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Automatic classification of subsurface features in radar sounder data acquired in icy areas

机译:在冰冷地区采集的雷达测深仪数据中的地下特征的自动分类

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The sea level rise determined by the continuous increase in the global temperature calls for a quantitative investigation of the continental ice subsurface features and their dynamics. In the past decades, the study of these features has been carried out by manually analyzing radargrams acquired by airborne-mounted radar sounder (RS) instruments at the Earth polar caps. As RSs provide a very large amount of data, the main challenge to an exhaustive analysis of the ice subsurface is the efficient extraction of useful information contained in radargrams. To address this challenge, in this paper we propose an automatic classification system of the main ice subsurface features visible in radargrams, i.e., ice layered area, bedrock scattering area and noise regions. The system relies on the extraction of a set of discriminant features which are computed on the bases of a detailed analysis of the statistical properties of the radar signal and of the spatial distribution of the subsurface features. The features are then given as input to a machine learning classifier based on Support Vector Machine (SVM). The proposed system is validated on a dataset made up of several radargrams acquired by an airborne RS in Antarctica.
机译:由全球温度的持续升高确定的海平面上升要求对大陆冰层地下特征及其动力学进行定量研究。在过去的几十年中,通过手动分析机载雷达测深仪(RS)仪器在地极盖处获得的雷达图,对这些特征进行了研究。由于RS提供了大量数据,因此对冰下表面进行详尽分析的主要挑战是有效提取雷达图中包含的有用信息。为了应对这一挑战,在本文中,我们提出了一种雷达分类图中可见的主要冰地下特征的自动分类系统,即冰层区域,基岩散射区域和噪声区域。该系统依赖于一组判别特征的提取,这些判别特征是在对雷达信号的统计特性和地下特征的空间分布进行详细分析的基础上计算得出的。然后,将这些特征作为输入提供给基于支持向量机(SVM)的机器学习分类器。该系统在由南极航空RS采集的数个雷达图组成的数据集上得到了验证。

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