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Survey of Deep-Learning Approaches for Remote Sensing Observation Enhancement

机译:深度学习方法的遥感观测综述

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摘要

Deep Learning, and Deep Neural Networks in particular, have established themselves as the new norm in signal and data processing, achieving state-of-the-art performance in image, audio, and natural language understanding. In remote sensing, a large body of research has been devoted to the application of deep learning for typical supervised learning tasks such as classification. Less yet equally important effort has also been allocated to addressing the challenges associated with the enhancement of low-quality observations from remote sensing platforms. Addressing such channels is of paramount importance, both in itself, since high-altitude imaging, environmental conditions, and imaging systems trade-offs lead to low-quality observation, as well as to facilitate subsequent analysis, such as classification and detection. In this paper, we provide a comprehensive review of deep-learning methods for the enhancement of remote sensing observations, focusing on critical tasks including single and multi-band super-resolution, denoising, restoration, pan-sharpening, and fusion, among others. In addition to the detailed analysis and comparison of recently presented approaches, different research avenues which could be explored in the future are also discussed.
机译:深度学习,尤其是深度神经网络,已将自己确立为信号和数据处理的新规范,在图像,音频和自然语言理解方面取得了最先进的性能。在遥感方面,大量研究致力于将深度学习应用于典型的监督学习任务(例如分类)。为了解决与增强来自遥感平台的低质量观测相关的挑战,还付出了同样不太重要的努力。解决此类通道本身就至关重要,因为高空成像,环境条件和成像系统之间的折衷会导致低质量的观察,并有助于后续的分析,例如分类和检测。在本文中,我们提供了用于增强遥感观测的深度学习方法的全面综述,重点研究了关键任务,包括单波段和多波段超分辨率,降噪,恢复,泛锐化和融合等。除了对最近提出的方法进行详细的分析和比较之外,还讨论了将来可以探索的不同研究途径。

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