Distributed incremental fingerprint identification with reduced database penetration rate using a hierarchical classification based on feature fusion and selection

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摘要

Fingerprint recognition has been a hot research topic along the last few decades, with many applications and ever growing populations to identify. The need of flexible, fast identification systems is therefore patent in such situations. In this context, fingerprint classification is commonly used to improve the speed of the identification. This paper proposes a complete identification system with a hierarchical classification framework that fuses the information of multiple feature extractors. A feature selection is applied to improve the classification accuracy. Finally, the distributed identification is carried out with an incremental search, exploring the classes according to the probability order given by the classifier. A single parameter tunes the trade-off between identification time and accuracy. The proposal is evaluated over two NIST databases and a large synthetic database, yielding penetration rates close to the optimal values that can be reached with classification, leading to low identification times with small or no accuracy loss.

论文关键词:Fingerprint recognition,Fingerprint identification,Fingerprint classification,Large databases,Feature selection,Hierarchical classification

论文评审过程:Received 21 September 2016, Revised 16 March 2017, Accepted 18 March 2017, Available online 22 March 2017, Version of Record 2 May 2017.

论文官网地址:https://doi.org/10.1016/j.knosys.2017.03.014