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Feature-Level Loss for Multispectral Pan-Sharpening with Machine Learning

机译:机器学习的多光谱泛磨的特征级损失

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Multispectral pan-sharpening plays an important role in providing earth observation with both high-spatial and high-spectral resolutions, and recently pan-sharpening with machine learning has been attracting broad interest. However, these algorithms minimizing the pixel-wise mean squared error, generally suffer from over-smoothed results that lack of high-frequency details in both spatial and spectral dimensions. In this paper, we propose to tackle this problem by shifting the learning loss from pixel-wise error to a higher-level feature loss. The new loss function, formulated by spatial structure similarity and spectral angle mapping, pushes the model to generate results that have similar feature representations with ground truth, rather than match with pixel-wise accuracy. Consequently, more realistic fusion results can be produced. Visual and quantitative analysis both demonstrate that our approach achieves better performance in comparison with state-of-the-art algorithms. Furthermore, experiments on high-level remote sensing task further confirm the superiority of the proposed method in real applications.
机译:多光谱全景锐化在提供具有高空间分辨率和高光谱分辨率的地球观测中扮演着重要角色,并且最近通过机器学习进行的全景锐化引起了广泛的兴趣。然而,这些使像素方向均方误差最小化的算法通常遭受过度平滑的结果的困扰,该结果在空间和频谱维度上都缺乏高频细节。在本文中,我们建议通过将学习损失从像素错误转移到更高级别的特征损失来解决此问题。由空间结构相似性和光谱角度映射表述的新损失函数推动模型生成结果,这些结果具有与地面真相相似的特征表示,而不是与逐像素精度匹配。因此,可以产生更真实的融合结果。视觉和定量分析均表明,与最新算法相比,我们的方法可实现更好的性能。此外,高水平遥感任务的实验进一步证实了该方法在实际应用中的优越性。

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