使用相似的图像进行图像着色

Raj Kumar Gupta, A. Chia, D. Rajan, Ee Sin Ng, Zhiyong Huang
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引用次数: 260

摘要

提出了一种新的基于实例的灰度图像上色方法。作为输入,用户只需要提供一个在语义上与目标图像相似的参考彩色图像。我们以超像素的分辨率从这些图像中提取特征,并利用这些特征来指导着色过程。我们使用超像素表示加快了着色过程。更重要的是,与使用独立像素相比,它还使着色在着色中表现出更高程度的空间一致性。我们采用快速级联特征匹配方案来自动查找参考图像和目标图像的超像素之间的对应关系。每个对应根据级联中不同步骤计算的特征匹配成本分配置信度,并使用高置信度对应为目标超像素分配初始色值集。为了进一步加强这些初始颜色分配的空间一致性,我们开发了一个图像空间投票框架,该框架从邻近的超像素中提取证据来识别和纠正无效的颜色分配。实验结果和对大范围图像的用户研究表明,与现有方法相比,我们的方法具有固定的参数集,可以产生更好的着色结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Image colorization using similar images
We present a new example-based method to colorize a gray image. As input, the user needs only to supply a reference color image which is semantically similar to the target image. We extract features from these images at the resolution of superpixels, and exploit these features to guide the colorization process. Our use of a superpixel representation speeds up the colorization process. More importantly, it also empowers the colorizations to exhibit a much higher extent of spatial consistency in the colorization as compared to that using independent pixels. We adopt a fast cascade feature matching scheme to automatically find correspondences between superpixels of the reference and target images. Each correspondence is assigned a confidence based on the feature matching costs computed at different steps in the cascade, and high confidence correspondences are used to assign an initial set of chromatic values to the target superpixels. To further enforce the spatial coherence of these initial color assignments, we develop an image space voting framework which draws evidence from neighboring superpixels to identify and to correct invalid color assignments. Experimental results and user study on a broad range of images demonstrate that our method with a fixed set of parameters yields better colorization results as compared to existing methods.
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