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Study on starch content detection and visualization of potato based on hyperspectral imaging

机译:基于高光谱成像的马铃薯淀粉含量检测与可视化研究

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摘要

Starch is an important quality index in potato, which contributes greatly to the taste and nutritional quality of potato. At present, the determination of starch depends on chemical analysis, which is time consuming and laborious. Thus, rapid and accurate detection of the starch content of potatoes is important. This study combined hyperspectral imaging with chemometrics to predict potato starch content. Two varieties of Kexin No.1 and Holland No.15 potatoes were used as experimental samples. Hyperspectral data were collected from three sampling sites (the top, umbilicus, and middle regions). Standard normal variate (SNV) was used for spectral preprocessing, and three different methods of competitive adaptive reweighted sampling (CARS), iterative variable subset optimization (IVSO), and the variable iterative space shrinkage approach (VISSA) were used for characteristic wavelength selection. Linear partial least‐squares regression (PLSR) and nonlinear support vector regression (SVR) models were then established. The results indicated that the sampling site has a considerable impact on the accuracy of the prediction model, and the umbilicus region with CARS‐SVR model gave best performance with correlation coefficients in calibration (Rc) of 0.9415, in prediction (Rp) of 0.9346, root mean square errors in calibration (RMSEC) of 15.9 g/kg, in prediction (RMSEP) of 17.4 g/kg, and residual predictive deviation (RPD) of 2.69. The starch content in potatoes was visualized using the best model in combination with pseudo‐color technology. Our research provides a method for the rapid and nondestructive determination of starch content in potatoes, providing a good foundation for potato quality monitoring and grading.
机译:淀粉是马铃薯的一个重要质量指标,这对土豆的味道和营养品质有很大贡献。目前,淀粉的测定取决于化学分析,这是耗时和艰苦的。因此,快速准确地检测土豆的淀粉含量很重要。该研究将Hyperspectral成像与化学计量学相结合,以预测马铃薯淀粉含量。两种品种Kexin No.1和Holland No.15马铃薯被用作实验样品。从三个采样位点(顶部,脐带和中间区域)收集高光谱数据。标准正常变化(SNV)用于光谱预处理,以及三种不同的竞争自适应重新重量采样(汽车),迭代可变子集优化(IVSO)和可变迭代空间收缩方法(VISSA)用于特征波长选择。然后建立线性部分最小二乘回归(PLSR)和非线性支持向量回归(SVR)模型。结果表明采样站点对预测模型的准确性具有相当大的影响,并且具有CARS-SVR模型的脐部区域具有0.9415的校准(RC)的相关系数,其预测(RP)为0.9346,校准(RMSEC)的根均方误差为15.9g / kg,预测(RMSEP)为17.4g / kg,剩余预测偏差(RPD)为2.69。使用最佳模型与伪彩色技术结合使用最佳模型可视化土豆中的淀粉含量。我们的研究提供了一种方法,可以快速和无损测定土豆中的淀粉含量,为马铃薯质量监测和分级提供良好的基础。

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