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首页> 外文期刊>IEEE Transactions on Geoscience and Remote Sensing >A New Algorithm (ECICE) to Estimate Ice Concentration From Remote Sensing Observations: An Application to 85-GHz Passive Microwave Data
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A New Algorithm (ECICE) to Estimate Ice Concentration From Remote Sensing Observations: An Application to 85-GHz Passive Microwave Data

机译:一种从遥感观测值估算冰浓度的新算法(ECICE):在85 GHz被动微波数据中的应用

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A new algorithm, called Environment Canada's Ice Concentration Extractor (ECICE), has been developed to calculate total ice concentration and partial concentration of each ice type from remote-sensing observations. It employs two new concepts. First, it obtains a best estimate of ice concentrations by minimizing the sum of squared difference between observed and estimated radiometric values based on a linear radiometric model for each ice type. Second, instead of employing a single radiometric value (tie point) for each ice type, it utilizes the probability density distribution of the radiometric values for each ice type. Then, in a Monte Carlo simulation, 1000 radiometric values are randomly selected, total and ice-type concentrations are calculated by solving the minimization problem, and finally, median values from the 1000 simulations are chosen. The algorithm was applied to the winter sea ice in the Gulf of St. Lawrence, Canada, using observations from Special Sensor Microwave Imager (SSM/I) 85-GHz channel. Results were evaluated against ice concentration estimates from the operational analysis of Radarsat images at the Canadian Ice Service (CIS). Statistics of the differences between the output concentration and CIS estimates show that ECICE can successfully identify open water and consolidated pack ice pixels better than the Enhanced NASA Team algorithm. However, in areas of ice concentrations between 20% and 70%, the algorithm's performance could not be precisely evaluated because the typical size of the CIS's analysis polygon is much larger than the footprint of the 85-GHz SSM/I channel. Hence, the algorithm captures information at a finer spatial scale. Examples of using one, two, and three radiometric parameters to calculate the concentrations are presented.
机译:已经开发了一种新的算法,称为加拿大环境部的冰浓度提取器(ECICE),可以通过遥感观测来计算每种冰类型的总冰浓度和部分浓度。它采用了两个新概念。首先,它通过基于每种冰类型的线性辐射模型,通过最小化观测值与估计辐射值之间的平方差之和,来获得冰浓度的最佳估计值。其次,不是对每种冰类型使用单个辐射值(联系点),而是对每种冰类型使用辐射值的概率密度分布。然后,在蒙特卡洛模拟中,随机选择1000个辐射值,通过解决最小化问题来计算总浓度和冰型浓度,最后从1000个模拟中选择中值。使用来自特殊传感器微波成像仪(SSM / I)85 GHz通道的观测结果,将该算法应用于加拿大圣劳伦斯湾的冬季海冰。根据加拿大冰服务局(CIS)的Radarsat影像运行分析得出的冰浓度估算结果进行了评估。统计的输出浓度与CIS估计值之间的差异表明,与增强的NASA Team算法相比,ECICE可以更好地成功识别开阔水域和合并的冰块像素。但是,在冰浓度在20%到70%之间的区域中,由于CIS分析多边形的典型尺寸远大于85 GHz SSM / I通道的占用面积,因此无法精确评估算法的性能。因此,该算法以更精细的空间尺度捕获信息。给出了使用一个,两个和三个辐射参数计算浓度的示例。

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