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Fixed-length Dense Descriptor for Efficient Fingerprint Matching

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In fingerprint matching, fixed-length descriptors generally offer greater efficiency compared to minutiae set, but the recognition accuracy is not as good as that of the latter. Although much progress has been made in deep learning based fixed-length descriptors recently, they often fall short when dealing with incomplete or partial fingerprints, diverse fingerprint poses, and significant background noise. In this paper, we propose a three-dimensional representation called Fixed-length Dense Descriptor (FDD) for efficient fingerprint matching. FDD features great spatial properties, enabling it to capture the spatial relationships of the original fingerprints, thereby enhancing interpretability and robustness. Our experiments on various fingerprint datasets reveal that FDD outperforms other fixed-length descriptors, especially in matching fingerprints of different areas, cross-modal fingerprint matching, and fingerprint matching with background noise.

Zhiyu Pan, Yongjie Duan, Jianjiang Feng, Jie Zhou• 2023

Related benchmarks

TaskDatasetResultRank
Fingerprint MatchingNIST SD4
Rank-1 Accuracy99.75
9
Fingerprint MatchingFVC2004 DB1A
TAR (FAR=0.1%)99.5
9
Fingerprint MatchingNIST SD27
Rank-151.94
9
Fingerprint VerificationNIST SD4 (test)
Template Size (KB)0.416
9
Fingerprint MatchingN2N Plain
Rank-1 Accuracy98.65
9
Fingerprint MatchingFVC2002 DB3A
TAR@FAR=0.1%95.86
9
Fingerprint MatchingFVC DB1A 2006
TAR @ FAR=0.1%89.62
9
Fingerprint MatchingPolyU CL2CB
TAR @ FAR=0.1%88.62
9
Fingerprint MatchingTHU Latent10K
Rank-1 Accuracy82.46
9
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