Chemical and Materials Engineering Department, University of Auckland, Auckland 1010, New Zealand.
College of Engineering and Technology, American University of the Middle East, Egaila 54200, Kuwait.
Sensors (Basel). 2020 Aug 18;20(16):4645. doi: 10.3390/s20164645.
Hyperspectral imaging (HSI) in the spectral range of 400-1000 nm was tested to differentiate three different particle size fractions of milk powder. Partial least squares discriminant analysis (PLS-DA) was performed to observe the relationship of spectral data and particle size information for various samples of instant milk powder. The PLS-DA model on full wavelengths successfully classified the three fractions of milk powder with a coefficient of prediction 0.943. Principal component analysis (PCA) identified each of the milk powder fractions as separate clusters across the first two principal components (PC and PC) and five characteristic wavelengths were recognised by the loading plot of the first three principal components. Weighted regression coefficient (WRC) analysis of the partial least squares model identified 11 important wavelengths. Simplified PLS-DA models were developed from two sets of reduced wavelengths selected by PCA and WRC and showed better performance with predictive correlation coefficients (R) of 0.962 and 0.979, respectively, while PLS-DA with complete spectrum had R of 0.943. Similarly, classification accuracy of PLS-DA was improved to 92.2% for WRC based predictive model. Calculation time was also reduced to 2.1 and 2.8 s for PCA and WRC based simplified PLS-DA models in comparison to the complete spectrum model that was taking 32.2 s on average to predict the classification of milk powder samples. These results demonstrated that HSI with appropriate data analysis methods could become a potential analyser for non-invasive testing of milk powder in the future.
高光谱成像(HSI)在 400-1000nm 的光谱范围内被测试用于区分三种不同粒径的奶粉。偏最小二乘判别分析(PLS-DA)用于观察各种速溶奶粉样本的光谱数据与粒径信息之间的关系。全波长的 PLS-DA 模型成功地对三种奶粉进行了分类,预测系数为 0.943。主成分分析(PCA)将每一种奶粉分别识别为前两个主成分(PC 和 PC)的独立聚类,通过前三个主成分的加载图识别了五个特征波长。偏最小二乘模型的加权回归系数(WRC)分析确定了 11 个重要波长。基于 PCA 和 WRC 选择的两组简化波长建立了简化的 PLS-DA 模型,其预测相关系数(R)分别为 0.962 和 0.979,表现更好,而全谱的 PLS-DA 的 R 为 0.943。同样,基于 WRC 的预测模型的 PLS-DA 分类准确率提高到 92.2%。与全谱模型相比,基于 PCA 和 WRC 的简化 PLS-DA 模型的计算时间分别缩短到 2.1 和 2.8s,而全谱模型平均需要 32.2s 来预测奶粉样本的分类。这些结果表明,高光谱成像与适当的数据分析方法相结合,未来可能成为一种非侵入式测试奶粉的潜在分析器。