Face De Occlusion Using 3D Morphable Model And Generative Adversarial Network Save

Face de-occlusion using 3D morphable model and generative adversarial network

Project README

Face de-occlusion

Face de-occlusion using 3d morphable model and generative adversarial network

Feature

A novel method is proposed to restore de-occluded face images based on the use of 3DMM and generative adversarial network. Experiments shows the advantages of this method on challenging facial de-occlusion, 3D face reconstruction and face attibute editing.

Face de-occlusion on synthetic images

(a) Occluded-images (b) De-occluded images (c) Real images Image text

Face de-occlusion on real images

Image text

Dataset and code

If you are interested in this work, you can download:

Dataset [baidu drive] [google drive] Experimental Result [baidu drive] password: 2ub4

Code [coming soon]

If you use this dataset, please cite to the papers:

[1] Xiaowei Yuan and In Kyu Park. Face de-occlusion using 3d morphable model and generative adversarial network. In ICCV, 2019

[2] Tal Hassner, Shai Harel, Eran Paz, and Roee Enbar. Effective face frontalization in unconstrained images. In CVPR, 2015

[3] Xiangyu Zhu, Zhen Lei, Junjie Yan, Dong Yi, and Stan Z. Li. High-fidelity pose and expression normalization for face recognition in the wild. In CVPR, 2015.

Open Source Agenda is not affiliated with "Face De Occlusion Using 3D Morphable Model And Generative Adversarial Network" Project. README Source: xweiyuan/Face-de-occlusion-using-3D-morphable-model-and-generative-adversarial-network

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