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Papers/FaceController: Controllable Attribute Editing for Face in...

FaceController: Controllable Attribute Editing for Face in the Wild

Zhiliang Xu, Xiyu Yu, Zhibin Hong, Zhen Zhu, Junyu Han, Jingtuo Liu, Errui Ding, Xiang Bai

2021-02-23AttributeDisentanglementFace Swapping
PaperPDF

Abstract

Face attribute editing aims to generate faces with one or multiple desired face attributes manipulated while other details are preserved. Unlike prior works such as GAN inversion, which has an expensive reverse mapping process, we propose a simple feed-forward network to generate high-fidelity manipulated faces. By simply employing some existing and easy-obtainable prior information, our method can control, transfer, and edit diverse attributes of faces in the wild. The proposed method can consequently be applied to various applications such as face swapping, face relighting, and makeup transfer. In our method, we decouple identity, expression, pose, and illumination using 3D priors; separate texture and colors by using region-wise style codes. All the information is embedded into adversarial learning by our identity-style normalization module. Disentanglement losses are proposed to enhance the generator to extract information independently from each attribute. Comprehensive quantitative and qualitative evaluations have been conducted. In a single framework, our method achieves the best or competitive scores on a variety of face applications.

Results

TaskDatasetMetricValueModel
Facial Recognition and ModellingFaceForensics++FID3.51FaceController
Facial Recognition and ModellingFaceForensics++FID3.81FaceSwap
Facial Recognition and ModellingFaceForensics++FID4.05FaceShifter
Facial Recognition and ModellingFaceForensics++FID4.29DeepFake
Facial Recognition and ModellingFaceForensics++FID4.35FSGAN
Face ReconstructionFaceForensics++FID3.51FaceController
Face ReconstructionFaceForensics++FID3.81FaceSwap
Face ReconstructionFaceForensics++FID4.05FaceShifter
Face ReconstructionFaceForensics++FID4.29DeepFake
Face ReconstructionFaceForensics++FID4.35FSGAN
3DFaceForensics++FID3.51FaceController
3DFaceForensics++FID3.81FaceSwap
3DFaceForensics++FID4.05FaceShifter
3DFaceForensics++FID4.29DeepFake
3DFaceForensics++FID4.35FSGAN
3D Face ModellingFaceForensics++FID3.51FaceController
3D Face ModellingFaceForensics++FID3.81FaceSwap
3D Face ModellingFaceForensics++FID4.05FaceShifter
3D Face ModellingFaceForensics++FID4.29DeepFake
3D Face ModellingFaceForensics++FID4.35FSGAN
3D Face ReconstructionFaceForensics++FID3.51FaceController
3D Face ReconstructionFaceForensics++FID3.81FaceSwap
3D Face ReconstructionFaceForensics++FID4.05FaceShifter
3D Face ReconstructionFaceForensics++FID4.29DeepFake
3D Face ReconstructionFaceForensics++FID4.35FSGAN
10-shot image generationFaceForensics++FID3.51FaceController
10-shot image generationFaceForensics++FID3.81FaceSwap
10-shot image generationFaceForensics++FID4.05FaceShifter
10-shot image generationFaceForensics++FID4.29DeepFake
10-shot image generationFaceForensics++FID4.35FSGAN

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