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Snow cover detection algorithm using dynamic time warping method and reflectances of MODIS solar spectrum channels

机译:雪覆盖检测算法使用动态时间翘曲方法和MODIS太阳能光谱通道的反射

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Snow cover is biggest single component of cryosphere. The Snow is covering the ground in the Northern Hemisphere approximately 50% in winter season and is one of climate factors that affects Earth's energy budget because it has higher reflectance thanother land types. Also, snow cover has an important role about hydrological modeling and water resource management. For this reason, accurate detection of snow cover acts as an essential element for regional water resource management. Snow cover detection using satellite-based data have some advantages such as obtaining wide spatial range data and time-series observations periodically. In the case of snow cover detection using satellite data, the discrimination of snow and cloud is very important. Typically, Misclassified cloud and snow pixel can lead directly to error factor for retrieval of satellite-based surface products. However, classification of snow and cloud is difficult because cloud and snow have similar optical characteristics and are composed of water or ice. But cloud and snow has different reflectance in 1.5 ~ 1.7 um wavelength because cloud has lower grain size and moisture content than snow. So, cloud and snow shows difference reflectance patterns change according to wavelength. Therefore, in this study, we perform algorithm for classifying snow cover and cloud with satellite-based data using Dynamic Time Warping (DTW) method which is one of commonly used pattern analysis such as speech and fingerprint recognitions and reflectance spectral library of snow and cloud. Reflectance spectral library is constructed in advance using MOD21km (MODIS Levell swath 1km) data that their reflectance is six channels including 3 (0.466pm), 4 (0.554um), 1 (0.647um), 2 (0.857pm), 26 (1.382pm) and 6(1.629pm). We validate our result using MODIS RGB image and MOD10 L2 swath (MODIS swath snow cover product). And we use PA (Producer's Accuracy), UA (User's Accuracy) and CI (Comparison Index) as validation criteria. The result of our study detect as snow cover in the several regions which are did not detected as snow in MOD 10 L2 and detected as snow cover in MODIS RGB image. The result of our study can improve accuracy of other surface product such as land surface reflectance and land surface emissivity. Also it can use input data of hydrological modeling.
机译:雪盖是冰冻圈最大的单一组成部分。雪正在覆盖冬季大约50%的北半球的地面,是影响地球能源预算的气候因素之一,因为它具有更高的反射率陆类类型。此外,雪覆盖对水文建模和水资源管理具有重要作用。因此,准确地检测雪盖作为区域水资源管理的基本要素。使用基于卫星数据的雪盖检测具有一些优点,例如定期获得宽空间范围数据和时间序列观测。在使用卫星数据的雪覆盖检测的情况下,雪和云的歧视非常重要。通常,错误分类的云和雪像素可以直接导致检索卫星表面产品的错误因素。然而,雪和云的分类很困难,因为云和雪具有类似的光学特性,并且由水或冰组成。但云和雪在1.5〜1.7 um波长中具有不同的反射率,因为云具有比雪更低的粒度和水分含量。因此,云和雪显示差异反射率模式根据波长而变化。因此,在本研究中,我们使用基于卫星的数据进行分类和云的算法,使用动态时间翘曲(DTW)方法是常用的模式分析之一,例如雪和云的反射光谱库之一。使用Mod21km(Modis Levell Swath 1km)数据预先构建反射光谱库,其反射率为6个通道,包括3(0.466pm),4(0.554um),1(0.64um),2(0.857M),26(1.382) PM)和6(1.629PM)。我们使用Modis RGB Image和Mod10 L2 Swath(Modis Swath Snow Product)验证我们的结果。我们使用PA(制作人的准确性),UA(用户的准确性)和CI(比较指数)作为验证标准。我们的研究结果检测到几个地区的雪覆盖,这些地区未被检测为Mod 10 L2中的雪,并且在Modis RGB图像中被检测为雪盖。我们研究的结果可以提高其他表面产品的准确性,如陆地表面反射率和陆地表面发射率。它也可以使用水文模拟的输入数据。

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