European Journal of Remote Sensing (Dec 2024)

Predictions of Spartina alterniflora leaf functional traits based on hyperspectral data and machine learning models

  • Wei Li,
  • Xueyan Zuo,
  • Zhijun Liu,
  • Leichao Nie,
  • Huazhe Li,
  • Junjie Wang,
  • Zhiguo Dou,
  • Yang Cai,
  • Xiajie Zhai,
  • Lijuan Cui

DOI
https://doi.org/10.1080/22797254.2023.2294951
Journal volume & issue
Vol. 57, no. 1

Abstract

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ABSTRACTInvestigating the functional traits of Spartina alterniflora can provide insights towards understanding its invasion mechanism, and developing a method leaves can improve its management in coastal wetlands. Here, we examined the relationship between 11 leaf functional traits of S. alterniflora and hyperspectral data and investigated the feature bands through importance score analysis. Using original spectral and first-order differential conversion data of feature bands, we established four prediction models: random forest (RF), support vector machine (SVM), eXtreme Gradient Boosting (XGBoost), and back propagation neural network (BPNN). The study results showed that: (1) the SVM model based on Random Forest Importance Score is well-suited for S. alterniflora leaf functional trait inversion; (2) the importance score of leaf functional traits differed, and first-order differential spectral data produced more bands with high scores compared with the original hyperspectral reflectance data; (3) first-order differential data modelling effects were slightly better than those of the original spectral data. However, the first-order differential treatment did not show a significant improvement in the validation accuracy compared with the original data, and the accuracy of some traits decreased. Our study provides a new methodological approach for improving the monitoring and management of S. alterniflora in coastal wetlands.

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