scholarly journals Learning to Aggregate and Personalize 3D Face from In-the-Wild Photo Collection

Author(s):  
Zhenyu Zhang ◽  
Yanhao Ge ◽  
Renwang Chen ◽  
Ying Tai ◽  
Yan Yan ◽  
...  
Keyword(s):  
3D Face ◽  
Author(s):  
Mehdi Bahri ◽  
Eimear O’ Sullivan ◽  
Shunwang Gong ◽  
Feng Liu ◽  
Xiaoming Liu ◽  
...  

AbstractStandard registration algorithms need to be independently applied to each surface to register, following careful pre-processing and hand-tuning. Recently, learning-based approaches have emerged that reduce the registration of new scans to running inference with a previously-trained model. The potential benefits are multifold: inference is typically orders of magnitude faster than solving a new instance of a difficult optimization problem, deep learning models can be made robust to noise and corruption, and the trained model may be re-used for other tasks, e.g. through transfer learning. In this paper, we cast the registration task as a surface-to-surface translation problem, and design a model to reliably capture the latent geometric information directly from raw 3D face scans. We introduce Shape-My-Face (SMF), a powerful encoder-decoder architecture based on an improved point cloud encoder, a novel visual attention mechanism, graph convolutional decoders with skip connections, and a specialized mouth model that we smoothly integrate with the mesh convolutions. Compared to the previous state-of-the-art learning algorithms for non-rigid registration of face scans, SMF only requires the raw data to be rigidly aligned (with scaling) with a pre-defined face template. Additionally, our model provides topologically-sound meshes with minimal supervision, offers faster training time, has orders of magnitude fewer trainable parameters, is more robust to noise, and can generalize to previously unseen datasets. We extensively evaluate the quality of our registrations on diverse data. We demonstrate the robustness and generalizability of our model with in-the-wild face scans across different modalities, sensor types, and resolutions. Finally, we show that, by learning to register scans, SMF produces a hybrid linear and non-linear morphable model. Manipulation of the latent space of SMF allows for shape generation, and morphing applications such as expression transfer in-the-wild. We train SMF on a dataset of human faces comprising 9 large-scale databases on commodity hardware.


Author(s):  
László A. Jeni ◽  
Sergey Tulyakov ◽  
Lijun Yin ◽  
Nicu Sebe ◽  
Jeffrey F. Cohn
Keyword(s):  
3D Face ◽  

Author(s):  
James Booth ◽  
Epameinondas Antonakos ◽  
Stylianos Ploumpis ◽  
George Trigeorgis ◽  
Yannis Panagakis ◽  
...  
Keyword(s):  
3D Face ◽  

2020 ◽  
Vol 2020 ◽  
pp. 1-16
Author(s):  
Zhi Zhang ◽  
Xin Xu ◽  
Jiuzhen Liang ◽  
Bingyu Sun

Face identification aims at putting a label on an unknown face with respect to some training set. Unconstrained face identification is a challenging problem because of the possible variations in face pose, illumination, occlusion, and facial expression. This paper presents an unconstrained face identification method based on face frontalization and learning-based data representation. Firstly, the frontal views of unconstrained face images are automatically generated by using a single, unchanged 3D face model. Then, we crop the face relevant regions of the frontal views to segment faces from the backgrounds. At last, to enhance the discriminative capability of the coding vectors, a support vector-guided dictionary learning (SVGDL) model is applied to adaptively assign different weights to different pairs of coding vectors. The performance of the proposed method FSVGDL (frontalization-based support vector guided dictionary learning) is evaluated on the Labeled Faces in the wild (LFW) database. After decision fusion, the identification accuracy yields 97.17% when using 7 images per individual for training and 3 images per individual for testing with 158 classes in total.


Author(s):  
Rohith Krishnan Pillai ◽  
Laszlo Attila Jeni ◽  
Huiyuan Yang ◽  
Zheng Zhang ◽  
Lijun Yin ◽  
...  

2021 ◽  
Vol 40 (4) ◽  
pp. 1-13
Author(s):  
Yao Feng ◽  
Haiwen Feng ◽  
Michael J. Black ◽  
Timo Bolkart
Keyword(s):  
3D Face ◽  

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