Chu Xuan, Zhang Kun, Wei Hongyu, Ma Zhiyu, Fu Han, Miao Pu, Jiang Hongzhe, Liu Hongli
College of Mechanical and Electrical Engineering, Zhongkai University of Agriculture and Engineering, Guangzhou, China.
College of Engineering, South China Agricultural University, Guangzhou, China.
Front Plant Sci. 2023 Jun 2;14:1180203. doi: 10.3389/fpls.2023.1180203. eCollection 2023.
of banana caused by is one of the most serious post-harvest diseases, which can cause significant yield losses. Clarifying the infection mechanism of the fungi using non-destructive methods is crucial for timely discriminating infected bananas and taking preventive and control measures.
This study presented an approach for tracking growth and identifying different infection stages of the in bananas using Vis/NIR spectroscopy. A total of 330 banana reflectance spectra were collected over ten consecutive days after inoculation, with a sampling rate of 24 h. The four-class and five-class discriminant patterns were designed to examine the capability of NIR spectra in discriminating bananas infected at different levels (control, acceptable, moldy, and highly moldy), and different time at early stage (control and days 1-4). Three traditional feature extraction methods, i.e. PC loading coefficient (PCA), competitive adaptive reweighted sampling (CARS) and successive projections algorithm (SPA), combining with two machine learning methods, i.e. partial least squares discriminant analysis (PLSDA) and support vector machine (SVM), were employed to build discriminant models. One-dimensional convolutional neural network (1D-CNN) without manually extracted feature parameters was also introduced for comparison.
The PCA-SVM and·SPA-SVM models had good performance with identification accuracies of 93.98% and 91.57%, 94.47% and 89.47% in validation sets for the four- and five-class patterns, respectively. While the 1D-CNN models performed the best, achieving an accuracy of 95.18% and 97.37% for identifying infected bananas at different levels and time, respectively.
These results indicate the feasibility of identifying banana fruit infected with using Vis/NIR spectra, and the resolution can be accurate to one day.
由[具体真菌名称未给出]引起的香蕉[病害名称未给出]是最严重的采后病害之一,可导致显著的产量损失。使用无损方法阐明真菌的感染机制对于及时鉴别受感染的香蕉并采取预防和控制措施至关重要。
本研究提出了一种利用可见/近红外光谱跟踪香蕉中[具体真菌名称未给出]的生长并识别其不同感染阶段的方法。接种后连续十天共收集了330个香蕉反射光谱,采样率为24小时一次。设计了四类和五类判别模式,以检验近红外光谱鉴别不同感染水平(对照、可接受、发霉和高度发霉)以及早期不同时间(对照和第1 - 4天)感染香蕉的能力。采用三种传统特征提取方法,即主成分载荷系数(PCA)、竞争性自适应重加权采样(CARS)和连续投影算法(SPA),结合两种机器学习方法,即偏最小二乘判别分析(PLSDA)和支持向量机(SVM),构建判别模型。还引入了无需手动提取特征参数的一维卷积神经网络(1D - CNN)进行比较。
PCA - SVM和SPA - SVM模型表现良好,在四类和五类模式的验证集中识别准确率分别为93.98%和91.57%、94.47%和89.47%。而1D - CNN模型表现最佳,在鉴别不同感染水平和时间的感染香蕉时准确率分别达到95.18%和97.37%。
这些结果表明利用可见/近红外光谱鉴别感染[具体真菌名称未给出]的香蕉果实是可行的,且分辨率可精确到一天。