Noutfia Younes, Ropelewska Ewa
Fruit and Vegetable Storage and Processing Department, The National Institute of Horticultural Research, Konstytucji 3 Maja 1/3, 96-100 Skierniewice, Poland.
Foods. 2024 May 21;13(11):1602. doi: 10.3390/foods13111602.
Date palm ( L.) fruit samples belonging to the 'Mejhoul' and 'Boufeggous' cultivars were harvested at the Tamar stage and used in our experiments. Before scanning, date samples were dried using convective drying at 60 °C and infrared drying at 60 °C with a frequency of 50 Hz, and then they were scanned. The scanning trials were performed for two hundred date palm fruit in fresh, convective-dried, and infrared-dried forms of each cultivar using a flatbed scanner. The image-texture parameters of date fruit were extracted from images converted to individual color channels in RGB, Lab, XYZ, and UVS color models. The models to classify fresh and dried samples were developed based on selected image textures using machine learning algorithms belonging to the groups of Bayes, Trees, Lazy, Functions, and Meta. For both the 'Mejhoul' and 'Boufeggous' cultivars, models built using Random Forest from the group of Trees turned out to be accurate and successful. The average classification accuracy for fresh, convective-dried, and infrared-dried 'Mejhoul' reached 99.33%, whereas fresh, convective-dried, and infrared-dried samples of 'Boufeggous' were distinguished with an average accuracy of 94.33%. In the case of both cultivars and each model, the higher correctness of discrimination was between fresh and infrared-dried samples, whereas the highest number of misclassified cases occurred between fresh and convective-dried fruit. Thus, the developed procedure may be considered an innovative approach to the non-destructive assessment of drying impact on the external quality characteristics of date palm fruit.
属于“梅朱尔”和“布费古”品种的海枣(L.)果实样本在塔玛尔阶段收获并用于我们的实验。在扫描之前,海枣样本先在60℃下进行对流干燥,然后在60℃、50Hz频率下进行红外干燥,之后进行扫描。使用平板扫描仪对每个品种的200颗新鲜、对流干燥和红外干燥形式的海枣果实进行扫描试验。从转换为RGB、Lab、XYZ和UVS颜色模型中各个颜色通道的图像中提取海枣果实的图像纹理参数。基于所选图像纹理,使用属于贝叶斯、树、懒惰、函数和元组的机器学习算法开发对新鲜和干燥样本进行分类的模型。对于“梅朱尔”和“布费古”品种,使用树组中的随机森林构建的模型都被证明是准确且成功的。新鲜、对流干燥和红外干燥的“梅朱尔”的平均分类准确率达到99.33%,而“布费古”的新鲜、对流干燥和红外干燥样本的区分平均准确率为94.33%。对于两个品种和每个模型,新鲜样本和红外干燥样本之间的判别正确率更高,而新鲜样本和对流干燥果实之间的误分类情况最多。因此,所开发的程序可被视为一种创新方法,用于对干燥对海枣果实外部质量特征的影响进行无损评估。