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用于图像抠图的加权颜色和纹理样本选择。

Weighted color and texture sample selection for image matting.

出版信息

IEEE Trans Image Process. 2013 Nov;22(11):4260-70. doi: 10.1109/TIP.2013.2271549. Epub 2013 Jun 27.

Abstract

Color sampling based matting methods find the best known samples for foreground and background colors of unknown pixels. Such methods do not perform well if there is an overlap in the color distribution of foreground and background regions because color cannot distinguish between these regions and hence, the selected samples cannot reliably estimate the matte. Furthermore, current sampling based matting methods choose samples that are located around the boundaries of foreground and background regions. In this paper, we overcome these two problems. First, we propose texture as a feature that can complement color to improve matting by discriminating between known regions with similar colors. The contribution of texture and color is automatically estimated by analyzing the content of the image. Second, we combine local sampling with a global sampling scheme that prevents true foreground or background samples to be missed during the sample collection stage. An objective function containing color and texture components is optimized to choose the best foreground and background pair among a set of candidate pairs. Experiments are carried out on a benchmark data set and an independent evaluation of the results shows that the proposed method is ranked first among all other image matting methods.

摘要

基于颜色采样的抠图方法会为未知像素的前景色和背景色找到最佳的已知样本。如果前景和背景区域的颜色分布有重叠,那么这种方法的效果就不好,因为颜色无法区分这些区域,因此所选的样本无法可靠地估计蒙板。此外,目前基于采样的抠图方法选择位于前景和背景区域边界周围的样本。在本文中,我们克服了这两个问题。首先,我们提出了纹理作为一种可以补充颜色的特征,通过区分具有相似颜色的已知区域来提高抠图效果。通过分析图像的内容,可以自动估计纹理和颜色的贡献。其次,我们将局部采样与全局采样方案相结合,以防止在采样阶段错过真实的前景或背景样本。通过优化包含颜色和纹理分量的目标函数,可以在一组候选对中选择最佳的前景和背景对。我们在一个基准数据集上进行了实验,结果的独立评估表明,该方法在所有其他图像抠图方法中排名第一。

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