Applied Sciences (Jun 2022)

Hyperspectral Identification of Ginseng Growth Years and Spectral Importance Analysis Based on Random Forest

  • Limin Zhao,
  • Shumin Liu,
  • Xingfeng Chen,
  • Zengwei Wu,
  • Rui Yang,
  • Tingting Shi,
  • Yunli Zhang,
  • Kaiwen Zhou,
  • Jiaguo Li

DOI
https://doi.org/10.3390/app12125852
Journal volume & issue
Vol. 12, no. 12
p. 5852

Abstract

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The growth year of ginseng is very important as it affects its economic value and even defines if ginseng can be used as medicine or food. In the case of large-scale developments in the ginseng industry, a set of non-destructive, fast, and nonprofessional operations related to the growth year identification method is needed. The characteristics of ginseng reflectance spectral data were analyzed, and the growth year recognition model was constructed by a decision-tree-based random forest machine learning method. After independent verification, the accuracy of distinguishing ginseng food and medicine can reach 92.9%, with 6-year growth as the boundary, and 100%, with 5-year growth as the boundary. The research results show that the spectral change of ginseng is the most obvious in the fifth year, which provides a reference for the key research years based on chemical analyses and other methods. For the application of growth year recognition, the NIR band (1000–2500 nm) had little contribution to the recognition of ginseng growth years, and the band with the largest contribution was 400–650 nm. The recognition model based on machine learning provides a non-destructive, fast, and simple scheme with high accuracy for ginseng year recognition, and the spectral importance analysis conclusion of ginseng growth years provides a design reference for the development of special lightweight spectral equipment for year recognition.

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