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Measurement of Single Soybean Seed Attributes by Near-Infrared Technologies. A Comparative Study

机译:用近红外技术测量单一大豆种子的属性。比较研究

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摘要

Four near-infrared spectrophotometers, and their associated spectral collection methods, were tested and compared for measuring three soybean single-seed attributes: weight (g), protein (%), and oil (%). Using partial least-squares (PLS) and four preprocessing methods, the attribute that was significantly most easily predicted was seed weight (RPD >3 on average) and protein the least. The performance of all instruments differed from each other. Performances for oil and protein predictions were correlated with the instrument sampling system, with the best predictions using spectra taken from more than one seed angle. This was facilitated by the seed spinning or tumbling during spectral collection as opposed to static sampling methods. From the preprocessing methods utilized, no single one gave the best overall performances but weight measurements were often more successful with raw spectra, whereas protein and oil predictions were often enhanced by SNV and SNV + detrending.
机译:测试并比较了四种近红外分光光度计及其相关的光谱收集方法,以测量三种大豆单种子属性:重量(g),蛋白质(%)和油脂(%)。使用偏最小二乘(PLS)和四种预处理方法,最容易预测的属性是种子重量(平均RPD> 3)和蛋白质最少。所有乐器的性能各不相同。油脂和蛋白质预测的性能与仪器采样系统相关,最好的预测是使用从多个种子角度拍摄的光谱。与静态采样方法相反,这是由于在光谱收集过程中种子旋转或翻滚而促进的。从所使用的预处理方法来看,没有一个人能提供最佳的整体性能,但是利用原始光谱进行重量测量通常更为成功,而通过SNV和SNV +去趋势化往往可以增强蛋白质和油脂的预测。

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