从野外人脸组件交换生成合成人脸

Romrawin Chumpu, Pitchayagan Temniranrat, S. Marukatat
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引用次数: 1

摘要

面部识别最近成为保护个人身份和个人机密的法律问题。许多人脸合成技术被用来保护个人用户的数据。这项工作提出了一种从野外人脸成分生成合成人脸的技术。从野外图像的面部地标中提取眼睛、眉毛、鼻子和嘴巴等面部成分,并随机替换为原始图像。然后使用生成对抗网络(GANs)对交换后的图像进行去噪,同时保留原始颜色。对1万张原始图像进行人脸交换实验,结果表明与原始图像的平均差值为0.723。结果表明,我们的人脸成分交换技术可以在未来有效合法地利用人脸数据。
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Synthetic face generation from in-the-wild face components swapping
Facial identification has recently been a legal con-cern for protecting one's identity and personal confidentiality. Many face synthesis techniques were used to safeguard individual users' data. This work presents a technique for generating synthetic faces from in-the-wild face components. The face components, such as the eyes, eyebrows, nose, and mouth, were extracted from a facial landmark of in-the-wild images and ran-domly replaced with the original image. Generative Adversarial Networks (GANs) for face restoration were then used to denoise the swapped image while preserving the original colorization. The experiments on face swapping with ten thousand of wild images demonstrate an average of 0.723 difference from the source image. The result shows that our face component swapping technique could be an effective lawful way to use facial data in the future.
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