Title :
On orientation and anisotropy estimation for online fingerprint authentication
Author_Institution :
Sch. of Electr. & Electron. Eng., Nanyang Technol. Univ., Singapore, Singapore
Abstract :
Local dominant orientation estimation is one of the most important operations in almost all automatic fingerprint authentication systems. Robust orientation and anisotropy estimation improves the system´s reliability in handling low-quality fingerprints, which is crucial for the system´s massive application such as securing multimedia. This paper analyzes the robustness of the orientation and anisotropy estimation methods and the effect of the modulus normalization on the estimation performance. A two-stage averaging framework with block-wise modulus handling is introduced to inherit the merits of the both linear and normalized averaging methods. We further propose to set the modulus of an orientation vector to be its anisotropy estimate instead of unity so that the orientation inconsistency of gradients is included in the second stage of averaging. These two measures improve the robustness of the fingerprint local dominant orientation estimation and lead to an anisotropy estimate that reflects the characteristics of fingerprint more effectively. In addition, the proposed approach is computationally efficient for online fingerprint authentication. Extensive experiments using both synthetic images and real fingerprints verify the feasibility of the proposed approach and demonstrate its robustness to noise and low-quality fingerprints.
Keywords :
authorisation; feature extraction; fingerprint identification; gradient methods; anisotropy estimation; automatic fingerprint authentication system; biometrics; block-wise modulus handling; feature extraction; gradient method; local dominant orientation estimation; normalized averaging method; pattern recognition; Anisotropic magnetoresistance; Authentication; Biometrics; Feature extraction; Fingerprint recognition; Fingers; Image texture analysis; Multimedia systems; Noise robustness; Protection; Anisotropy estimation; biometrics; dominant orientation estimation; feature extraction; fingerprint authentication; gradient; image analysis; noise robustness; orientation vector; pattern recognition;
Journal_Title :
Signal Processing, IEEE Transactions on
DOI :
10.1109/TSP.2005.855417