On Improving Face Generation for Privacy Preservation

Replacing faces in image and video content with generated ones (e.g., using generative adversarial networks, GANs) has gained attention recently, as it enables resolving privacy issues in image and video data used for visualization purposes or training data in multimedia analysis and retrieval systems. Privacy issues should be addressed when visual content enters the system, as identifying and removing content later (which may be necessary due to the shifts in legislation and users' increased awareness) is a tedious and costly task. This paper proposes two improvements of face generation: First, we propose the use of portrait segmentation on the training data of the GAN, in order to generate images that are not only cropped to the face region, which may cause artifacts during insertion. Second, we add a face detection term to the loss function, in order to better guide the training process. The results show that these modifications enable creating uncropped face images achieving the same or better performance than for closely cropped images. We use the detectability of the generated faces as an evaluation metric, discuss the limitations of such a metric and propose enhancements for better comparability. We also demonstrate that the aim of anonymization is achieved by running face recognition on the modified images from the LFW data set.

[1]  Xiaogang Wang,et al.  Deep Learning Face Attributes in the Wild , 2014, 2015 IEEE International Conference on Computer Vision (ICCV).

[2]  Yu Qiao,et al.  Joint Face Detection and Alignment Using Multitask Cascaded Convolutional Networks , 2016, IEEE Signal Processing Letters.

[3]  David Zhang,et al.  Data-Driven Facial Beauty Analysis: Prediction, Retrieval and Manipulation , 2018 .

[4]  Jon Gauthier Conditional generative adversarial nets for convolutional face generation , 2015 .

[5]  Bradley Malin,et al.  Preserving privacy by de-identifying face images , 2005, IEEE Transactions on Knowledge and Data Engineering.

[6]  Tal Hassner,et al.  On Face Segmentation, Face Swapping, and Face Perception , 2017, 2018 13th IEEE International Conference on Automatic Face & Gesture Recognition (FG 2018).

[7]  Alexandros André Chaaraoui,et al.  Visual privacy protection methods: A survey , 2015, Expert Syst. Appl..

[8]  Xiaogang Wang,et al.  Pyramid Scene Parsing Network , 2016, 2017 IEEE Conference on Computer Vision and Pattern Recognition (CVPR).

[9]  Andrew Gordon Wilson,et al.  Bayesian GAN , 2017, NIPS.

[10]  Jie Xu,et al.  Facial attractiveness prediction using psychologically inspired convolutional neural network (PI-CNN) , 2017, 2017 IEEE International Conference on Acoustics, Speech and Signal Processing (ICASSP).

[11]  Gang Hua,et al.  Labeled Faces in the Wild: A Survey , 2016 .

[12]  Kilian Q. Weinberger,et al.  An empirical study on evaluation metrics of generative adversarial networks , 2018, ArXiv.

[13]  Cordelia Schmid,et al.  How good is my GAN? , 2018, ECCV.

[14]  Li Meng,et al.  Efficient approach to de-identifying faces in videos , 2017, IET Signal Process..

[15]  Subramanya R. Dulloor,et al.  Face Generation with Conditional Generative Adversarial Networks , 2017 .

[16]  Paul A. Viola,et al.  Robust Real-Time Face Detection , 2001, Proceedings Eighth IEEE International Conference on Computer Vision. ICCV 2001.

[17]  Shree K. Nayar,et al.  Face swapping: automatically replacing faces in photographs , 2008, SIGGRAPH 2008.

[18]  Ivan Sikiric,et al.  I Know That Person: Generative Full Body and Face De-identification of People in Images , 2017, 2017 IEEE Conference on Computer Vision and Pattern Recognition Workshops (CVPRW).

[19]  Sachit Mahajan,et al.  SwapItUp: A Face Swap Application for Privacy Protection , 2017, 2017 IEEE 31st International Conference on Advanced Information Networking and Applications (AINA).

[20]  Fan Yang,et al.  Privacy-Protective-GAN for Face De-identification , 2018, ArXiv.

[21]  Mario Lucic,et al.  Are GANs Created Equal? A Large-Scale Study , 2017, NeurIPS.

[22]  Sylvain Paris,et al.  Automatic Portrait Segmentation for Image Stylization , 2016, Comput. Graph. Forum.

[23]  Soumith Chintala,et al.  Unsupervised Representation Learning with Deep Convolutional Generative Adversarial Networks , 2015, ICLR.

[24]  Werner Bailer,et al.  Face Swapping for Solving Collateral Privacy Issues in Multimedia Analytics , 2018, MMM.

[25]  Martin Winter,et al.  Incremental Training for Face Recognition , 2018, MMM.

[26]  Thomas Brox,et al.  U-Net: Convolutional Networks for Biomedical Image Segmentation , 2015, MICCAI.

[27]  Yoshua Bengio,et al.  The One Hundred Layers Tiramisu: Fully Convolutional DenseNets for Semantic Segmentation , 2016, 2017 IEEE Conference on Computer Vision and Pattern Recognition Workshops (CVPRW).

[28]  Shigeo Morishima,et al.  RSGAN: face swapping and editing using face and hair representation in latent spaces , 2018, SIGGRAPH Posters.

[29]  Yinhua Liu,et al.  Deep self-taught learning for facial beauty prediction , 2014, Neurocomputing.