Residual orientation modeling for fingerprint enhancement and singular point detection
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摘要
This paper presents a novel method for fingerprint orientation modeling, which executes in two phases. Firstly, the orientation field is reconstructed using a lower order Legendre polynomial to capture the global orientation pattern in the fingerprint structure. Then the preliminary model around the region with presence of fingerprint singularities is dynamically refined using a higher order Legendre polynomial. The singular region is automatically detected through the analysis on the orientation residual field between the original orientation field and the orientation model. The method does not require any prior knowledge on the fingerprint structure. To validate the performance, the method has been applied to fingerprint image enhancement, fingerprint singularity detection and fingerprint recognition using the FVC 2004 data sets. Compared with the recently published Legendre polynomial model, the proposed method attains higher accuracy in fingerprint singularity detection, lower error rates in fingerprint matching.
论文关键词:Fingerprint recognition,Orientation modeling,Residual analysis,Singularity,Singular region,Low quality region
论文评审过程:Received 20 January 2010, Revised 26 May 2010, Accepted 15 August 2010, Available online 18 August 2010.
论文官网地址:https://doi.org/10.1016/j.patcog.2010.08.019