College of Food and Agriculture Sciences, Department of Plant Production, King Saud University, Riyadh, Saudi Arabia.
Faculty of Agriculture, Pomology Department, Alexandria University, Alexandria, Egypt.
PeerJ. 2021 Jun 17;9:e11529. doi: 10.7717/peerj.11529. eCollection 2021.
In the fresh fruit industry, identification of fruit cultivars and fruit quality is of vital importance. In the current study, nine peach cultivars (Dixon, Early Grande, Flordaprince, Flordastar, Flordaglo, Florda 834, TropicSnow, Desertred, and Swelling) were evaluated for differences in skin color, firmness, and size. Additionally, a multilayer perceptron (MLP) artificial neural network was applied for identification of the cultivars according to these attributes. The MLP was trained with an input layer including six input nodes, a single hidden layer with six hidden nodes, and an output layer with nine output nodes. A hyperbolic tangent activation function was used in the hidden layer and the cross entropy error was given because the softmax activation function was functional to the output layer. Results showed that the cross entropy error was 0.165. The peach identification process was significantly affected by the following variables in order of contribution (normalized importance): polar diameter (100%), (89.0), (88.0%), (78.5%), firmness (71.3%), and cross diameter (37.5.3%). The MLP was found to be a viable method of peach cultivar identification and classification because few identifying attributes were required and an overall classification accuracy of 100% was achieved in the testing phase. Measurements and quantitative discrimination of peach properties are provided in this research; these data may help enhance the processing efficiency and quality of processed peaches.
在新鲜水果行业中,水果品种的鉴定和水果品质的评估至关重要。在本研究中,我们评估了九个桃品种(Dixon、Early Grande、Flordaprince、Flordastar、Flordaglo、Florda 834、TropicSnow、Desertred 和 Swelling)在果皮颜色、硬度和大小方面的差异。此外,我们还应用了多层感知机(MLP)人工神经网络根据这些属性对品种进行鉴定。MLP 的输入层包括 6 个输入节点,一个具有 6 个隐藏节点的单隐藏层和一个具有 9 个输出节点的输出层。隐藏层采用双曲正切激活函数,输出层采用交叉熵误差,因为软最大激活函数对输出层有效。结果表明,交叉熵误差为 0.165。桃品种识别过程受以下变量的显著影响,按贡献(归一化重要性)排序:极径(100%)、 (89.0%)、 (88.0%)、 (78.5%)、硬度(71.3%)和横径(37.5%)。MLP 是一种可行的桃品种鉴定和分类方法,因为所需的鉴定属性较少,在测试阶段实现了 100%的总体分类准确率。本研究提供了桃属性的测量和定量判别;这些数据可能有助于提高加工桃的处理效率和质量。