首页> 外文会议>Geoscience and Remote Sensing Symposium Proceedings, 1998. IGARSS '98. 1998 IEEE International >Application of the Getis statistic to hemispheric and regional scale passive microwave derived snow water equivalent imagery
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Application of the Getis statistic to hemispheric and regional scale passive microwave derived snow water equivalent imagery

机译:Getis统计量在半球和区域尺度无源微波衍生的雪水当量图像中的应用

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Satellite passive microwave data have been utilized to map snow cover because of all-weather imaging capabilities, wide swath width, and rapid scene revisit time. To exploit this growing time series of data, innovative processing techniques are needed to identify the evolution of spatial patterns in passive microwave derived snow water equivalent (SWE) imagery, and to improve understanding of passive microwave response to snow covered surfaces during the winter season. In this study, five day averaged Special Sensor Microwave/Imager (SSM/I) derived SWE imagery are analyzed with the Getis statistic (G/sub i//sup */), a local indicator of spatial autocorrelation. Northern Hemisphere and North American Prairie imagery were investigated in order to evaluate Getis statistic performance, and to identify SWE clustering patterns at different spatial scales. Hemispheric scale Getis statistic analysis produces results which allow identification of maximum seasonal snow cover extent, and the degree of seasonal snow cover variability. The dependence of SWE algorithm performance on surface cover was also investigated through the application of the Getis statistic to SSM/I brightness temperatures. The Getis analysis for the Prairie subscene can be interpreted from climatological and hydrological perspectives because of the operational accuracy of the SWE retrieval algorithm for this region.
机译:由于全天候成像功能,宽条幅宽度和快速的场景重访时间,卫星无源微波数据已被用于绘制积雪图。为了利用不断增长的数据序列,需要创新的处理技术来确定被动微波衍生的雪水当量(SWE)图像中空间模式的演变,并增进对冬季微波对积雪表面被动微波响应的理解。在这项研究中,使用Getis统计量(G / sub i // sup * /)(空间自相关的局部指标)分析了五天平均特殊传感器微波/成像仪(SSM / I)得出的SWE图像。为了评估Getis的统计性能并确定不同空间尺度上的SWE聚类模式,对北半球和北美大草原图像进行了调查。半球尺度的Getis统计分析得出的结果可以确定最大的季节性积雪程度以及季节性积雪变化的程度。通过将Getis统计量应用于SSM / I亮度温度,还研究了SWE算法性能对表面覆盖的依赖性。由于该地区SWE检索算法的操作准确性,可以从气候学和水文学的角度解释草原次区域的Getis分析。

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