Joint Registration and Representation Learning for Unconstrained Face Identification

Author(s):  
Munawar Hayat ◽  
Salman H. Khan ◽  
Naoufel Werghi ◽  
Roland Goecke
Author(s):  
Jian Zhao ◽  
Yu Cheng ◽  
Yi Cheng ◽  
Yang Yang ◽  
Fang Zhao ◽  
...  

Despite the remarkable progress in face recognition related technologies, reliably recognizing faces across ages still remains a big challenge. The appearance of a human face changes substantially over time, resulting in significant intraclass variations. As opposed to current techniques for ageinvariant face recognition, which either directly extract ageinvariant features for recognition, or first synthesize a face that matches target age before feature extraction, we argue that it is more desirable to perform both tasks jointly so that they can leverage each other. To this end, we propose a deep Age-Invariant Model (AIM) for face recognition in the wild with three distinct novelties. First, AIM presents a novel unified deep architecture jointly performing cross-age face synthesis and recognition in a mutual boosting way. Second, AIM achieves continuous face rejuvenation/aging with remarkable photorealistic and identity-preserving properties, avoiding the requirement of paired data and the true age of testing samples. Third, we develop effective and novel training strategies for end-to-end learning the whole deep architecture, which generates powerful age-invariant face representations explicitly disentangled from the age variation. Extensive experiments on several cross-age datasets (MORPH, CACD and FG-NET) demonstrate the superiority of the proposed AIM model over the state-of-the-arts. Benchmarking our model on one of the most popular unconstrained face recognition datasets IJB-C additionally verifies the promising generalizability of AIM in recognizing faces in the wild.


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.


2019 ◽  
Vol 49 (8) ◽  
pp. 3191-3202
Author(s):  
Jack Gaston ◽  
Ji Ming ◽  
Danny Crookes

2018 ◽  
pp. 33-64
Author(s):  
Jun-Cheng Chen * ◽  
Rajeev Ranjan * ◽  
Vishal M. Patel ◽  
Carlos D. Castillo ◽  
Rama Chellappa

2019 ◽  
Vol 4 (91) ◽  
pp. 21-29 ◽  
Author(s):  
Yaroslav Trofimenko ◽  
Lyudmila Vinogradova ◽  
Evgeniy Ershov

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