通过反向合成预测前景颜色

Sebastian Lutz, A. Smolic
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引用次数: 0

摘要

在自然图像抠图中,目标是估计图像中前景物体的不透明度。这个不透明度控制前景和背景在透明区域的混合方式。近年来,深度学习的进步导致许多自然图像抠图算法在全自动方式下取得了出色的表现。然而,大多数这些算法只能从图像中预测alpha哑光,这不足以创建高质量的构图。此外,不可能以任何方式手动与这些算法交互,除非直接更改它们的输入或输出。我们提出了一种新的递归神经网络,它可以作为一种后处理方法来恢复图像的前景和背景颜色,给出一个初始的alpha估计。我们的方法在自然图像抠图的颜色估计方面优于最先进的方法,并表明我们的方法的循环特性允许用户轻松更改候选解决方案,从而获得更好的颜色估计。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Foreground color prediction through inverse compositing
In natural image matting, the goal is to estimate the opacity of the foreground object in the image. This opacity controls the way the foreground and background is blended in transparent regions. In recent years, advances in deep learning have led to many natural image matting algorithms that have achieved outstanding performance in a fully automatic manner. However, most of these algorithms only predict the alpha matte from the image, which is not sufficient to create high-quality compositions. Further, it is not possible to manually interact with these algorithms in any way except by directly changing their input or output. We propose a novel recurrent neural network that can be used as a post-processing method to recover the foreground and background colors of an image, given an initial alpha estimation. Our method outperforms the state-of-the-art in color estimation for natural image matting and show that the recurrent nature of our method allows users to easily change candidate solutions that lead to superior color estimations.
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