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TransRes: A Deep Transfer Learning Approach to Migratable Image Super-Resolution in Remote Urban Sensing

机译:TransRes:一种深度迁移学习方法,可实现远程城市传感中可迁移图像的超分辨率

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Recent advances in remote sensing provide a powerful and scalable sensing paradigm to capture abundant visual information about the urban environments. We refer to such a sensing paradigm as remote urban sensing. In this paper, we focus on a migratable satellite image super-resolution problem in remote urban sensing applications. Our goal is to reconstruct satellite images of a high resolution in a target area where the high-resolution training data is not available by transferring a super-resolution model learned in a source area where such data is available. This problem is motivated by the limitation of current solutions that primarily rely on a rich set of high-resolution satellite images in the studied area that are not always available. Two important challenges exist in solving our problem: i) the target and source areas often have very different urban characteristics that prevent the direct application of a super-resolution model learned from the source area to the target area; ii) it is not a trivial task to ensure effective model migration with desirable quality without sufficient high quality training data. To address the above challenges, we develop TransRes, a deep adversarial transfer learning framework, to effectively reconstruct high-resolution satellite images without requiring any ground-truth training data from the studied area. We evaluate the TransRes framework using the real-world satellite imagery data collected from three different cities in Europe. The results show that TransRes consistently outperforms the state-of-the-art baselines by achieving the lowest perception errors under various application scenarios.
机译:遥感技术的最新进展提供了强大且可扩展的传感范式,以捕获有关城市环境的大量视觉信息。我们将这种感测范式称为“远程城市感测”。在本文中,我们关注于远程城市传感应用中的可迁移卫星图像超分辨率问题。我们的目标是通过传输在可用数据源区域中学习到的超分辨率模型,在无法获得高分辨率训练数据的目标区域中重建高分辨率的卫星图像。当前解决方案的局限性导致了这个问题,这些解决方案主要依赖于研究区域中并不总是可用的丰富的高分辨率卫星图像集。解决我们的问题存在两个重要挑战:i)目标区域和源区域经常具有截然不同的城市特征,从而阻止了将从源区域学习到的超分辨率模型直接应用到目标区域; ii)在没有足够高质量的训练数据的情况下,确保以理想的质量进行有效的模型移植并不是一件容易的事。为了解决上述挑战,我们开发了TransRes,这是一种深厚的对抗传递学习框架,可以有效地重建高分辨率卫星图像,而无需来自研究区域的任何实地训练数据。我们使用从欧洲三个不同城市收集的真实卫星图像数据评估TransRes框架。结果表明,TransRes通过在各种应用场景下实现最低的感知误差,始终优于最新的基准。

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