Title :
A feature-level solution to off-angle iris recognition
Author :
Xingguang Li ; Libin Wang ; Zhenan Sun ; Tieniu Tan
Abstract :
For iris recognition, it is inevitable to encounter a large portion of off-angle iris images in less constrained conditions. This paper proposes a feature-level solution to off-angle iris recognition which is less dependent on iris image preprocessing. Firstly, we use geometric features of corneal reflections and multiclass SVM to classify iris images into five categories (i.e., frontal, right, left, up and down) according to the off-angle orientation of iris region. And then a feature learning method based on linear programming is used to select the most effective ordinal features of each iris category. Finally, the input off-angle iris image is recognized with the specific ordinal feature template belonging to the corresponding iris category. Experimental results on the Clarkson Angle database demonstrate that our feature-level solution significantly outperforms the mainstream methods based on off-angle iris image preprocessing.
Keywords :
geometry; iris recognition; learning (artificial intelligence); linear programming; support vector machines; visual databases; Clarkson angle database; corneal reflections; down categories; feature learning method; feature-level solution; frontal categories; geometric features; image preprocessing; iris region; left categories; linear programming; multiclass SVM; off-angle iris recognition; ordinal feature template; right categories; up categories; Accuracy; Calibration; Feature extraction; Iris; Iris recognition; Shape; Training;
Conference_Titel :
Biometrics (ICB), 2013 International Conference on
Conference_Location :
Madrid
DOI :
10.1109/ICB.2013.6612991