Alighaleh Pejman, Pakdel Reyhaneh, Ghanei Ghooshkhaneh Narges, Einafshar Soodabeh, Rohani Abbas, Saeidirad Mohammad Hossein
Department of Biosystems Engineering, Faculty of Agriculture, Ferdowsi University of Mashhad, Mashhad P.O. Box 9177948974, Iran.
Department of Agricultural Engineering Institute, Khorasan Razavi Agricultural and Natural Resources Research and Education Center, AREEO, Mashhad P.O. Box 9177335488, Iran.
Foods. 2023 May 30;12(11):2192. doi: 10.3390/foods12112192.
Saffron ( L.) is the most expensive spice in the world, known for its unique aroma and coloring in the food industry. Hence, its high price is frequently adulterated. In the current study, a variety of soft computing methods, including classifiers (i.e., RBF, MLP, KNN, SVM, SOM, and LVQ), were employed to classify four samples of fake saffron (dyed citrus blossom, safflower, dyed fibers, and mixed stigma with stamens) and three samples of genuine saffron (dried by different methods). RGB and spectral images (near-infrared and red bands) were captured from prepared samples for analysis. The amount of crocin, safranal, and picrocrocin were measured chemically to compare the images' analysis results. The comparison results of the classifiers indicated that KNN could classify RGB and NIR images of samples in the training phase with 100% accuracy. However, KNN's accuracy for different samples in the test phase was between 71.31% and 88.10%. The RBF neural network achieved the highest accuracy in training, test, and total phases. The accuracy of 99.52% and 94.74% was obtained using the features extracted from RGB and spectral images, respectively. So, soft computing models are helpful tools for detecting and classifying fake and genuine saffron based on RGB and spectral images.
藏红花(Crocus sativus L.)是世界上最昂贵的香料,因其独特的香气和在食品工业中的着色作用而闻名。因此,其高昂的价格常常导致掺假现象。在当前的研究中,采用了多种软计算方法,包括分类器(即径向基函数神经网络(RBF)、多层感知器(MLP)、K近邻算法(KNN)、支持向量机(SVM)、自组织映射(SOM)和学习向量量化(LVQ)),对四个假藏红花样本(染色柑橘花、红花、染色纤维以及带有雄蕊的混合柱头)和三个真藏红花样本(通过不同方法干燥)进行分类。从制备好的样本中采集RGB图像和光谱图像(近红外和红色波段)用于分析。通过化学方法测量藏花素、藏红醛和苦藏花素的含量,以比较图像分析结果。分类器的比较结果表明,KNN在训练阶段对样本的RGB图像和近红外图像进行分类时,准确率可达100%。然而,在测试阶段,KNN对不同样本的准确率在71.31%至88.10%之间。径向基函数神经网络在训练、测试和总体阶段均取得了最高准确率。分别使用从RGB图像和光谱图像中提取的特征,获得的准确率为99.52%和94.74%。因此,软计算模型是基于RGB图像和光谱图像检测和分类真假藏红花的有用工具。