with the prediction accuracy of the SVM model and RBFNN model over 86%. Second, the seeds of silage maize and common maize were firstly classified with the classification accuracy over 88%, then the seeds were classified into four varieties, respectively. The classification accuracy of silage maize seeds was over 98%, and the classification accuracy of common maize seeds was over 97%. The results showed that the varieties of common maize seeds and silage maize seeds could be classified by NIR-HSI combined with chemometrics, which provided an effective means to ensure the purity of maize seeds, especially to isolate common seeds and silage seeds.
机译:常见的玉米种子和青贮玉米种子在外观中类似,难以识别肉眼。通过近红外高光谱成像(NIR-HSI)与化学计量学结合鉴定了四种常见的含玉米种子和四种青贮玉米种子。使用像素明智的主成分分析来区分不同品种种子的差异。提取每种种子样品的对象光谱以构建分类模型。支持向量机(SVM)和径向基函数神经网络(RBFNN)分类模型是使用两种不同的分类策略建立的。首先,玉米种子直接分为八种,具有SVM模型的预测精度,RBFNN模型超过86%。其次,青贮玉米种子和常见玉米的种子首先以88%的分类精度分类,然后分别分为四种品种。青贮玉米种子的分类准确性超过98%,常见玉米种子的分类精度超过97%。结果表明,常见的玉米种子和青贮玉米种子可以通过NIR-HSI与化学计量学分类,这提供了一种有效的方法,以确保玉米种子的纯度,特别是分离普通种子和青贮饲料。

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