Image recognition of traditional Chinese medicine based on deep learning.

Junfeng Miao, Yanan Huang, Zhaoshun Wang, Zeqing Wu, Jianhui Lv
Author Information
  1. Junfeng Miao: School of Computer and Communication Engineering, University of Science and Technology Beijing, Beijing, China.
  2. Yanan Huang: Business School, Ezhou Vocational University, Ezhou, Hubei, China.
  3. Zhaoshun Wang: School of Computer and Communication Engineering, University of Science and Technology Beijing, Beijing, China.
  4. Zeqing Wu: School of Pharmacy, Xinxiang Medical University, Xinxiang, China.
  5. Jianhui Lv: Pengcheng Laboratory, Shenzhen, China.

Abstract

Chinese herbal medicine is an essential part of traditional Chinese medicine and herbalism, and has important significance in the treatment combined with modern medicine. The correct use of Chinese herbal medicine, including identification and classification, is crucial to the life safety of patients. Recently, deep learning has achieved advanced performance in image classification, and researchers have applied this technology to carry out classification work on traditional Chinese medicine and its products. Therefore, this paper uses the improved ConvNeXt network to extract features and classify traditional Chinese medicine. Its structure is to fuse ConvNeXt with ACMix network to improve the performance of ConvNeXt feature extraction. Through using data processing and data augmentation techniques, the sample size is indirectly expanded, the generalization ability is enhanced, and the feature extraction ability is improved. A traditional Chinese medicine classification model is established, and the good recognition results are achieved. Finally, the effectiveness of traditional Chinese medicine identification is verified through the established classification model, and different depth of network models are compared to improve the efficiency and accuracy of the model.

Keywords

References

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