4.7 Article

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

Journal

IEEE TRANSACTIONS ON GEOSCIENCE AND REMOTE SENSING
Volume 59, Issue 4, Pages 3486-3501

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TGRS.2020.3010441

Keywords

Task analysis; Spatial resolution; Training; Standards; Sensors; Multiresolution analysis; AI; colorization; convolutional neural networks (CNNs); deep learning; generative adversarial networks (GANs); image fusion; PanColorization generative adversarial network (PanColorGAN); pansharpening; self-supervised learning; super-resolution (SR)

Funding

  1. Research Fund of the Istanbul Technical University Project [MGA-2017-40811]
  2. Turkcell-ITU Researcher Funding Program

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A new self-supervised learning framework is proposed to treat pansharpening as a colorization problem, enhancing the quality of fusion output by colorizing the grayscale transformed multispectral image. Introducing noise injection by randomly varying downsampling ratios and employing adversarial training in the PanColorization generative adversarial network framework help overcome spatial-detail loss and blur problems observed in CNN-based pansharpening. The proposed approach surpasses previous CNN-based and traditional methods in experiments, demonstrating superior performance.
Convolutional neural network (CNN)-based approaches have shown promising results in the pansharpening of the 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 with the existing methods that base their solution solely on producing a super-resolution version of the multispectral image. Whereas the CNN-based methods provide a reduced-resolution panchromatic image as the input to their model along with the reduced-resolution multispectral images and, hence, learn to increase their resolution together, we instead provide the grayscale transformed multispectral image as the 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 network (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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