论文标题

重新思考基于CNN的Pansharpening:通过GAN的Panchronic图像的指导着色

Rethinking CNN-Based Pansharpening: Guided Colorization of Panchromatic Images via GANs

论文作者

Ozcelik, Furkan, Alganci, Ugur, Sertel, Elif, Unal, Gozde

论文摘要

近年来,基于卷积神经网络(CNN)的方法显示了卫星图像的浮力结果。但是,它们仍然在产生高质量的Pansharpening产出时表现出局限性。为此,我们提出了一个新的自我监督学习框架,我们将pansharping视为着色问题,与现有方法相比,该框架将完全新颖的视角和解决方案带入了该问题,这些方法仅基于其解决方案的基础,而这些方法仅基于产生多光谱图像的超级分辨率版本。基于CNN的方法提供了减少的分辨率全质图像作为其模型的输入以及分辨率降低的多光谱图像,因此学会同时将其分辨率提高在一起,但我们提供了灰度转换的多光谱图像作为输入,并训练我们的模型以学习灰度输入的颜色化。我们进一步解决了训练期间固定的降尺度假设,这并不能很好地推广到全分辨率方案。我们通过随机改变下采样率来引入噪声注入。这两个关键变化,加上在拟议的胰腺化生成对抗网络(Pancolorgan)框架中增加对抗性训练,有助于克服基于CNN的Pansharpening中观察到的空间细节损失和模糊问题。所提出的方法的表现优于先前的基于CNN的方法和传统方法,如我们的实验所示。

Convolutional Neural Networks (CNN)-based approaches have shown promising results in pansharpening of satellite images in recent years. However, they still exhibit limitations in producing high-quality pansharpening outputs. To that end, we propose a new self-supervised learning framework, where we treat pansharpening as a colorization problem, which brings an entirely novel perspective and solution to the problem compared to existing methods that base their solution solely on producing a super-resolution version of the multispectral image. Whereas CNN-based methods provide a reduced resolution panchromatic image as input to their model along with reduced resolution multispectral images, hence learn to increase their resolution together, we instead provide the grayscale transformed multispectral image as input, and train our model to learn the colorization of the grayscale input. We further address the fixed downscale ratio assumption during training, which does not generalize well to the full-resolution scenario. We introduce a noise injection into the training by randomly varying the downsampling ratios. Those two critical changes, along with the addition of adversarial training in the proposed PanColorization Generative Adversarial Networks (PanColorGAN) framework, help overcome the spatial detail loss and blur problems that are observed in CNN-based pansharpening. The proposed approach outperforms the previous CNN-based and traditional methods as demonstrated in our experiments.

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