PanNet:用于泛锐化的深度网络架构

Junfeng Yang, Xueyang Fu, Yuwen Hu, Yue Huang, Xinghao Ding, J. Paisley
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引用次数: 427

摘要

我们针对泛锐化问题提出了一种深度网络架构,称为PanNet。我们结合特定领域的知识来设计我们的PanNet架构,重点关注泛锐化问题的两个目标:光谱和空间保存。为了保持光谱,我们将上采样的多光谱图像加入到网络输出中,直接将光谱信息传播到重建图像中。为了保持空间结构,我们在高通滤波域而不是图像域训练网络参数。我们表明,训练后的网络可以很好地泛化来自不同卫星的图像,而无需再训练。实验表明,在视觉上和标准质量度量方面,比最先进的方法有了显著的改进。
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PanNet: A Deep Network Architecture for Pan-Sharpening
We propose a deep network architecture for the pan-sharpening problem called PanNet. We incorporate domain-specific knowledge to design our PanNet architecture by focusing on the two aims of the pan-sharpening problem: spectral and spatial preservation. For spectral preservation, we add up-sampled multispectral images to the network output, which directly propagates the spectral information to the reconstructed image. To preserve spatial structure, we train our network parameters in the high-pass filtering domain rather than the image domain. We show that the trained network generalizes well to images from different satellites without needing retraining. Experiments show significant improvement over state-of-the-art methods visually and in terms of standard quality metrics.
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