中国科学院机构知识库网格
Chinese Academy of Sciences Institutional Repositories Grid
Rapid origin discrimination of Meconopsis integrifolia coupled with machine learning techniques and multi-spectral data fusion strategies

文献类型:期刊论文

作者Sun, Jing; Li, Jiamin; Li, Duo; Gao, Xiuzhen; Li, Hongmei; Song, Xiaoming
刊名INDUSTRIAL CROPS AND PRODUCTS
出版日期2025
卷号229
关键词Origin discrimination Multi-infrared spectral data fusion strategy Meconopsis integrifolia Machine learning techniques
英文摘要To solve the origin traceability conundrum of an important industrial ornamental plants Meconopsis integrifolia and achieve a rapid and accurate origin identification, a discrimination model was devisedby integrating Near Infrared (NIR) and Mid-Infrared (MIR) spectroscopy techniques for both individual spectral analysis and multi-spectral data fusion strategies. In the context of single-spectral modalities, neither the optimized NIR nor MIR model was capable of accurately discriminating the origin. Using Data Fusion (DF) strategies based on the Machine Learning (ML) techniques, our study connected NIR and MIR spectra, and thus constructed Support Vector Machine (SVM) model. The results show that, in low-level fusion (LDF), SVM model manifests a recognition rate of 100.00 %, a prediction rate of 89.00 %, and an overall accuracy of 96.51 %. Medium-level fusion (MDF) scenario further improves the model's prediction rate, and achieves a recognition rate of 99.80 %, a prediction rate of 93.00 %, and an overall accuracy of 97.62 %. In high-level fusion (HDF), the recognition rate peaked at 100.00 %, with the prediction rate of 94.00 %, the overall accuracy 98.10 %, and the external validation set's accuracy rate 84.38 %. The results have distinctively demonstrated that data fusion can enhance model's accuracy, and with the increase of fusion level, the model's discriminative performance can be effectively improved. This study elucidates that the amalgamation of NIR and MIR spectroscopy techniques with DF strategies represents an effective, non-invasive, and practicable approach for the origin identification of M. integrifolia, furnishing invaluable technical support for flower industry and landscape engineering research and applications.
源URL[http://210.75.249.4/handle/363003/62471]  
专题西北高原生物研究所_中国科学院西北高原生物研究所
推荐引用方式
GB/T 7714
Sun, Jing,Li, Jiamin,Li, Duo,et al. Rapid origin discrimination of Meconopsis integrifolia coupled with machine learning techniques and multi-spectral data fusion strategies[J]. INDUSTRIAL CROPS AND PRODUCTS,2025,229.
APA Sun, Jing,Li, Jiamin,Li, Duo,Gao, Xiuzhen,Li, Hongmei,&Song, Xiaoming.(2025).Rapid origin discrimination of Meconopsis integrifolia coupled with machine learning techniques and multi-spectral data fusion strategies.INDUSTRIAL CROPS AND PRODUCTS,229.
MLA Sun, Jing,et al."Rapid origin discrimination of Meconopsis integrifolia coupled with machine learning techniques and multi-spectral data fusion strategies".INDUSTRIAL CROPS AND PRODUCTS 229(2025).

入库方式: OAI收割

来源:西北高原生物研究所

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