Title
Illumination Invariant Face Recognition Using Near-Infrared Images
Abstract
Most current face recognition systems are designed for indoor, cooperative-user applications. However, even in thus-constrained applications, most existing systems, academic and commercial, are compromised in accuracy by changes in environmental illumination. In this paper, we present a novel solution for illumination invariant face recognition for indoor, cooperative-user applications. First, we present an active near infrared (NIR) imaging system that is able to produce face images of good condition regardless of visible lights in the environment. Second, we show that the resulting face images encode intrinsic information of the face, subject only to a monotonic transform in the gray tone; based on this, we use local binary pattern (LBP) features to compensate for the monotonic transform, thus deriving an illumination invariant face representation. Then, we present methods for face recognition using NIR images; statistical learning algorithms are used to extract most discriminative features from a large pool of invariant LBP features and construct a highly accurate face matching engine. Finally, we present a system that is able to achieve accurate and fast face recognition in practice, in which a method is provided to deal with specular reflections of active NIR lights on eyeglasses, a critical issue in active NIR image-based face recognition. Extensive, comparative results are provided to evaluate the imaging hardware, the face and eye detection algorithms, and the face recognition algorithms and systems, with respect to various factors, including illumination, eyeglasses, time lapse, and ethnic groups.
Year
DOI
Venue
2007
10.1109/TPAMI.2007.1014
IEEE Trans. Pattern Anal. Mach. Intell.
Keywords
Field
DocType
biometrics,local binary pattern,hardware,ethnic groups,near infrared,feature extraction,indexing terms,visible light,computer simulation,artificial intelligence,biometry,ethnic group,statistical analysis,algorithms,engines,face detection,face,learning artificial intelligence,lighting,optical imaging,thermography,face recognition,specular reflection,skin physiology
Computer vision,Facial recognition system,Pattern recognition,Object-class detection,Three-dimensional face recognition,Computer science,Local binary patterns,Image processing,Feature extraction,Artificial intelligence,Face detection,Biometrics
Journal
Volume
Issue
ISSN
29
4
0162-8828
Citations 
PageRank 
References 
220
9.31
36
Authors
4
Search Limit
100220
Name
Order
Citations
PageRank
Stan Z. Li18951535.26
Rufeng Chu256027.44
Shengcai Liao3258298.34
Lun Zhang463528.46