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A Merging Algorithm for Regional Snow Mapping over Eastern Canada from AVHRR and SSM/I Data

机译:基于AVHRR和SSM / I数据的加拿大东部区域积雪制图融合算法

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We present an algorithm for regional snow mapping that combines snow maps derived from Advanced Very High Resolution Radiometer (AVHRR) and Special Sensor Microwave/Imager (SSM/I) data. This merging algorithm combines AVHRR’s moderate spatial resolution with SSM/I’s ability to penetrate clouds and, thus, benefits from the advantages of the two sensors while minimizing their limitations. First, each of the two detection algorithms were upgraded before developing the methodology to merge the snow mapping results obtained using both algorithms. The merging methodology is based on a membership function calculated over a temporal running window of ±4 days from the actual date. The studied algorithms were developed and tested over Eastern Canada for the period from 1988 to 1999. The snow mapping algorithm focused on the spring melt season (1 April to 31 May). The snow maps were validated using snow depth observations from meteorological stations. The overall accuracy of the merging algorithm is about 86%, which is between that of the new versions of the two individual algorithms: AVHRR (90%) and SSM/I (83%). Furthermore, the algorithm was able to locate the end date of the snowmelt season with reasonable accuracy (bias = 0 days; SD = 11 days). Comparison of mapping results with high spatial resolution snow cover from Landsat imagery demonstrates the feasibility of clear-sky snow mapping with relatively good accuracy despite some underestimation of snow extent inherited from the AVHRR algorithm. It was found that the detection limit of the algorithm is 80% snow cover within a 1 × 1 km pixel.
机译:我们提出了一种区域降雪图算法,该算法结合了从超高分辨率高分辨率辐射计(AVHRR)和特殊传感器微波/成像仪(SSM / I)数据得出的降雪图。这种合并算法将AVHRR的适度空间分辨率与SSM / I的穿透云能力结合在一起,因此,可以从两个传感器的优势中受益,同时将其局限性降至最低。首先,对两种检测算法中的每一种进行了升级,然后再开发方法以合并使用两种算法获得的雪图结果。合并方法基于隶属度函数,该隶属度函数是在距实际日期±4天的时间运行窗口内计算的。研究的算法是在1988年至1999年期间在加拿大东部进行开发和测试的。雪图算法的重点是春季融化季节(4月1日至5月31日)。使用气象站的积雪深度观测结果验证了积雪图。合并算法的整体准确性约为86%,介于两个单独算法的新版本的准确性之间:AVHRR(90%)和SSM / I(83%)。此外,该算法能够以合理的准确度(偏差= 0天;标准差= 11天)定位融雪季节的结束日期。来自Landsat影像的高分辨率空间覆盖图与制图结果的比较表明,尽管低估了从AVHRR算法继承的降雪程度,但晴空制图具有较高精度的可行性。发现该算法的检测极限是在1×1 km像素内80%的积雪。

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