Application of Hyperspectral Technology with Machine Learning for Brix Detection of Pastry Pears

Plants Pub Date : 2024-04-22 DOI:10.3390/plants13081163
Hongkun Ouyang, Lingling Tang, Jinglong Ma, Tao Pang
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Abstract

Sugar content is an essential indicator for evaluating crisp pear quality and categorization, being used for fruit quality identification and market sales prediction. In this study, we paired a support vector machine (SVM) algorithm with genetic algorithm optimization to reliably estimate the sugar content in crisp pears. We evaluated the spectral data and actual sugar content in crisp pears, then applied three preprocessing methods to the spectral data: standard normal variable transformation (SNV), multivariate scattering correction (MSC), and convolution smoothing (SG). Support vector regression (SVR) models were built using processing approaches. According to the findings, the SVM model preprocessed with convolution smoothing (SG) was the most accurate, with a correlation coefficient 0.0742 higher than that of the raw spectral data. Based on this finding, we used competitive adaptive reweighting (CARS) and the continuous projection algorithm (SPA) to select key representative wavelengths from the spectral data. Finally, we used the retrieved characteristic wavelength data to create a support vector machine model (GASVR) that was genetically tuned. The correlation coefficient of the SG–GASVR model in the prediction set was higher by 0.0321 and the root mean square prediction error (RMSEP) was lower by 0.0267 compared with those of the SG–SVR model. The SG–CARS–GASVR model had the highest correlation coefficient, at 0.8992. In conclusion, the developed SG–CARS–GASVR model provides a reliable method for detecting the sugar content in crisp pear using hyperspectral technology, thereby increasing the accuracy and efficiency of the quality assessment of crisp pear.
应用高光谱技术和机器学习技术检测酥梨的糖度
含糖量是评价酥梨质量和分类的重要指标,可用于水果质量鉴定和市场销售预测。在本研究中,我们将支持向量机(SVM)算法与遗传算法优化配对,以可靠地估计脆梨中的含糖量。我们评估了脆梨的光谱数据和实际含糖量,然后对光谱数据采用了三种预处理方法:标准正态变量变换 (SNV)、多元散射校正 (MSC) 和卷积平滑 (SG)。利用处理方法建立了支持向量回归(SVR)模型。结果显示,经过卷积平滑(SG)预处理的 SVM 模型最为准确,其相关系数比原始光谱数据高出 0.0742。在此基础上,我们使用竞争性自适应再加权(CARS)和连续投影算法(SPA)从光谱数据中选择关键的代表性波长。最后,我们利用检索到的特征波长数据创建了一个经过基因调整的支持向量机模型(GASVR)。与 SG-SVR 模型相比,SG-GASVR 模型在预测集中的相关系数提高了 0.0321,均方根预测误差(RMSEP)降低了 0.0267。SG-CARS-GASVR 模型的相关系数最高,为 0.8992。总之,所开发的 SG-CARS-GASVR 模型为利用高光谱技术检测酥梨中的糖分含量提供了一种可靠的方法,从而提高了酥梨质量评估的准确性和效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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