Weakly Supervised Fusion of Multiple Overhead Images

IEEE Computer Society Conference on Computer Vision and Pattern Recognition Workshops(2019)

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摘要
This work addresses the problem of combining noisy overhead images to make a single high-quality image of a region. Existing fusion methods rely on supervised learning, which requires image quality annotations, or ad hoc criteria, which do not generalize well. We formulate a weakly supervised method, which learns to predict image quality at the pixel-level by optimizing for semantic segmentation. This means our method only requires semantic segmentation labels, not explicit artifact annotations in the input images. We evaluate our method under varying levels of occlusions and clouds. Experimental results show that our method is significantly better than a baseline fusion approach and nearly as good as the ideal case, a single noise free image.
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关键词
pixel-level,semantic segmentation labels,explicit artifact annotations,input images,baseline fusion approach,single noise-free image,multiple overhead,noisy overhead images,high-quality image,fusion methods,supervised learning,image quality annotations,ad hoc criteria,weakly supervised fusion
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