Abstract:
Cloud removal is a relevant topic in remote sensing, fostering medium- and high-resolution optical (OPT) image usability for Earth monitoring and study. Recent applicatio...Show MoreMetadata
Abstract:
Cloud removal is a relevant topic in remote sensing, fostering medium- and high-resolution optical (OPT) image usability for Earth monitoring and study. Recent applications of deep generative models and sequence-to-sequence-based models have proved their capability to advance the field significantly. Nevertheless, there are still some gaps: the amount of cloud coverage, the landscape temporal changes, and the density and thickness of clouds need further investigation. We fill some of these gaps in this work by introducing an innovative deep model. The proposed model is multimodal, relying on both spatial and temporal sources of information to restore the whole optical scene of interest. We use the outcomes of both temporal-sequence blending and direct translation from synthetic aperture radar (SAR) to optical images to obtain a pixel-wise restoration of the whole scene. The reconstructed images preserve scene details without resorting to a considerable portion of a clean image. Our approach’s advantage is demonstrated across various atmospheric conditions tested on different datasets. Quantitative and qualitative results prove that the proposed method obtains cloud-free images coping with landscape changes.
Published in: IEEE Transactions on Geoscience and Remote Sensing ( Volume: 60)
Funding Agency:
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- IEEE Keywords
- Index Terms
- Intermediate Feature Maps ,
- Cloud Removal ,
- Optical Tomography ,
- Quantitative Results ,
- Temporal Changes ,
- Deep Models ,
- Qualitative Results ,
- Remote Sensing ,
- Synthetic Aperture Radar ,
- Thick Clouds ,
- Cloud-free Images ,
- Time Series ,
- Ablation ,
- Training Set ,
- Convolutional Neural Network ,
- Validation Set ,
- Long Short-term Memory ,
- Generative Adversarial Networks ,
- Multispectral Images ,
- Peak Signal-to-noise Ratio ,
- Synthetic Aperture Radar Images ,
- Convolutional Long Short-term Memory ,
- Sentinel-2 Images ,
- Synthetic Aperture Radar Data ,
- Sentinel-1 Images ,
- Red-green-blue ,
- Unknown Image ,
- Spectral Angle Mapper ,
- Speckle Noise ,
- Categorical Cross-entropy
- Author Keywords
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Intermediate Feature Maps ,
- Cloud Removal ,
- Optical Tomography ,
- Quantitative Results ,
- Temporal Changes ,
- Deep Models ,
- Qualitative Results ,
- Remote Sensing ,
- Synthetic Aperture Radar ,
- Thick Clouds ,
- Cloud-free Images ,
- Time Series ,
- Ablation ,
- Training Set ,
- Convolutional Neural Network ,
- Validation Set ,
- Long Short-term Memory ,
- Generative Adversarial Networks ,
- Multispectral Images ,
- Peak Signal-to-noise Ratio ,
- Synthetic Aperture Radar Images ,
- Convolutional Long Short-term Memory ,
- Sentinel-2 Images ,
- Synthetic Aperture Radar Data ,
- Sentinel-1 Images ,
- Red-green-blue ,
- Unknown Image ,
- Spectral Angle Mapper ,
- Speckle Noise ,
- Categorical Cross-entropy
- Author Keywords