首页> 外文会议>Asian conference on remote sensing;ACRS >A COMPARISON OF VEGETATION SPECTRAL INDICES DERIVED FROM LANDSAT 8 AND PREVIOUS LANDSAT GENERATIONS
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A COMPARISON OF VEGETATION SPECTRAL INDICES DERIVED FROM LANDSAT 8 AND PREVIOUS LANDSAT GENERATIONS

机译:LANDSAT 8和以前的LANDSAT生成的植被光谱指数的比较

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The Landsat system has contributed significantly to the understanding of the Earth observation for over forty years. Since May 2013, data from Landsat 8 has been available online for download, with substantial differences from its ancestors, having an extended number of spectral bands and narrower bandwidths. This paper aims to examine how well Landsat 8 sensor perform its ancestors' vegetation observations, and more significantly, the differences between those of Landsat 8 and Landsat 5/7, hoping to optimize vegetation index continuity across different Landsat sensors. The paper investigates the quantitative relationship using regression analysis on the scatter plots of three indices derived from these sensors including the Normalized Difference Vegetation Index (NDVI), the Soil Adjusted Vegetation Index (SAVI), and the Urban Index (UI). Three scenes of Landsat 5, 7, and 8 images covering Hai Phong city, Vietnam was used. Comparisons indicate vague differences of vegetation indices derived from the sensors and their strong positive linear relationship, which supports the continuity of Landsat imagery use. Few notices are given as the NDVI and SAVI values in Landsat 8 appear to be higher than those of its ancestors, while the UI has relatively high correlation among the sensors despite in the water area.
机译:四十多年来,Landsat系统为理解地球观测做出了巨大贡献。自2013年5月起,Landsat 8的数据可在线下载,与祖先相比有很大的不同,具有扩展的光谱带数量和较窄的带宽。本文旨在研究Landsat 8传感器在完成其祖先植被观测方面的性能,更重要的是,考察Landsat 8和Landsat 5/7传感器之间的差异,以期优化不同Landsat传感器之间的植被指数连续性。本文使用回归分析方法对由这些传感器得出的三个指标的散点图进行了定量分析,这些指标包括归一化植被指数(NDVI),土壤调整植被指数(SAVI)和城市指数(UI)。使用了覆盖越南海防市的Landsat 5、7和8个图像的三个场景。比较表明,来自传感器的植被指数存在模糊的差异,并且它们之间存在强的正线性关系,这支持了Landsat影像使用的连续性。几乎没有人注意到,因为Landsat 8中的NDVI和SAVI值似乎高于其祖先的值,而UI尽管在水域中也具有相对较高的传感器相关性。

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