unconstrained face
Recently Published Documents


TOTAL DOCUMENTS

138
(FIVE YEARS 6)

H-INDEX

18
(FIVE YEARS 0)

2021 ◽  
Vol 23 (07) ◽  
pp. 1201-1204
Author(s):  
Milan. M. P ◽  

Face detection is an application that is able of detecting, track, and recognizing human faces from an angle or video captured by a camera. A lot of advances have been made up in the domain of face recognition for security, identification, and appearance purpose, but still, difficult to able to beat humans alike accuracy. There are various problems in human facial presence such as; lighting conditions, image noise, scale, presentation, etc. Unconstrained face detection remains a difficult problem due to intra-class variations acquired by occlusion, disguise, capricious orientations, facial expressions, age variations…etc. The detection rate of face recognition algorithms is actually low in these conditions. With the popularity of AI in recent years, a mass number of enterprises deployed AI algorithms in absolute life settings. it is complete that face patterns observed by robots depend generally on variations such as pose, light environment, location.



Author(s):  
Xingbo Dong ◽  
Soohyong Kim ◽  
Zhe Jin ◽  
Jung Yeon Hwang ◽  
Sangrae Cho ◽  
...  

Biometric cryptosystems such as fuzzy vaults represent one of the most popular approaches for secret and biometric template protection. However, they are solely designed for biometric verification, where the user is required to input both identity credentials and biometrics. Several practical questions related to the implementation of biometric cryptosystems remain open, especially in regard to biometric template protection. In this article, we propose a face cryptosystem for identification (FCI) in which only biometric input is needed. Our FCI is composed of a one-to-N search subsystem for template protection and a one-to-one match chaff-less fuzzy vault (CFV) subsystem for secret protection. The first subsystem stores N facial features, which are protected by index-of-maximum (IoM) hashing, enhanced by a fusion module for search accuracy. When a face image of the user is presented, the subsystem returns the top k matching scores and activates the corresponding vaults in the CFV subsystem. Then, one-to-one matching is applied to the k vaults based on the probe face, and the identifier or secret associated with the user is retrieved from the correct matched vault. We demonstrate that coupling between the IoM hashing and the CFV resolves several practical issues related to fuzzy vault schemes. The FCI system is evaluated on three large-scale public unconstrained face datasets (LFW, VGG2, and IJB-C) in terms of its accuracy, computation cost, template protection criteria, and security.



Author(s):  
Ranbeer Tyagi ◽  
Geetam Singh Tomar ◽  
Laxmi Shrivastava


Author(s):  
Nelson Mendez-Llanes ◽  
Katy Castillo-Rosado ◽  
Heydi Mendez-Vazquez ◽  
Massimo Tistarelli


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.



2020 ◽  
Vol 107 ◽  
pp. 107354
Author(s):  
Hongyu Zhu ◽  
Hao Liu ◽  
Congcong Zhu ◽  
Zongyong Deng ◽  
Xuehong Sun


Sign in / Sign up

Export Citation Format

Share Document