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首页> 外文期刊>Canadian Journal of Remote Sensing >Discrimination of Senescent Vegetation Cover from Landsat-8 OLI Imagery by Spectr al Unmixing in the Northern Mixed Grasslands
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Discrimination of Senescent Vegetation Cover from Landsat-8 OLI Imagery by Spectr al Unmixing in the Northern Mixed Grasslands

机译:在北方混合草地上的Spectsat-8 Oli Imager辨别衰老植被覆盖

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摘要

The mixed grasslands of North America are ecosystems with a high volume of dead biomass. This characteristic underlies key ecosystem features such as the rate of carbon and nutrient uptake, heat flux exchange between the surface and the atmosphere, and wildlife habitat. Senescent vegetation is an important forage resource for grazing animals and is related to natural fire frequency and intensity. Therefore, quantitative estimation of photosynthetic vegetation (PV), senescent vegetation (NPV), and bare soil (BS) fraction is important for natural resource management. The authors propose an approach for extracting PV, NPV, and BS endmembers from the normalized difference vegetation index-dead fuel index (NDVI-DFI) plane by using the Landsat-8 imagery. The constrained linear spectral unmixing model was applied to discriminate NPV, PV, and BS using original spectral bands, NDVI-DFI indices, and original spectral plus NDVI and DFI indices. As a comparison, the traditional NDVI-SWIR32 was also investigated. Results showed that the DFI performed better than the SWIR32 to predict NPV from spectral unmixing. Index selection has a significant effect on NPV and BS cover fraction estimation. Choice of equation setup has a significant effect on the PV estimation. The methods proposed here can be applied to grassland ecosystems across the northern mixed grasslands region.
机译:北美的混合草原是具有大量死亡生物量的生态系统。这种特性下降了关键的生态系统特征,如碳和养分吸收率,表面和大气之间的热量交换,以及野生动物栖息地。衰老植被是放牧动物的重要饲料资源,与天然火灾频率和强度有关。因此,光合植被(PV),衰老植被(NPV)和裸土(BS)分数的定量估计对于自然资源管理是重要的。作者提出了一种通过使用Landsat-8图像从归一化差异植被指数 - 死燃料指数(NDVI-DFI)平面中提取PV,NPV和BS终端的方法。应用受约束的线性谱解密模型使用原始光谱频带,NDVI-DFI指数和原始光谱加NDVI和DFI指数来鉴定NPV,PV和BS。作为比较,还研究了传统的NDVI-SWIR32。结果表明,DFI比SWIR32更好地从SPRIF32预测来自光谱解密的NPV。索引选择对NPV和BS覆盖分数估计具有显着影响。等式设置的选择对PV估计有显着影响。这里提出的方法可以应用于北部混合草原地区的草原生态系统。

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  • 来源
    《Canadian Journal of Remote Sensing》 |2019年第2期|192-208|共17页
  • 作者单位

    Univ Saskatchewan Dept Geog & Planning Kirk Hall 117 Sci Pl Saskatoon SK S7N 5C8 Canada;

    Shanxi Agr Univ Coll Resources & Environm 1 Mingxian South Rd Taigu 030801 Shanxi Peoples R China;

    Xian Univ Sci & Technol Coll Geomat 58 Yanta Rd Xian 710054 Shaanxi Peoples R China;

    Univ Saskatchewan Dept Geog & Planning Kirk Hall 117 Sci Pl Saskatoon SK S7N 5C8 Canada;

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