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首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Snow-cover mapping in forests by constrained linear spectral unmixing of MODIS data
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Snow-cover mapping in forests by constrained linear spectral unmixing of MODIS data

机译:通过约束MODIS数据的线性光谱分解来在森林中进行积雪制图

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A snow-cover mapping method accounting for forests (SnowFrac) is presented. SnowFrac uses spectral unmixing and endmember constraints to estimate the snow-cover fraction of a pixel. The unmixing is based on a linear spectral mixture model, which includes endmembers for snow, conifer, branches of leafless deciduous trees and snow-free ground. Model input consists of a land-cover fraction map and endmember spectra. The land-cover fraction map is applied in the unmixing procedure to identify the number and types of endmembers for every pixel, but also to set constraints on the area fractions of the forest endmembers. SnowFrac was applied on two Terra Moderate Resolution Imaging Spectroradiometer (MODIS) images with different snow conditions covering a forested area in southern Norway. Six experiments were carried out, each with different endmember constraints. Estimated snow-cover fractions were compared with snow-cover fraction reference maps derived from two Landsat Enhanced Thematic Mapper Plus (ETM+) images acquired the same days as the MODIS images. Results are presented for non-forested areas, deciduous forests, coniferous forests and mixed deciduous/coniferous forests. The snow-cover fraction estimates are enhanced by increasing constraints introduced to the unmixing procedure. The classification accuracy shows that 96% of the pixels are classified with less than 20% error (absolute units) on 7 May 2001 when all forested and non-forested areas are included. The corresponding figure for 4 May 2000 is 88%.
机译:提出了一种考虑森林的积雪制图方法(SnowFrac)。 SnowFrac使用频谱分解和端成员约束来估计像素的积雪部分。取消混合基于线性光谱混合模型,其中包括雪,针叶树,无叶落叶乔木和无雪地面的末端成员。模型输入包括一个土地覆盖率图谱和端成员谱。土地覆被分数图应用于分解过程,以识别每个像素的末端成员的数量和类型,还可以设置对森林末端成员的面积分数的约束。将SnowFrac应用于两幅Terra中分辨率成像光谱仪(MODIS)图像,这些图像具有不同的雪况,覆盖了挪威南部的一片森林地区。进行了六个实验,每个实验都有不同的末端成员约束。将估计的积雪分数与从两张Landsat增强型主题地图绘制器(ETM +)图像(与MODIS图像在同一天获得)得出的积雪分数参考图进行比较。给出了非林区,落叶林,针叶林和落叶/针叶林混合的结果。积雪覆盖率估算值通过增加取消混合过程的约束来增强。分类准确度表明,到2001年5月7日,包括所有林区和非林区时,对96%的像素进行了分类,误差小于20%(绝对单位)。 2000年5月4日的相应数字是88%。

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