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Comparison Between Fractional Vegetation Cover Retrievals from Vegetation Indices and Spectral Mixture Analysis: Case Study of PROBA/CHRIS Data Over an Agricultural Area

机译:植被指数和光谱混合分析的植被覆盖率反演之间的比较:以农业地区PROBA / CHRIS数据为例

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摘要

In this paper we compare two different methodologies for Fractional Vegetation Cover (FVC) retrieval from Compact High Resolution Imaging Spectrometer (CHRIS) data onboard the European Space Agency (ESA) Project for On-Board Autonomy (PROBA) platform. The first methodology is based on empirical approaches using Vegetation Indices (VIs), in particular the Normalized Difference Vegetation Index (NDVI) and the Variable Atmospherically Resistant Index (VARI). The second methodology is based on the Spectral Mixture Analysis (SMA) technique, in which a Linear Spectral Unmixing model has been considered in order to retrieve the abundance of the different constituent materials within pixel elements, called Endmembers (EMs). These EMs were extracted from the image using three different methods: i) manual extraction using a land cover map, ii) Pixel Purity Index (PPI) and iii) Automated Morphological Endmember Extraction (AMEE). The different methodologies for FVC retrieval were applied to one PROBA/CHRIS image acquired over an agricultural area in Spain, and they were calibrated and tested against in situ measurements of FVC estimated with hemispherical photographs. The results obtained from VIs show that VARI correlates better with FVC than NDVI does, with standard errors of estimation of less than 8% in the case of VARI and less than 13% in the case of NDVI when calibrated using the in situ measurements. The results obtained from the SMA-LSU technique show Root Mean Square Errors (RMSE) below 12% when EMs are extracted from the AMEE method and around 9% when extracted from the PPI method. A RMSE value below 9% was obtained for manual extraction of EMs using a land cover use map.
机译:在本文中,我们比较了欧洲航天局(ESA)机载自主项目(PROBA)平台上从紧凑型高分辨率成像光谱仪(CHRIS)数据中提取植被分数(FVC)的两种不同方法。第一种方法基于使用植被指数(VIs)的经验方法,特别是归一化植被指数(NDVI)和可变大气耐受指数(VARI)。第二种方法基于光谱混合分析(SMA)技术,其中考虑了线性光谱解混模型,以便检索像素元素(称为端构件(EM))中不同组成材料的丰度。这些EM使用三种不同的方法从图像中提取:i)使用土地覆盖图进行手动提取,ii)像素纯度指数(PPI)和iii)形态端头自动提取(AMEE)。将FVC检索的不同方法应用于在西班牙农业地区采集的一张PROBA / CHRIS图像,并针对半球照片估计的FVC的现场测量值进行了校准和测试。从VI获得的结果表明,使用现场测量进行校准时,VARI与FVC的关联性比NDVI更好,对于VARI,估计的标准误小于8%,对于NDVI的估计误小于13%。从SMA-LSU技术获得的结果表明,从AMEE方法中提取EM时,均方根误差(RMSE)低于12%,而从PPI方法中提取时,均方根误差(RMSE)约为9%。使用土地覆盖物使用图手动提取EMs,获得的RMSE值低于9%。

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