Wu Zhouyou, Xue Qilong, Miao Peiqi, Li Chenfei, Liu Xinlong, Cheng Yukang, Miao Kunhong, Yu Yang, Li Zheng
Xin-Huangpu Joint Innovation Institute of Chinese Medicine, Guangzhou 510715, China.
State Key Laboratory of Component Traditional Chinese Medicine, Tianjin 301617, China.
Foods. 2023 Apr 25;12(9):1775. doi: 10.3390/foods12091775.
A machine vision system based on a convolutional neural network (CNN) was proposed to sort using X-ray non-destructive testing technology in this study. The fruit network (AFNet) algorithm was developed to identify the internal structure for quality classification and origin identification in this manuscript. This network model is composed of experimental features of . In this study, we adopted a binary classification method twice consecutive to identify the origin and quality of . The results show that the accuracy, precision, and specificity of the AFNet for quality classification were 96.33%, 96.27%, and 100.0%, respectively, achieving higher accuracy than traditional CNN under the condition of faster operation speed. In addition, the model can also achieve an accuracy of 90.60% for the identification of places of origin. The accuracy of multi-category classification performed later with the consistent network structure is lower than that of the cascaded CNNs solution. With this intelligent feature recognition model, the internal structure information of can be determined based on X-ray technology. Its application will play a positive role to improve industrial production efficiency.
本研究提出了一种基于卷积神经网络(CNN)的机器视觉系统,用于利用X射线无损检测技术进行分拣。本文开发了水果网络(AFNet)算法,用于识别内部结构以进行质量分类和产地识别。该网络模型由……的实验特征组成。在本研究中,我们连续两次采用二元分类方法来识别……的产地和质量。结果表明,AFNet进行质量分类的准确率、精确率和特异性分别为96.33%、96.27%和100.0%,在运行速度更快的情况下,比传统CNN具有更高的准确率。此外,该模型对产地识别的准确率也能达到90.60%。采用一致网络结构进行的后续多类别分类准确率低于级联CNN解决方案。通过这种智能特征识别模型,可以基于X射线技术确定……的内部结构信息。其应用将对提高工业生产效率起到积极作用。