Makeup-Go: Blind Reversion of Portrait Edit

Ying-Cong Chen, Xiaoyong Shen, Jiaya Jia
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引用次数: 18

Abstract

Virtual face beautification (or markup) becomes common operations in camera or image processing Apps, which is actually deceiving. In this paper, we propose the task of restoring a portrait image from this process. As the first attempt along this line, we assume unknown global operations on human faces and aim to tackle the two issues of skin smoothing and skin color change. These two tasks, intriguingly, impose very different difficulties to estimate subtle details and major color variation. We propose a Component Regression Network (CRN) and address the limitation of using Euclidean loss in blind reversion. CRN maps the edited portrait images back to the original ones without knowing beautification operation details. Our experiments demonstrate effectiveness of the system for this novel task.
化妆- go:肖像编辑的盲目还原
虚拟面部美化(或标记)成为相机或图像处理应用程序的常见操作,这实际上是欺骗。在本文中,我们提出了从这个过程中恢复肖像图像的任务。作为这一思路的第一次尝试,我们对人脸进行了未知的全局操作,旨在解决皮肤平滑和肤色变化两个问题。有趣的是,这两项任务在估计细微细节和主要颜色变化方面带来了截然不同的困难。我们提出了一种成分回归网络(CRN),并解决了在盲回归中使用欧几里得损失的局限性。CRN在不了解美化操作细节的情况下,将编辑后的人像图像映射回原始图像。我们的实验证明了该系统对这项新任务的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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