State Key Laboratory of Remote Sensing Science, Institute of Remote Sensing and Digital Earth, Chinese Academy of Sciences, Beijing 100101, China.
University of Chinese Academy of Sciences, Beijing 100049, China.
Sensors (Basel). 2017 Aug 30;17(9):1982. doi: 10.3390/s17091982.
Remote-sensing phenology detection can compensate for deficiencies in field observations and has the advantage of capturing the continuous expression of phenology on a large scale. However, there is some variability in the results of remote-sensing phenology detection derived from different vegetation parameters in satellite time-series data. Since the enhanced vegetation index (EVI) and the leaf area index (LAI) are the most widely used vegetation parameters for remote-sensing phenology extraction, this paper aims to assess the differences in phenological information extracted from EVI and LAI time series and to explore whether either index performs well for all vegetation types on a large scale. To this end, a GLASS (Global Land Surface Satellite Product)-LAI-based phenology product (GLP) was generated using the same algorithm as the MODIS (Moderate Resolution Imaging Spectroradiometer)-EVI phenology product (MLCD) over China from 2001 to 2012. The two phenology products were compared in China for different vegetation types and evaluated using ground observations. The results show that the ratio of missing data is 8.3% for the GLP, which is less than the 22.8% for the MLCD. The differences between the GLP and the MLCD become stronger as the latitude decreases, which also vary among different vegetation types. The start of the growing season (SOS) of the GLP is earlier than that of the MLCD in most vegetation types, and the end of the growing season (EOS) of the GLP is generally later than that of the MLCD. Based on ground observations, it can be suggested that the GLP performs better than the MLCD in evergreen needleleaved forests and croplands, while the MLCD performs better than the GLP in shrublands and grasslands.
遥感物候学检测可以弥补实地观测的不足,具有在大尺度上捕捉物候连续表达的优势。然而,卫星时间序列数据中的不同植被参数得到的遥感物候检测结果存在一定的可变性。由于增强植被指数(EVI)和叶面积指数(LAI)是最广泛用于遥感物候提取的植被参数,因此本文旨在评估从 EVI 和 LAI 时间序列提取的物候信息的差异,并探讨这两个指数是否在大尺度上对所有植被类型都表现良好。为此,使用与 MODIS(中分辨率成像光谱仪)-EVI 物候产品(MLCD)相同的算法,基于 GLASS(全球陆面卫星产品)-LAI 的物候产品(GLP)从 2001 年到 2012 年在中国生成。在中国对不同植被类型的两种物候产品进行了比较,并利用地面观测进行了评估。结果表明,GLP 的缺失数据率为 8.3%,低于 MLCD 的 22.8%。GLP 与 MLCD 之间的差异随着纬度的降低而增大,并且在不同的植被类型之间也有所不同。在大多数植被类型中,GLP 的生长季节开始期(SOS)早于 MLCD,而 GLP 的生长季节结束期(EOS)一般晚于 MLCD。基于地面观测,可以认为 GLP 在常绿针叶林和耕地中的表现优于 MLCD,而 MLCD 在灌丛和草地中的表现优于 GLP。