Shahedi Yashar, Zandi Mohsen, Bimakr Mandana
Department of Food Science and Engineering, Faculty of Agriculture, University of Zanjan, Zanjan, 45371-38791, Iran.
Heliyon. 2024 Oct 18;10(20):e39484. doi: 10.1016/j.heliyon.2024.e39484. eCollection 2024 Oct 30.
The current research utilized visual characteristics obtained from RGB images and qualitative characteristics to investigate changes in surface defects, predict physical and chemical characteristics, and classify sweet cherries during storage. It was achieved with the help of ANN (Artificial Neural Network) and ANFIS (Adaptive Neuro-Fuzzy Inference System) models. The ANN used in this study was a Multilayer Perceptron (MLP) with SigmoidAxon and TanhAxon threshold functions, trained with the Momentum training function. Additionally, ANFIS with a Mamdani system and Triangle, Gauss, and Trapezoidal membership functions, was employed to predict sweet cherries' physical and chemical properties and their quality classification. Both models incorporate four algorithms. Additionally, the algorithms use color statistical features and color texture features combined with physical and chemical properties, including weight loss, firmness, titratable acidity, and total anthocyanin content. The image color and texture characteristics were used by ANN and ANFIS models to predict physical and chemical properties with high accuracy. ANN and ANFIS models accurately estimate sweet cherry quality grades in all four algorithms with over 90 % accuracy. According to the findings, the ANN and ANFIS models have demonstrated satisfactory performance in the qualitative classification and prediction of sweet cherries' physical and chemical properties.
当前的研究利用从RGB图像获得的视觉特征和定性特征来研究甜樱桃在储存期间表面缺陷的变化、预测其物理和化学特性并进行分类。这借助人工神经网络(ANN)和自适应神经模糊推理系统(ANFIS)模型得以实现。本研究中使用的ANN是一个具有SigmoidAxon和TanhAxon阈值函数的多层感知器(MLP),采用动量训练函数进行训练。此外,采用具有Mamdani系统以及三角形、高斯和梯形隶属函数的ANFIS来预测甜樱桃的物理和化学性质及其质量分类。这两种模型都包含四种算法。此外,这些算法使用颜色统计特征和颜色纹理特征,并结合物理和化学性质,包括重量损失、硬度、可滴定酸度和总花青素含量。ANN和ANFIS模型利用图像颜色和纹理特征高精度地预测物理和化学性质。ANN和ANFIS模型在所有四种算法中都能准确估计甜樱桃的质量等级,准确率超过90%。根据研究结果,ANN和ANFIS模型在甜樱桃物理和化学性质的定性分类和预测方面表现出令人满意的性能。