NON-DESTRUCTIVE PREDICTION OF SOLUBLE SOLID CONTENT IN KIWIFRUIT BASED ON VIS/NIR HYPERSPECTRAL IMAGING

IF 0.6 Q4 AGRICULTURAL ENGINEERING INMATEH-Agricultural Engineering Pub Date : 2023-08-17 DOI:10.35633/inmateh-70-42
Shibang Ma, Ailing Guo
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Abstract

Soluble solid content (SSC) is a major quality index of kiwifruits. Visible near-infrared (Vis/NIR) hyperspectral imaging with the genetic algorithm (GA) was adopted in this study to realize the non-destructive prediction of kiwifruit SSC. A laboratory Vis/NIR hyperspectral imaging system was established to collect the hyperspectral imaging of 120 kiwifruit samples at a range of 400–1100 nm. The average reflectance spectral data of the region of interest of the kiwifruit hyperspectral imaging were obtained after different preprocessing method, namely, Savitzky–Golay smoothing (SG), multiplicative scatter correction (MSC), and their combination method. The prediction models of partial least squares regression, multiple linear regression, and least squares support vector machine (LS-SVM) were built for determining kiwifruit SSC by using the average reflectance spectral data and effective feature wavelength variables selected by GA, respectively. The results show that SG+MSC is the best preprocessing method. The precisions of the prediction models built using the effective feature wavelength variables selected by GA are higher than that established using full average reflectance spectral data. The GA-LS-SVM prediction model has a best performance with correlation coefficient for prediction (R=0.932) and standard error of prediction (SEP=0.536° Bx) for predicting kiwifruit SSC. The prediction accuracy has been improved by 5.6% compared with that of the prediction models established by using the full-band reflectance spectral data. This study provides an effective method for non-destructive detection of kiwifruit SSC.
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基于可见光/近红外高光谱成像的猕猴桃可溶性固形物含量无损预测
可溶性固形物含量(SSC)是猕猴桃的主要品质指标。本研究采用可见光/近红外(Vis/NIR)高光谱成像技术结合遗传算法(GA)实现猕猴桃SSC的无损预测。建立了实验室可见光/近红外高光谱成像系统,采集了120份猕猴桃样品在400 ~ 1100 nm范围内的高光谱成像。采用Savitzky-Golay平滑(SG)、乘法散射校正(MSC)及其组合预处理方法,得到猕猴桃高光谱成像目标区域的平均反射率光谱数据。利用遗传算法选择的平均反射率光谱数据和有效特征波长变量,分别建立了偏最小二乘回归、多元线性回归和最小二乘支持向量机(LS-SVM)预测猕猴桃SSC的模型。结果表明,SG+MSC是最佳的预处理方法。利用遗传算法选择的有效特征波长变量建立的预测模型精度高于利用全平均反射率光谱数据建立的预测模型。GA-LS-SVM预测模型预测猕猴桃SSC的相关系数(R=0.932)和标准误差(SEP=0.536°Bx)最好。与利用全波段反射率光谱数据建立的预测模型相比,预测精度提高了5.6%。本研究为猕猴桃SSC的无损检测提供了有效的方法。
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来源期刊
INMATEH-Agricultural Engineering
INMATEH-Agricultural Engineering AGRICULTURAL ENGINEERING-
CiteScore
1.30
自引率
57.10%
发文量
98
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