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FingerNet: An Unified Deep Network for Fingerprint Minutiae Extraction

About

Minutiae extraction is of critical importance in automated fingerprint recognition. Previous works on rolled/slap fingerprints failed on latent fingerprints due to noisy ridge patterns and complex background noises. In this paper, we propose a new way to design deep convolutional network combining domain knowledge and the representation ability of deep learning. In terms of orientation estimation, segmentation, enhancement and minutiae extraction, several typical traditional methods performed well on rolled/slap fingerprints are transformed into convolutional manners and integrated as an unified plain network. We demonstrate that this pipeline is equivalent to a shallow network with fixed weights. The network is then expanded to enhance its representation ability and the weights are released to learn complex background variance from data, while preserving end-to-end differentiability. Experimental results on NIST SD27 latent database and FVC 2004 slap database demonstrate that the proposed algorithm outperforms the state-of-the-art minutiae extraction algorithms. Code is made publicly available at: https://github.com/felixTY/FingerNet.

Yao Tang, Fei Gao, Jufu Feng, Yuhang Liu• 2017

Related benchmarks

TaskDatasetResultRank
Minutiae ExtractionNIST SD27 (test)
F1 Score67
51
Minutiae ExtractionFVC DB1-A 2002 (test)
F1-score87
51
Minutiae ExtractionNIST SD27
Processing Time (ms)600
15
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