Zhang Lixiu, Nie Pengcheng, Zhang Shujuan, Zhang Liying, Sun Tianyuan
College of Biosystems Engineering and Food Science, Zhejiang University, Hangzhou 310058, China.
College of Agricultural Engineering, Shanxi Agricultural University, Jinzhong 030800, China.
Foods. 2023 Sep 27;12(19):3593. doi: 10.3390/foods12193593.
Due to the dark red surface of ripe fresh peaches, their internal injury defects cannot be detected using the naked eye and conventional images. The rapid and accurate detection of fresh peach defects can improve the efficiency of fresh peach classification. The goal of this paper was to develop a nondestructive approach to simultaneously detecting internal injury defects and external injuries in fresh peaches. First, we collected spectral data from 347 Kubo peach samples using hyperspectral imaging technology (900-1700 nm) and carried out pretreatment. Four methods (the competitive adaptive reweighting algorithm (CARS), the combination of CARS and the average influence value algorithm (CARS-MIV), the combination of CARS and the successive projections algorithm (CARS-SPA), and the combination of CARS and uninformative variable elimination (CARS-UVE)) were used to extract the characteristic wavelength. Based on the characteristic wavelength extracted using the above methods, a genetic algorithm optimization support vector machine (GA-SVM) model and a least-squares support vector machine (LS-SVM) model were used to establish classification models. The results show that the combination of CARS and other feature wavelength extraction methods can effectively improve the prediction accuracy of the model when the number of wavelengths is small. Among them, the discriminant accuracy of the CARS-MIV-GA-SVM model reaches 93.15%. In summary, hyperspectral imaging technology can accomplish the accurate detection of Kubo peaches defects, and provides feasible ideas for the automatic classification of Kubo peaches.
由于成熟鲜桃表面呈暗红色,其内部损伤缺陷无法用肉眼和传统图像检测出来。快速准确地检测鲜桃缺陷可以提高鲜桃分级效率。本文的目的是开发一种无损方法,同时检测鲜桃的内部损伤缺陷和外部损伤。首先,我们使用高光谱成像技术(900 - 1700纳米)收集了347个久保桃样本的光谱数据并进行了预处理。采用四种方法(竞争性自适应重加权算法(CARS)、CARS与平均影响值算法相结合(CARS - MIV)、CARS与连续投影算法相结合(CARS - SPA)以及CARS与无信息变量消除相结合(CARS - UVE))提取特征波长。基于以上方法提取的特征波长,使用遗传算法优化支持向量机(GA - SVM)模型和最小二乘支持向量机(LS - SVM)模型建立分类模型。结果表明,当波长数量较少时,CARS与其他特征波长提取方法相结合能够有效提高模型的预测准确率。其中,CARS - MIV - GA - SVM模型的判别准确率达到93.15%。综上所述,高光谱成像技术能够实现久保桃缺陷的准确检测,为久保桃的自动分级提供了可行思路。