镜面反射
归一化差异植被指数
遥感
植被(病理学)
环境科学
多光谱图像
地质学
光学
物理
气候变化
医学
海洋学
病理
作者
Siyuan Li,Jiannan Jiao,Jinbo Chen,Chi Wang
出处
期刊:IEEE Transactions on Geoscience and Remote Sensing
[Institute of Electrical and Electronics Engineers]
日期:2022-01-01
卷期号:60: 1-18
被引量:4
标识
DOI:10.1109/tgrs.2022.3211503
摘要
Monitoring chlorophyll content changes in the plant via remote sensing is of great significance for understanding plant growth, monitoring vegetation pests and diseases, which is an important method to study the global climate change.However, the monitored information is often interfered by leaf specular reflection, resulting in reduced accuracy of chlorophyll content inversion.In this article, to eliminate the interference of specular reflection in vegetation remote sensing, a polarized multispectral imaging system (PMSIS) used in the different-lightlevel situation to observe vegetation was developed, and a new specular reflection removal vegetation index (NSRVI) was proposed to better detect the vegetation health condition under specular reflection interference.Based on previous studies, several vegetation indices (Simple ratio index (SR), Normalized difference vegetation index (NDVI); mSR, mNDVI (ref.[41]); pSR, pNDVI (ref.[46]); and NSRVI) were established, and the impact of specular reflection on vegetation health detection was evaluated.Correlation analysis was done on Relative Chlorophyll content (SPAD), SR, NDVI, mSR, mNDVI, pSR, pNDVI and NSRVI to understand their potential ability to eliminate specular interference.The results show that SR and NDVI have the highest sensitivity to specular reflection, and the other three methods can alleviate the adverse effects of specular reflection to varying degrees.It was observed that NSRVI was well correlated with SPAD (coefficient of determination (R 2 ) = 0.899, RMSE=6.16),highlighting the potential of NRSVI in eliminating specular reflection interference and identifying vegetation health condition.In summary, this method can effectively eliminate specular interference and improve the detection accuracy of vegetation health condition.
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