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Extraction of Statistical Features for Improved Automatic Detection of Subglacial Lakes in Radar Sounder Data

机译:提取统计特征以改进雷达测深仪数据中冰湖以下的自动检测

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Approximately 70% of the total number of inventoried subglacial lakes (SLs) in Antarctica have been detected by visual interpretation or semiautomatic techniques applied to data acquired by airborne radar sounder (RS) instruments. Recently, interest has been shown in using automatic classifiers fed with topographic and structural features of the basal interface for the discrimination between lake and non-lake interfaces in RS data. To enhance the performances of the automatic classifiers, in this paper, we propose an additional set of three discriminant features of the basal interface. The features model the statistical properties of the basal reflected radar signal in terms of central moments and are particularly suitable to the accurate description of subglacial lakes since they i) locally characterize the basal interface, ii) do not rely on subsurface attenuation models, and ii) are independent on depth. The effectiveness of the proposed statistical features has been proven experimentally using a large RS dataset acquired in East Antarctica.
机译:通过视觉解释或将半自动技术应用于机载雷达测深仪(RS)仪器所采集的数据,已检测到南极盘存的冰川下湖泊(SLs)总数的约70%。近来,已经显示出使用自动分类器以及基础界面的地形和结构特征的兴趣,该自动分类器用于区分RS数据中的湖泊和非湖泊界面。为了提高自动分类器的性能,在本文中,我们提出了基础界面的三个判别特征的附加集合。这些特征以中心矩为基础对基础反射雷达信号的统计特性进行建模,并且特别适用于冰湖的精确描述,因为它们i)局部表征了基础界面,ii)不依赖于地下衰减模型,并且ii )与深度无关。建议的统计特征的有效性已通过使用在南极东部获得的大型RS数据集进行了实验验证。

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