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Method for Coloring Night-vision Imagery Based on Multispectral Semantic Segmentation

机译:多光谱语义分割的夜视图像着色方法

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Color night vision can map natural colors to nighttime images of multiple bands (e.g., visible and long-wave infrared (LWIR)). These colors can assist the observers in better and faster understanding images, thus improving their situational awareness and shortening the reaction time. In this paper, we present an effective method combining deep learning and category colors. It utilizes the semantic segmentation for image segmentation first, and then colorize the image according to categories to avoid the same color scheme and unnatural colors. We compare our method with some others quantitatively and qualitatively, such as global colorization by single lookup table, where we show significant improvements. In addition, it can be expanded according to different environments and applications because of the fixed category colors.
机译:彩色夜视可以将自然色彩映射到多个波段的夜间图像(例如可见光和长波红外(LWIR))。这些颜色可以帮助观察者更好,更快地理解图像,从而改善他们的态势感知并缩短反应时间。在本文中,我们提出了一种将深度学习和类别颜色相结合的有效方法。它首先利用语义分割对图像进行分割,然后根据类别对图像进行着色,以避免相同的配色方案和不自然的颜色。我们将我们的方法与其他方法进行了定量和定性的比较,例如通过单个查找表进行的全局着色,我们在其中显示出了显着的改进。此外,由于固定的类别颜色,可以根据不同的环境和应用程序进行扩展。

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