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NIR image colorization with graph-convolutional neural networks

机译:与图形卷积神经网络的NIR图像着色

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Colorization of near-infrared (NIR) images is a challenging problem due to the different material properties at the infared wavelenghts, thus reducing the correlation with visible images. In this paper, we study how graph-convolutional neural networks allow exploiting a more powerful inductive bias than standard CNNs, in the form of non-local self-similiarity. Its impact is evaluated by showing how training with mean squared error only as loss leads to poor results with a standard CNN, while the graph-convolutional network produces significantly sharper and more realistic colorizations.
机译:由于刚性波兰人的不同材料特性,近红外(NIR)图像的彩色是一个具有挑战性的问题,从而减少了与可见图像的相关性。在本文中,我们研究了图形 - 卷积神经网络如何允许利用比标准CNN更强大的电感偏差,以非本地自我类似的形式。通过展示用标准CNN造成损失的培训,通过损失训练如何培训,这是如何评估其影响,而图形卷积网络产生明显更尖锐和更现实的着色。

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