基于HJ-1A/B时间序列影像物候的城市植被分类

Feng Li, Liujun Zhu, Liu Han, Huang Yinyou, Peijun Du, Ebenezer Adaku
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引用次数: 3

摘要

城市植被分类需要植被指数特别是植被的时间信息,因此需要高的时空NDVI产品。HJ 1A/B时间序列影像(HJ NDVI)得到的NDVI时间序列数据具有较高的时空分辨率。本研究建立了南京市典型植被类型的HJ NDVI时间序列,选择S-G滤波器进行滤波。将过滤后的HJ NDVI时间序列数据作为“模拟高光谱数据”,采用线性光谱混合解混算法进行植被制图。结果表明,线性光谱混合模型解混算法可获得研究区内灌木、草地、常绿针叶林、阔叶落叶林、常绿落叶阔叶混交林5种植被亚类的分布信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Urban vegetation classification based on phenology using HJ-1A/B time series imagery
Urban vegetation classification need vegetation index especially temporal information of vegetation, thus high spatio-temporal NDVI product is necessary. NDVI time-series data derived from HJ 1A/B time series imagery (HJ NDVI) have relatively high spatio-temporal resolution. In this research, HJ NDVI time series of typical vegetation types in the city of Nanjing are established, the S-G filter is chosen to filtering. Taking filtered HJ NDVI time-series data as “simulated Hyperspectral data”, the linear spectral mixture unmixing algorithm is used to carry out vegetation mapping. The results indicate that unmixing algorithm of linear spectral mixture model can obtain the distribution information of the five kinds of vegetation sub-classes including shrub, grassland, evergreen needle forest, broad-leaved deciduous forest, evergreen and deciduous broad-leaved mixed forest in the research area.
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