PaletteNet: Image Recolorization with Given Color Palette

Junho Cho, Sangdoo Yun, Kyoung-Ok Lee, J. Choi
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引用次数: 32

Abstract

Image recolorization enhances the visual perception of an image for design and artistic purposes. In this work, we present a deep neural network, referred to as PaletteNet, which recolors an image according to a given target color palette that is useful to express the color concept of an image. PaletteNet takes two inputs: a source image to be recolored and a target palette. PaletteNet is then designed to change the color concept of a source image so that the palette of the output image is close to the target palette. To train PaletteNet, the proposed multi-task loss is composed of Euclidean loss and adversarial loss. The experimental results show that the proposed method outperforms the existing recolorization methods. Human experts with a commercial software take on average 18 minutes to recolor an image, while PaletteNet automatically recolors plausible results in less than a second.
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调色板:图像重新着色与给定的调色板
为了设计和艺术目的,图像再着色增强了图像的视觉感知。在这项工作中,我们提出了一个深度神经网络,称为PaletteNet,它根据给定的目标调色板重新为图像上色,这有助于表达图像的颜色概念。PaletteNet接受两个输入:要重新着色的源图像和目标调色板。然后,PaletteNet被设计为更改源图像的颜色概念,以便输出图像的调色板接近目标调色板。为了训练PaletteNet,提出的多任务损失由欧几里得损失和对抗损失组成。实验结果表明,该方法优于现有的再着色方法。使用商业软件的人类专家平均需要18分钟来重新为图像上色,而PaletteNet在不到一秒钟的时间内自动重新为可信的结果上色。
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