基于动态参考纹理开发的遥感图像超分辨率

Jingliang Guo;Mengke Yuan;Tong Wang;Zhifeng Li;Xiaohong Jia;Dong-Ming Yan
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引用次数: 0

摘要

基于参考的遥感超分辨率(refs - sr)方法在提高遥感图像的空间分辨率和覆盖面积方面具有很大的潜力,高分辨率(HR)参考图像可以对低分辨率(LR)大覆盖图像的精细细节进行补充。然而,大多数refs - sr方法将引用视为静态模板,并单向地将高频信息传递到LR输入。为了解决低效率和不准确的引导超分辨问题,我们提出了一种新的基于动态参考纹理的refs - sr方法,称为DTESR。关键参考恢复(Ref restoration)模块由相关性生成、纹理增强与细化(TER)和基于自适应相似性的融合(adaptive similarity based fusion)三个部分组成,逐步重建LR输入的高相关性和精细纹理。具体来说,LR输入和参考特征都被用于精确的相关生成。接下来,在相关图的指导下,用最合适的参考对这两个特征进行增强和细化。此外,设计了一种可学习的融合方法来保持相邻像素的一致性。这些操作将迭代应用于三个重建尺度,以促进Ref特征的开发。通过综合的定量和定性评价,我们的实验结果表明,DTESR超越了目前最先进的refs - sr方法。
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DTESR: Remote Sensing Imagery Super-Resolution With Dynamic Reference Textures Exploitation
Reference-based remote sensing super-resolution (RefRS-SR) method shows great potential for improving both spatial resolution and coverage area of remote sensing images, by which high-resolution (HR) reference images can supplement fine details for low-resolution (LR) but wide coverage images. However, most RefRS-SR methods treat the reference as a static template and unidirectionally transfer the high-frequency information to the LR input. To address the issue of inefficient and inaccurate guided super-resolving, we propose a new RefRS-SR method with dynamic reference textures exploitation dubbed DTESR. The key referenced restoration (Ref Restoration) module consists of three components: correlation generation, texture enhancement and refinement (TER), and adaptive similarity-based fusion to progressively reconstruct high correlation and delicate textures for the LR input. Specifically, both the LR input and reference features are utilized for precise correlation generation. Next, both features are enhanced and refined with the most suitable reference under the guidance of the correlation map. Moreover, a learnable fusion method is designed to maintain the consistency of adjacent pixels. These operations will be iteratively applied to the three reconstruction scales to promote the exploitation of the Ref features. Through comprehensive quantitative and qualitative evaluations, our experimental results demonstrate that DTESR surpasses the current state-of-the-art RefRS-SR methods.
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