多光谱成像技术在植物学研究中的应用
收稿日期: 2021-01-06
录用日期: 2021-05-07
网络出版日期: 2021-05-07
基金资助
中央高校基本科研业务费专项资金(2021ZY63);国家自然科学基金(31770201)
Multispectral Imaging and Its Applications in Plant Science Research
Received date: 2021-01-06
Accepted date: 2021-05-07
Online published: 2021-05-07
王众司, 贾亚萍, 张瑾, 王若涵 . 多光谱成像技术在植物学研究中的应用[J]. 植物学报, 2021 , 56(4) : 500 -508 . DOI: 10.11983/CBB21002
Multispectral imaging (MSI) is an emerging technology designed for advanced imaging detection, which combines the information of spectroscopy and imaging to conduct qualitative and quantitative analysis of plant phenotypes including structural, physiological and biochemical characteristics. Recently, MSI shows a strong capability to capture detailed spectral information in combination with the applications of mathematical modeling and analysis, and displays a strong potential in the field of plant research. Here we introduce the principle of MSI technology and summarize the main applications of this technology in various aspects of plant research, which includes detection of plant damage and disease, identification of plant metabolites and characterizing plant physiological status. We alse prospect the frontier development of MSI in plant research.
Key words: multispectral imaging; spectroscopy; modeling; accuracy; plant science
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