A systematic method for fingerprint ridge orientation estimation and image segmentation

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摘要

This paper proposes a scheme for systematically estimating fingerprint ridge orientation and segmenting fingerprint image by means of evaluating the correctness of the ridge orientation based on neural network. The neural network is used to learn the correctness of the estimated orientation by gradient-based method. The trained network is able to distinguish correct and incorrect ridge orientations, and as a consequence, the falsely estimated ridge orientation of a local image block can be corrected using the around blocks of which orientations are correctly estimated. A coarse segmentation can also be done based on the trained neural network by taking the blocks of correctly estimated orientation as foreground and the blocks of incorrectly estimated orientation as background. Besides, following the steps of estimating ridge orientation correctness, a secondary segmentation method is proposed to segment the remaining ridges which are the afterimage of the previously scanned fingers. The proposed scheme serves for minutiae detection and is compared with VeriFinger 4.2 published by Neurotechnologija Ltd. in 2004, and the comparison shows that the proposed scheme leads to an improved accuracy of minutiae detection.

论文关键词:Ridge orientation,Neural network,Fingerprint segmentation,Remaining ridges,Secondary segmentation,Segmentation revision,Minutiae detection

论文评审过程:Received 16 June 2005, Revised 25 February 2006, Accepted 1 March 2006, Available online 18 April 2006.

论文官网地址:https://doi.org/10.1016/j.patcog.2006.03.001