Predict and improve iris recognition performance based on pairwise image quality assessment

The iris recognition performance is partially dependent on the relative quality variations of pairwise iris images. So bridging the gap between the quality and the matching score of pairwise iris images is helpful to predict and improve iris recognition performance. This paper formulates the relationship between matching score and quality of pairwise iris images as a statistical regression problem. Firstly, a number of quality measures of iris images such as focus, motion blur, illumination, off-angle, occlusions and dilation are computed as the performance related feature vector of iris images. And then partial least squares regression is used to establish two models to predict the intra score and inter score from pairwise iris image quality respectively. Finally, we define the uncertainty interval of matching scores. The uncertain match pairs are discarded to improve the recognition performance. Extensive experiments on ICE 1.0, CASIA-Iris-Lamp and CASIA-Iris-Thousand demonstrate that the proposed method can accurately estimate the distributions of matching scores. It can simultaneously improve the performance, even using simple features in recognition.

[1]  Natalia A. Schmid,et al.  Adaptive biometric authentication using nonlinear mappings on quality measures and verification scores , 2010, 2010 IEEE International Conference on Image Processing.

[2]  Aaron F. Bobick,et al.  Predicting Large Population Data Cumulative Match Characteristic Performance from Small Population Data , 2003, AVBPA.

[3]  Rong Wang,et al.  Predicting fingerprint biometrics performance from a small gallery , 2007, Pattern Recognit. Lett..

[4]  Qiang Ji,et al.  Modeling and Predicting Face Recognition System Performance Based on Analysis of Similarity Scores , 2007, IEEE Transactions on Pattern Analysis and Machine Intelligence.

[5]  Tieniu Tan,et al.  Comprehensive assessment of iris image quality , 2011, 2011 18th IEEE International Conference on Image Processing.

[6]  Patrick J. Flynn,et al.  Predicting performance of face recognition systems: An image characterization approach , 2011, CVPR 2011 WORKSHOPS.

[7]  A. Höskuldsson PLS regression methods , 1988 .

[8]  Tieniu Tan,et al.  Ordinal Measures for Iris Recognition , 2009, IEEE Transactions on Pattern Analysis and Machine Intelligence.

[9]  Kang Ryoung Park,et al.  New focus assessment method for iris recognition systems , 2008, Pattern Recognit. Lett..

[10]  S. D. Jong SIMPLS: an alternative approach to partial least squares regression , 1993 .

[11]  Tieniu Tan,et al.  Robust and Fast Assessment of Iris Image Quality , 2006, ICB.

[12]  Tieniu Tan,et al.  Toward Accurate and Fast Iris Segmentation for Iris Biometrics , 2009, IEEE Transactions on Pattern Analysis and Machine Intelligence.

[13]  John Daugman,et al.  How iris recognition works , 2002, IEEE Transactions on Circuits and Systems for Video Technology.

[14]  Natalia A. Schmid,et al.  Estimating and Fusing Quality Factors for Iris Biometric Images , 2010, IEEE Transactions on Systems, Man, and Cybernetics - Part A: Systems and Humans.

[15]  Aaron F. Bobick,et al.  Using similarity scores from a small gallery to estimate recognition performance for larger galleries , 2003, 2003 IEEE International SOI Conference. Proceedings (Cat. No.03CH37443).