研究目的
To propose a pansharpening method for cloud-contaminated very high-resolution remote sensing images that achieves joint resolution enhancement and cloud removal, considering thick clouds, thin clouds, haze, and cloud shadows.
研究成果
The proposed method effectively obtains cloud-free images with both high spatial and spectral resolutions, addressing complex cloud contaminations including thick clouds, thin clouds, haze, and cloud shadows. Experimental results confirm its effectiveness, though there are areas for improvement such as automatic cloud mask determination and efficiency enhancement.
研究不足
1. The determination of cloud masks is done manually, which is challenging for distinguishing between thin and thick clouds and classifying light and dark cloud shadows.
2. The method assumes auxiliary images with approaching phase should be chosen to ensure consistent ground features, which may not always be possible.
3. The efficiency of the integrated fusion model could be improved with faster optimization algorithms and acceleration strategies like parallel computing.
1:Experimental Design and Method Selection:
A two-step fusion framework based on multisource and multitemporal observations is presented. First, thin clouds, haze, and light cloud shadows are jointly removed. Second, a variational-based integrated fusion model is proposed for joint resolution enhancement and missing information reconstruction.
2:Sample Selection and Data Sources:
Experiments were implemented based on both cloud-free and cloud-contaminated images from IKONOS, QuickBird, Jilin (JL)-1, and Deimos-2 satellites.
3:List of Experimental Equipment and Materials:
Not explicitly mentioned.
4:Experimental Procedures and Operational Workflow:
Preprocessing includes geometrical registration and radiometric normalization. A sliding window-based local moment matching method is used for joint removal of thin clouds, haze, and light cloud shadows. A variational-based integrated fusion model is then applied.
5:Data Analysis Methods:
Quantitative evaluation was performed using correlation coefficient, peak signal-to-noise ratio, dimensionless global error in synthesis, spectral angle mapper, and Q2n-index.
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