College of Geomatics, Xi'an University of Science and Technology, Xi'an 710054, China.
International Research Center of Big Data for Sustainable Development Goals, Beijing 100094, China.
Sensors (Basel). 2023 Nov 11;23(22):9121. doi: 10.3390/s23229121.
The leaf area index (LAI) played a crucial role in ecological, hydrological, and climate models. The normalized difference vegetation index (NDVI) has been a widely used tool for LAI estimation. However, the NDVI quickly saturates in dense vegetation and is susceptible to soil background interference in sparse vegetation. We proposed a multi-angular NDVI (MAVI) to enhance LAI estimation using tower-based multi-angular observations, aiming to minimize the interference of soil background and saturation effects. Our methodology involved collecting continuous tower-based multi-angular reflectance and the LAI over a three-year period in maize cropland. Then we proposed the MAVI based on an analysis of how canopy reflectance varies with solar zenith angle (SZA). Finally, we quantitatively evaluated the MAVI's performance in LAI retrieval by comparing it to eight other vegetation indices (VIs). Statistical tests revealed that the MAVI exhibited an improved curvilinear relationship with the LAI when the NDVI is corrected using multi-angular observations (R = 0.945, RMSE = 0.345, rRMSE = 0.147). Furthermore, the MAVI-based model effectively mitigated soil background effects in sparse vegetation (R = 0.934, RMSE = 0.155, rRMSE = 0.157). Our findings demonstrated the utility of tower-based multi-angular spectral observations in LAI retrieval, having the potential to provide continuous data for validating space-borne LAI products. This research significantly expanded the potential applications of multi-angular observations.
叶面积指数(LAI)在生态、水文和气候模型中起着至关重要的作用。归一化差异植被指数(NDVI)是一种广泛用于 LAI 估算的工具。然而,NDVI 在密集植被中迅速饱和,并且在稀疏植被中容易受到土壤背景的干扰。我们提出了一种多视角 NDVI(MAVI),以利用塔基多视角观测来增强 LAI 估算,旨在最小化土壤背景和饱和效应的干扰。我们的方法涉及在玉米农田中连续三年收集基于塔的多角度反射率和 LAI。然后,我们基于分析冠层反射率如何随太阳天顶角(SZA)变化的方法提出了 MAVI。最后,我们通过将 MAVI 与其他八种植被指数(VIs)进行比较,定量评估了 MAVI 在 LAI 反演中的性能。统计检验表明,当使用多角度观测修正 NDVI 时,MAVI 与 LAI 呈改进的曲线关系(R = 0.945,RMSE = 0.345,rRMSE = 0.147)。此外,基于 MAVI 的模型有效地减轻了稀疏植被中的土壤背景效应(R = 0.934,RMSE = 0.155,rRMSE = 0.157)。我们的研究结果表明,基于塔的多角度光谱观测在 LAI 反演中的实用性,有可能为验证星载 LAI 产品提供连续数据。这项研究极大地扩展了多角度观测的潜在应用。