首页> 外文会议>IEEE International Geoscience and Remote Sensing Symposium >BRDF EFFECT ON THE ESTIMATION OF CANOPY CHLOROPHYLL CONTENT IN PADDY RICE FROM UAV-BASED HYPERSPECTRAL IMAGERY
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BRDF EFFECT ON THE ESTIMATION OF CANOPY CHLOROPHYLL CONTENT IN PADDY RICE FROM UAV-BASED HYPERSPECTRAL IMAGERY

机译:从基于UAV的高光谱图像探测稻米稻草醋栗含量估计的BRDF效应

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摘要

The bidirectional reflectance distribution function (BRDF) effect due to the surface reflectance anisotropy and variations in the solar and viewing geometry has been studied in the remote sensing community for several decades, and most attention was paid to the satellite sensors with large field of view (FOV), such as MODIS with a 110° FOV. With the development of unmanned aerial vehicle (UAV) technique, the imagery acquired at UAV platform provides important information about crop growth status, which is a promising and efficient approach for precise agriculture. However, few studies explored the BRDF effect in UAV images, especially for the sensors with small FOVs. This study investigated the BRDF effect on the estimation of canopy chlorophyll content (CCC) with the UHD 185 hyperspectral imagery (27° FOV) acquired at a UAV platform. Our results from a rice field-plot experiment demonstrated that the CCC was highly correlated to the red-edge chlorophyll index derived at five different view angles. However, the regression models were significantly different among these view angles. This implied that no single CCC estimation model can be applied to the whole image for CCC mapping. The findings suggest the BRDF effect should be considered for providing reliable and consistent CCC estimation.
机译:在遥感群落中研究了由于表面反射率导致的双向反射分布函数(BRDF)效应已经在遥感群落中进行了几十年,并且大多数关注卫星传感器,具有大视野( FOV),如MODIS,具有110°FOV。随着无人驾驶车辆(UAV)技术的发展,在UAV平台上获得的图像提供了有关作物生长状态的重要信息,这是精确农业的有希望和有效的方法。然而,很少有研究探讨过UAV图像中的BRDF效果,特别是对于小型FOV的传感器。本研究研究了在UAV平台上获取的UHD 185高光谱图像(27°FOV)对冠层叶绿素含量(CCC)估计的BRDF效应。我们来自稻田 - 绘图实验的结果证明CCC与在五种不同视角的红色叶绿素指数高度相关。然而,这些视图角度的回归模型显着不同。这意味着没有单个CCC估计模型可以应用于CCC映射的整个图像。调查结果表明BRDF效应应考虑提供可靠和一致的CCC估计。

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