Multispectral detection of dietary fiber content in Chinese cabbage leaves across different growth periods

Food Chem. 2024 Jul 30:447:138895. doi: 10.1016/j.foodchem.2024.138895. Epub 2024 Feb 28.

Abstract

Multispectral imaging, combined with stoichiometric values, was used to construct a prediction model to measure changes in dietary fiber (DF) content in Chinese cabbage leaves across different growth periods. Based on all the spectral bands (365-970 nm) and characteristic spectral bands (430, 880, 590, 490, 690 nm), eight quantitative prediction models were established using four machine learning algorithms, namely random forest (RF), backpropagation neural network, radial basis function, and multiple linear regression. Finally, a quantitative prediction model of RF learning algorithm is constructed based on all spectral bands, which has good prediction accuracy and model robustness, prediction performance with R2 of 0.9023, root mean square error (RMSE) of 2.7182 g/100 g, residual predictive deviation (RPD) of 3.1220 > 3.0. In summary, this model efficiently detects changes in DF content across different growth periods of Chinese cabbage, which offers technical support for vegetable sorting and grading in the field.

Keywords: Chinese cabbage; Dietary fiber; Multispectral imaging; Predictive model; Random forest.

MeSH terms

  • Algorithms*
  • Brassica*
  • Machine Learning
  • Neural Networks, Computer
  • Vegetables