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Estimating fractional snow cover from MODIS using the normalized difference snow index

机译:使用归一化差异降雪指数从MODIS估算分数积雪

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Snow-cover information is important for a wide variety of scientific studies, water supply and management applications. The NASA Earth Observing System (EOS) Moderate Resolution Imaging Spectroradiometer (MODIS) provides improved capabilities to observe snow cover from space and has been successfully using a normalized difference snow index (NDSI), along with threshold tests, to provide global, automated binary maps of snow cover. The NDSI is a spectral band ratio that takes advantage of the spectral differences of snow in short-wave infrared and visible MODIS spectral bands to identify snow versus other features in a scene. This study has evaluated whether there is a "signal" in the NDSI that could be used to estimate the fraction of snow within a 500 m MODIS pixel and thereby enhance the use of the NDSI approach in monitoring snow cover. Using Landsat 30-m observations as "ground truth," the percentage of snow cover was calculated for 500-m cells. Then a regression relationship between 500-m NDSI observations and fractional snow cover was developed over three different snow-covered regions and tested over other areas. The overall results indicate that the relationship between fractional snow cover and NDSI is reasonably robust when applied locally and over large areas like North America. The relationship offers advantages relative to other published fractional snow cover algorithms developed for global-scale use with MODIS. This study indicates that the fraction of snow cover within a MODIS pixel using this approach can be provided with a mean absolute error less than 0.1 over the range from 0.0 to 1.0 in fractional snow cover.
机译:积雪信息对于各种科学研究,供水和管理应用都很重要。 NASA地球观测系统(EOS)中分辨率成像光谱仪(MODIS)提供了改进的从太空观测积雪的功能,并且已成功地使用归一化差雪指数(NDSI)和阈值测试来提供全局自动二元地图的积雪。 NDSI是一种光谱带比率,它利用短波红外和可见MODIS光谱带中雪的光谱差异来识别雪与场景中的其他特征。这项研究评估了NDSI中是否存在“信号”,可以用来估计500 m MODIS像素内的降雪比例,从而增强NDSI方法在监测积雪中的使用。使用Landsat 30-m观测作为“地面真相”,计算了500-m小区的积雪百分比。然后,在三个不同的积雪地区建立了500米NDSI观测值与部分积雪之间的回归关系,并在其他地区进行了测试。总体结果表明,局部应用和在北美等大面积地区应用时,积雪覆盖率与NDSI之间的关系相当稳健。该关系相对于为MODIS在全球范围内使用而开发的其他已发布的分数积雪算法具有优势。这项研究表明,使用这种方法,在MODIS像素内的积雪分数可以在分数积雪的0.0到1.0范围内提供小于0.1的平均绝对误差。

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