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The Stepwise Discriminant Algorithm for Snow Cover Mapping based on FY-3/MERSI Data

机译:基于FY-3 / MERSI数据的雪覆盖图逐步判别算法

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Medium Resolution Spectral Imager (MERSI) on board China's new generation polar orbit meteorological satellite FY-3A provides a new data source for snow monitoring in large area. As a case study, the typical snow cover of Qilian Mountains in northwest China was selected in this paper to develop the algorithm to map snow cover using FY-3A/MERSI. By analyzing the spectral response characteristics of snow and other surface elements, as well as each channel image quality on FY-3A/MERSI, the widely used Normalized Difference Snow Index (NDSI) was defined to be computed from channel 2 and channel 7 for this satellite data. Basing on NDSI, a tree-structure prototype version of snow identification model was proposed, including five newly-built multi-spectral indexes to remove those pixels such as forest, cloud shadow, water, lake ice, sand (salty land), or cloud that are usually confused with snow step by step, especially, a snow/cloud discrimination index was proposed to eliminate cloud, apart from use of cloud mask product in advance. Furthermore, land cover land use (LULC) image has been adopted as auxiliary dataset to adjust the corresponding LULC NDSI threshold constraints for snow final determination and optimization. This model is composed as the core of FY-3A/MERSI snow cover mapping flowchart, to produce daily snow map at 250m spatial resolution, and statistics can be generated on the extent and persistence of snow cover in each pixel for time series maps. Preliminary validation activities of our snow identification model have been undertaken. Comparisons of the 104 FY-3A/MERSI snow cover maps in 2010-2011 snow season with snow depth records from 16 meteorological stations in Qilian Mountains region, the sunny snow cover had an absolute accuracy of 92.8%. Results of the comparison with the snow cover identified from 6 Terra/MODIS scenes showed that they had consistent pixels about 85%. When the two satellite resultant snow cover maps compared with the 6 supervise-classified and expert-verified snow cover maps derived from integrated MERSI and MODIS images, we found FY-3A/MERSI has higher accuracy and stability not only for nearly cloud-free scenes but also the cloud scenes, namely, FY-3A/MERSI data can objectively reflect finer spatial distribution of snow and its dynamic development process, and the snow identification model perform better in snow/cloud discrimination. However, the ability of the FY-3A/MERSI model to discriminate thin snow and thin cloud need to be refined. And the limitation, error sources of FY-3A/MERSI snow products would be assessed based on the accumulation of large amounts of data in the future.
机译:中国新一代极地轨道气象卫星FY-3A上的中分辨率光谱成像仪(MERSI)为大范围的积雪监测提供了新的数据源。以中国西北祁连山典型积雪为例,开发了利用FY-3A / MERSI绘制积雪图的算法。通过分析雪和其他表面元素的光谱响应特性以及FY-3A / MERSI上的每个通道图像质量,为此定义了从通道2和通道7计算出广泛使用的归一化差异雪指数(NDSI)。卫星数据。基于NDSI,提出了一种树结构原型雪识别模型,其中包括五个新建的多光谱指标,以去除森林,云影,水,湖冰,沙(盐渍地)或云等像素。通常,这些步骤通常会逐步与降雪混淆,尤其是,除了事先使用防云罩产品外,还提出了雪/云鉴别指数来消除云。此外,土地覆盖土地利用(LULC)图像已被用作辅助数据集,以调整相应的LULC NDSI阈值约束,以进行降雪最终确定和优化。该模型以FY-3A / MERSI积雪制图流程图的核心为基础,以250m空间分辨率生成每日积雪图,并且可以针对时间序列图生成有关每个像素中积雪的范围和持久性的统计信息。我们的积雪识别模型已经进行了初步的验证活动。通过比较祁连山地区16个气象站2010年至2011年雪季的104幅FY-3A / MERSI积雪地图和积雪深度记录,晴天积雪的绝对准确度为92.8%。与从6个Terra / MODIS场景中识别出的积雪进行比较的结果表明,它们具有约85%的一致像素。当将两个卫星合成的积雪图与从集成的MERSI和MODIS图像得出的6个经过监督分类和专家验证的积雪图进行比较时,我们发现FY-3A / MERSI不仅在几乎无云的场景中具有更高的准确性和稳定性。而且云景,即FY-3A / MERSI数据可以客观地反映雪的精细空间分布及其动态发展过程,并且雪识别模型在雪/云识别中表现更好。但是,FY-3A / MERSI模型区分薄雪和薄云的能力需要改进。而且,未来将根据大量数据的积累来评估FY-3A / MERSI雪产品的局限性,误差源。

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