Learning fingerprint minutiae location and type

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摘要

For simplicity of pattern recognition system design, a sequential approach consisting of sensing, feature extraction and classification/matching is conventionally adopted, where each stage transforms its input relatively independently. In practice, the interaction between these modules is limited. Some of the errors in this end-to-end sequential processing can be eliminated, especially for the feature extraction stage, by revisiting the input pattern. We propose a feedforward of the original grayscale image data to a feature (minutiae) verification stage in the context of a minutiae-based fingerprint verification system. This minutiae verification stage is based on reexamining the grayscale profile in a detected minutia's spatial neighborhood in the sensed image. We also show that a feature refinement (minutiae classification) stage that assigns one of two class labels to each detected minutia (ridge ending and ridge bifurcation) can improve the matching accuracy by ∼1% and when combined with the proposed minutiae verification stage, the matching accuracy can be improved by ∼3.2% on our fingerprint database.

论文关键词:Fingerprint matching,Feature extraction,Feedforward,Minutia verification,Minutia classification,Gabor filters,Learning vector quantization

论文评审过程:Received 8 March 2002, Revised 2 October 2002, Accepted 2 October 2002, Available online 15 February 2003.

论文官网地址:https://doi.org/10.1016/S0031-3203(02)00322-9