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A System for the Automatic Classification of Ice Sheet Subsurface Targets in Radar Sounder Data

机译:雷达测深仪数据中冰盖地下目标自动分类的系统

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摘要

Exhaustive investigations of the ice sheet subsurface can be carried out by analyzing the information contained in the huge archives of radargrams acquired by dedicated radar sounder (RS) instruments. The analysis can be done by using properly designed automatic techniques for a quantitative, objective, and reliable extraction of information from radargrams. Unfortunately, the definition and development of such automatic techniques have only been marginally addressed in the literature. In this paper, we propose a novel and efficient system for the automatic classification of ice subsurface targets present in radargrams. The core of the system is represented by the extraction of a set of features for target discrimination. The features are based on both the specific statistical properties of the RS signal and the spatial distribution of the ice subsurface targets. Such features are then provided as input to an automatic classifier based on support vector machine. Experimental results obtained on two real‐world data sets acquired by airborne‐mounted RSs in large regions of Antarctica confirm the robustness and effectiveness of the proposed classification system.
机译:可以通过分析专用雷达测深仪(RS)仪器获取的庞大雷达图档案中包含的信息来对冰盖地下进行详尽的调查。可以通过使用正确设计的自动技术从雷达图中定量,客观和可靠地提取信息来进行分析。不幸的是,这种自动技术的定义和发展在文献中仅得到了很少的讨论。在本文中,我们提出了一种新颖有效的系统,可对雷达图中的冰面地下目标进行自动分类。该系统的核心是通过提取一组用于目标识别的特征来表示的。这些特征既基于RS信号的特定统计特性,又基于冰地下目标的空间分布。然后,将这些特征作为输入提供给基于支持向量机的自动分类器。在南极广大地区的机载RS采集的两个真实世界数据集上获得的实验结果证实了拟议分类系统的鲁棒性和有效性。

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