4.6 Article

Research on Classification Model of Panax notoginseng Taproots Based on Machine Vision Feature Fusion

期刊

SENSORS
卷 21, 期 23, 页码 -

出版社

MDPI
DOI: 10.3390/s21237945

关键词

machine vision; machine learning; Panax notoginseng taproot; feature fusion; image processing; hierarchical model

资金

  1. National Key Research and Development Program [2017YFC1702503]
  2. Yunnan Science and Technology Talents and Platform Program [2019IC001]
  3. Yunnan Major Science and Technology Special Program [202102AA310048]
  4. Yunyao Township Project [202102AA310045]

向作者/读者索取更多资源

This study establishes a classification model for Panax notoginseng taproots based on image feature fusion, validating the importance of color, texture, and fusion features for classification through various models. Multiple dimensionality reduction methods are used to establish the main root classification model, providing a basis for developing online classification methods for different grades of Panax notoginseng in actual production.
The existing classification methods for Panax notoginseng taproots suffer from low accuracy, low efficiency, and poor stability. In this study, a classification model based on image feature fusion is established for Panax notoginseng taproots. The images of Panax notoginseng taproots collected in the experiment are preprocessed by Gaussian filtering, binarization, and morphological methods. Then, a total of 40 features are extracted, including size and shape features, HSV and RGB color features, and texture features. Through BP neural network, extreme learning machine (ELM), and support vector machine (SVM) models, the importance of color, texture, and fusion features for the classification of the main roots of Panax notoginseng is verified. Among the three models, the SVM model performs the best, achieving an accuracy of 92.037% on the prediction set. Next, iterative retaining information variables (IRIVs), variable iterative space shrinkage approach (VISSA), and stepwise regression analysis (SRA) are used to reduce the dimension of all the features. Finally, a traditional machine learning SVM model based on feature selection and a deep learning model based on semantic segmentation are established. With the model size of only 125 kb and the training time of 3.4 s, the IRIV-SVM model achieves an accuracy of 95.370% on the test set, so IRIV-SVM is selected as the main root classification model for Panax notoginseng. After being optimized by the gray wolf optimizer, the IRIV-GWO-SVM model achieves the highest classification accuracy of 98.704% on the test set. The study results of this paper provide a basis for developing online classification methods of Panax notoginseng with different grades in actual production.

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