The development of deep learning in synthetic aperture radar imagery

C. Schwegmann, W. Kleynhans, B. P. Salmon
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引用次数: 6

Abstract

The usage of remote sensing to observe environments necessitates interdisciplinary approaches to derive effective, impactful research. One remote sensing technique, Synthetic Aperture Radar, has shown significant benefits over traditional remote sensing techniques but comes at the price of additional complexities. To adequately cope with these, researchers have begun to employ advanced machine learning techniques known as deep learning to Synthetic Aperture Radar data. Deep learning represents the next stage in the evolution of machine intelligence which places the onus of identifying salient features on the network rather than researcher. This paper will outline machine learning techniques as it has been used previously on SAR; what is deep learning and where it fits in compared to traditional machine learning; what benefits can be derived by applying it to Synthetic Aperture Radar imagery; and finally describe some obstacles that still need to be overcome in order to provide constient and long term results from deep learning in SAR.
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合成孔径雷达图像中深度学习的发展
利用遥感观察环境需要跨学科的方法来进行有效和有影响的研究。一种遥感技术,合成孔径雷达,已经显示出比传统遥感技术显著的优势,但代价是额外的复杂性。为了充分应对这些问题,研究人员已经开始采用先进的机器学习技术,即深度学习来合成孔径雷达数据。深度学习代表了机器智能进化的下一个阶段,它将识别显著特征的责任放在网络上,而不是研究人员身上。本文将概述机器学习技术,因为它已被用于以前的SAR;什么是深度学习?与传统机器学习相比,深度学习适用于哪里?将其应用于合成孔径雷达图像可以获得什么好处;最后描述了为了在SAR中提供一致和长期的深度学习结果,仍然需要克服的一些障碍。
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