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首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >APPLICATION OF STANDARDIZED PRINCIPAL COMPONENT ANALYSIS TO LAND-COVER CHARACTERIZATION USING MULTITEMPORAL AVHRR DATA
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APPLICATION OF STANDARDIZED PRINCIPAL COMPONENT ANALYSIS TO LAND-COVER CHARACTERIZATION USING MULTITEMPORAL AVHRR DATA

机译:基于多时相AVHRR数据的标准化主成分分析在土地覆盖特征中的应用

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摘要

The concept of a vegetation vector has been developed to better visualize and characterize land-cover at regional scales. The vegetation vector is derived from long time-series multitemporal normalized difference vegetation index (NDVI) data sets from the National Oceanic and Atmospheric Administration (NOAA) Advanced Very High Resolution Radiometer (AVHRR) by means of principal component analysis (PCA). The vegetation vector can characterize vegetation cover based upon both the spatial variation of the magnitude of NDVI and the seasonal variation of NDVI. The PCA study showed that the area under analysis must exhibit a variety of dissimilar vegetation communities in terms of density and phenology to successfully derive these two factors. When the PCA was applied to the entire state of Arizona, these two factors were derived as the first two principal components (PCs). However, when the PCA was applied to subset areas extracted from the entire study area by overlaying a vegetation map compiled through bioclimatological and ecological studies, the first two PCs did not always represent these two factors. This indicated that these two factors were not always the major cause of variation in NDVI for some vegetation communities. In this study the vegetation vector was constructed utilizing the first two PCs derived from the entire study area. Analysis of histograms of the direction of the vegetation vector for each community found in the vegetation map could be used to characterize most of the communities in terms of photosynthetic activity and phenology. A profile of the histogram could be interpreted as characteristic of the community. In addition, the range exhibited by the histogram could be used as a measure of the homogeneity/heterogeneity of the community based upon photosynthetic activity and phenology. Graphical projection of the mean vegetation vectors could be used to visualize characteristics and relationships between communities. The position of the plot represents the mean characteristics of the community. The difference in the mean vegetation vector between communities represents the similarity/dissimilarity of the characteristic between communities. These techniques represent a simple means of visualizing many vegetation communities and should facilitate characterizing land cover at global scales. (C) Elsevier Science Inc., 1996. [References: 18]
机译:已经开发出植被矢量的概念,以更好地可视化和表征区域尺度的土地覆盖。植被矢量是通过主成分分析(PCA)从国家海洋与大气管理局(NOAA)先进超高分辨率辐射计(AVHRR)的长时间序列多时间归一化植被指数(NDVI)数据集中得出的。植被矢量可以基于NDVI大小的空间变化和NDVI的季节变化来表征植被覆盖。 PCA研究表明,被分析的区域必须在密度和物候方面表现出各种不同的植被群落,才能成功得出这两个因素。当将PCA应用于亚利桑那州的整个州时,这两个因素被推导为前两个主要成分(PC)。但是,当PCA通过覆盖通过生物气候和生态研究编制的植被图而应用于从整个研究区域提取的子区域时,前两个PC并不总是代表这两个因素。这表明这两个因素并非总是某些植被群落NDVI变化的主要原因。在这项研究中,植被矢量是利用源自整个研究区域的前两个PC来构建的。在植被图中找到的每个群落的植被矢量方向直方图分析可以用来表征大多数群落的光合活动和物候特性。直方图的轮廓可以解释为社区的特征。另外,直方图显示的范围可以用作基于光合作用和物候学的群落同质性/异质性的量度。平均植被矢量的图形投影可用于可视化群落之间的特征和关系。地块的位置代表了社区的平均特征。群落之间平均植被矢量的差异代表了群落之间特征的相似性/不相似性。这些技术代表了可视化许多植被群落的一种简单方法,应该有助于表征全球范围内的土地覆盖。 (C)Elsevier Science Inc.,1996年。[参考:18]

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