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SAR-to-Optical Image Translation Based on Conditional Generative Adversarial Networks—Optimization, Opportunities and Limits

机译:基于条件生成对抗网络的SAR到光学图像转换—优化,机会和限制

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Due to its all time capability, synthetic aperture radar (SAR) remote sensing plays an important role in Earth observation. The ability to interpret the data is limited, even for experts, as the human eye is not familiar to the impact of distance-dependent imaging, signal intensities detected in the radar spectrum as well as image characteristics related to speckle or steps of post-processing. This paper is concerned with machine learning for SAR-to-optical image-to-image translation in order to support the interpretation and analysis of original data. A conditional adversarial network is adopted and optimized in order to generate alternative SAR image representations based on the combination of SAR images (starting point) and optical images (reference) for training. Following this strategy, the focus is set on the value of empirical knowledge for initialization, the impact of results on follow-up applications, and the discussion of opportunities/drawbacks related to this application of deep learning. Case study results are shown for high resolution (SAR: TerraSAR-X, optical: ALOS PRISM) and low resolution (Sentinel-1 and -2) data. The properties of the alternative image representation are evaluated based on feedback from experts in SAR remote sensing and the impact on road extraction as an example for follow-up applications. The results provide the basis to explain fundamental limitations affecting the SAR-to-optical image translation idea but also indicate benefits from alternative SAR image representations.
机译:由于具有全时能力,合成孔径雷达(SAR)遥感在地球观测中起着重要作用。甚至对于专家来说,解释数据的能力也是有限的,因为人眼对距离相关成像,雷达频谱中检测到的信号强度以及与斑点或后处理步骤有关的图像特性的影响并不熟悉。 。本文涉及用于SAR到光学图像到图像转换的机器学习,以支持原始数据的解释和分析。采用条件对抗网络并对其进行优化,以便基于用于训练的SAR图像(起点)和光学图像(参考)的组合来生成替代SAR图像表示。按照此策略,重点将放在初始化方面的经验知识的价值,结果对后续应用程序的影响以及与深度学习应用程序相关的机会/缺点的讨论上。案例研究结果显示了高分辨率(SAR:TerraSAR-X,光学:ALOS PRISM)和低分辨率(Sentinel-1和-2)数据。基于SAR遥感专家的反馈以及作为后续应用示例的对道路提取的影响,对替代图像表示的属性进行了评估。结果为解释影响SAR到光学图像转换思想的基本局限性提供了基础,也表明了替代SAR图像表示的好处。

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