Latent Fingerprint Recognition: Fusion of Local and Global Embeddings
Steven A. Grosz, Anil K. Jain

TL;DR
This paper introduces a fusion of local and global embeddings for latent fingerprint recognition, significantly improving accuracy and speed in matching partial, smudgy prints against large fingerprint databases.
Contribution
It presents a novel multi-stage matching approach combining local and global fingerprint features, enhancing recognition accuracy and reducing latency for latent fingerprint identification.
Findings
Achieved state-of-the-art accuracy on multiple datasets.
Reduced matching latency to 0.068 ms per comparison.
Demonstrated improved authentication across various fingerprint types.
Abstract
One of the most challenging problems in fingerprint recognition continues to be establishing the identity of a suspect associated with partial and smudgy fingerprints left at a crime scene (i.e., latent prints or fingermarks). Despite the success of fixed-length embeddings for rolled and slap fingerprint recognition, the features learned for latent fingerprint matching have mostly been limited to local minutiae-based embeddings and have not directly leveraged global representations for matching. In this paper, we combine global embeddings with local embeddings for state-of-the-art latent to rolled matching accuracy with high throughput. The combination of both local and global representations leads to improved recognition accuracy across NIST SD 27, NIST SD 302, MSP, MOLF DB1/DB4, and MOLF DB2/DB4 latent fingerprint datasets for both closed-set (84.11%, 54.36%, 84.35%, 70.43%, 62.86%…
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Taxonomy
TopicsBiometric Identification and Security · Forensic and Genetic Research · Forensic Fingerprint Detection Methods
