DocumentCode
1766131
Title
Hand-Dorsa Vein Recognition by Matching Local Features of Multisource Keypoints
Author
Di Huang ; Yinhang Tang ; Yiding Wang ; Liming Chen ; Yunhong Wang
Author_Institution
State Key Lab. of Software Dev. Environ., Beihang Univ., Beijing, China
Volume
45
Issue
9
fYear
2015
fDate
Sept. 2015
Firstpage
1823
Lastpage
1837
Abstract
As an emerging biometric for people identification, the dorsal hand vein has received increasing attention in recent years due to the properties of being universal, unique, permanent, and contactless, and especially its simplicity of liveness detection and difficulty of forging. However, the dorsal hand vein is usually captured by near-infrared (NIR) sensors and the resulting image is of low contrast and shows a very sparse subcutaneous vascular network. Therefore, it does not offer sufficient distinctiveness in recognition particularly in the presence of large population. This paper proposes a novel approach to hand-dorsa vein recognition through matching local features of multiple sources. In contrast to current studies only concentrating on the hand vein network, we also make use of person dependent optical characteristics of the skin and subcutaneous tissue revealed by NIR hand-dorsa images and encode geometrical attributes of their landscapes, e.g., ridges, valleys, etc., through different quantities, such as cornerness and blobness, closely related to differential geometry. Specifically, the proposed method adopts an effective keypoint detection strategy to localize features on dorsal hand images, where the speciality of absorption and scattering of the entire dorsal hand is modeled as a combination of multiple (first-, second-, and third-) order gradients. These features comprehensively describe the discriminative clues of each dorsal hand. This method further robustly associates the corresponding keypoints between gallery and probe samples, and finally predicts the identity. Evaluated by extensive experiments, the proposed method achieves the best performance so far known on the North China University of Technology (NCUT) Part A dataset, showing its effectiveness. Additional results on NCUT Part B illustrate its generalization ability and robustness to low quality data.
Keywords
image matching; vein recognition; Hand-Dorsa vein recognition; NCUT; NIR; North China University of Technology; differential geometry; dorsal hand images; dorsal hand vein; liveness detection; local feature matching; multisource keypoints; near-infrared sensors; optical characteristics; people identification; sparse subcutaneous vascular network; Biomedical optical imaging; Detectors; Feature extraction; Optical imaging; Optical scattering; Skin; Veins; Hand-dorsa vein recognition; multilevel keypoint detection; optical properties of dorsa hand subcutaneous tissue; oriented gradient maps (OGMs);
fLanguage
English
Journal_Title
Cybernetics, IEEE Transactions on
Publisher
ieee
ISSN
2168-2267
Type
jour
DOI
10.1109/TCYB.2014.2360894
Filename
6919302
Link To Document