Title :
Hand dorsal vein recognition: Sensor, algorithms and evaluation
Author :
R. Raghavendra;Jayachander Surbiryala;Christoph Busch
Author_Institution :
Norwegian Biometric Laboratory, Gj⊘
Abstract :
Biometric recognition involves in identifying the individual based on behavioural and biological characteristics. Among the various biometric modalities, the dorsal hand vein recognition has been known for high accuracy, stability and resistance to spoofing. The crucial fact, in achieving an accurate biometric recognition strongly correlates with the quality of the dorsal hand vein image that can be captured in real-life scenarios. In this paper, we present a new dorsal hand vein sensor that can capture a good quality of dorsal hand vein images. The introduced sensor is based on a near infrared illumination that can emit light in a spectrum of 940nm that in turn is used to illuminate the dorsal hand region. The presented sensor employs a single camera with a simple structure that will further improve the quality of the light to properly illuminate the dorsal hand region. Extensive experiments are carried out on our newly collected database comprised of 50 subjects resulting in 100 unique dorsal hand veins. We also present an extensive evaluation of eight different state-of-the-art techniques that demonstrated the outstanding performance of the Log-Gabor and Sparse Representation Classifier (SRC) with an EER of 0.7%.
Keywords :
"Veins","Feature extraction","Databases","Cameras","Lighting","Magnetic resonance","Pattern recognition"
Conference_Titel :
Imaging Systems and Techniques (IST), 2015 IEEE International Conference on
DOI :
10.1109/IST.2015.7294557