Biblio

Filters: Author is Liu, Shilei  [Clear All Filters]
2019-04-29
Liu, Shilei, Xu, Guoxiong, Zhang, Yi, Li, Wenxin.  2018.  A Study of Temporal Stability on Finger-Vein Recognition Accuracy Using a Steady-State Model. Proceedings of the 2018 10th International Conference on Bioinformatics and Biomedical Technology. :7–12.
Stability has been one of the most fundamental premises in biometric recognition field. In the last few years, a few achievements have been made on proving this theoretical premises concerning fingerprints, palm prints, iris, face, etc. However, none of related academic results have been published on finger-vein recognition so far. In this paper, we try to study on the stability of finger-vein within a designed timespan (four years). In order to achieve this goal, a proper database for stability was collected with all external influences of finger-vein features (acquiring hardware, user behavior and circumstance situation) eliminated. Then, for the first time, we proposed a steady-state model of finger-vein features indicating that each specific finger owns a stable steady-state which all its finger-vein images would properly converging to, regardless of time. Experiments have been conducted on our 5-year/200,000-finger data set. And results from both genuine match and imposter match demonstrate that the model is well supported. This steady-state model is generic, hence providing a common method on how to evaluate the stability of other types of biometric features.