Non-destructive quality prediction of domestic, commercial red pepper powder using hyperspectral imaging

Q4 Agricultural and Biological Sciences Korean Journal of Food Preservation Pub Date : 2023-04-01 DOI:10.11002/kjfp.2023.30.2.224
Sang Seop Kim, Ji-Young Choi, Jeong-Ho Lim, Jeong-Seok Cho
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引用次数: 1

Abstract

We analyzed the major quality characteristics of red pepper powders from various regions and predicted these characteristics nondestructively using shortwave infrared hyperspectral imaging (HSI) technology. We conducted partial least squares regression analysis on 70% (n=71) of the acquired hyperspectral data of the red pepper powders to examine the major quality characteristics. Rc2 values of >0.8 were obtained for the ASTA color value (0.9263) and capsaicinoid content (0.8310). The developed quality prediction model was validated using the remaining 30% (n=35) of the hyperspectral data; the highest accuracy was achieved for the ASTA color value (Rp2=0.8488), and similar validity levels were achieved for the capsaicinoid and moisture contents. To increase the accuracy of the quality prediction model, we conducted spectrum preprocessing using SNV, MSC, SG-1, and SG-2, and the model’s accuracy was verified. The results indicated that the accuracy of the model was most significantly improved by the MSC method, and the prediction accuracy for the ASTA color value was the highest for all the spectrum preprocessing methods. Our findings suggest that the quality characteristics of red pepper powders, even powders that do not conform to specific variables such as particle size and moisture content, can be predicted via HSI.
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国产、市售红辣椒粉的高光谱成像无损质量预测
分析了不同产地红辣椒粉的主要品质特征,并利用短波红外高光谱成像(HSI)技术对这些特征进行了无损预测。对70% (n=71)的红辣椒粉高光谱数据进行偏最小二乘回归分析,探讨红辣椒粉的主要品质特征。ASTA颜色值(0.9263)和辣椒素含量(0.8310)的Rc2值为>0.8。利用剩余30% (n=35)的高光谱数据验证所建立的质量预测模型;ASTA颜色值的准确度最高(Rp2=0.8488),辣椒素和水分含量的效度也达到了相似的水平。为了提高质量预测模型的精度,我们使用SNV、MSC、SG-1和SG-2进行了频谱预处理,并对模型的精度进行了验证。结果表明,MSC方法对模型精度的提高最为显著,对ASTA颜色值的预测精度在所有光谱预处理方法中最高。我们的研究结果表明,红辣椒粉的质量特征,即使是不符合特定变量(如粒度和水分含量)的粉末,也可以通过HSI预测。
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来源期刊
Korean Journal of Food Preservation
Korean Journal of Food Preservation Agricultural and Biological Sciences-Food Science
自引率
0.00%
发文量
70
期刊介绍: This journal aims to promote and encourage the advancement of quantitative improvement for the storage, processing and distribution of food and its related disciplines, theory and research on its application. Topics covered include: Food Preservation and Packaging Food and Food Material distribution Fresh-cut Food Manufacturing Food processing Technology Food Functional Properties Food Quality / Safety.
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