Print2Volume: Generating Synthetic OCT-based 3D Fingerprint Volume from 2D Fingerprint Image
Qingran Miao, Haixia Wang, Haohao Sun, Yilong Zhang

TL;DR
This paper presents Print2Volume, a framework that generates realistic 3D OCT fingerprint volumes from 2D images to address data scarcity and improve biometric recognition accuracy.
Contribution
Print2Volume introduces a novel three-stage process to synthesize high-quality 3D OCT fingerprint data from 2D images, aiding deep learning applications.
Findings
Generated 420,000 synthetic OCT fingerprint samples.
Pre-training on synthetic data significantly reduces recognition error.
Enhanced recognition performance with synthetic data pre-training.
Abstract
Optical Coherence Tomography (OCT) enables the acquisition of high-resolution, three-dimensional fingerprint data, capturing rich subsurface structures for robust biometric recognition. However, the high cost and time-consuming nature of OCT data acquisition have led to a scarcity of large-scale public datasets, significantly hindering the development of advanced algorithms, particularly data-hungry deep learning models. To address this critical bottleneck, this paper introduces Print2Volume, a novel framework for generating realistic, synthetic OCT-based 3D fingerprints from 2D fingerprint image. Our framework operates in three sequential stages: (1) a 2D style transfer module that converts a binary fingerprint into a grayscale images mimicking the style of a Z-direction mean-projected OCT scan; (2) a 3D Structure Expansion Network that extrapolates the 2D im-age into a plausible 3D…
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Taxonomy
TopicsOptical Coherence Tomography Applications · Biometric Identification and Security · Random lasers and scattering media
