Fast subsurface fingerprint imaging with full-field optical coherence tomography system equipped with a silicon camera

Images recorded below the surface of a finger can have more details and be of higher quality than the conventional surface fingerprint images. This is particularly true when the quality of the surface fingerprints is compromised by, for example, moisture or surface damage. However, there is an unmet...

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Bibliographic Details
Published in:Journal of biomedical optics Vol. 22; no. 9; p. 096002
Main Authors: Auksorius, Egidijus, Boccara, A. Claude
Format: Journal Article
Language:English
Published: United States Society of Photo-Optical Instrumentation Engineers 01-09-2017
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Summary:Images recorded below the surface of a finger can have more details and be of higher quality than the conventional surface fingerprint images. This is particularly true when the quality of the surface fingerprints is compromised by, for example, moisture or surface damage. However, there is an unmet need for an inexpensive fingerprint sensor that is able to acquire high-quality images deep below the surface in short time. To this end, we report on a cost-effective full-field optical coherent tomography system comprised of a silicon camera and a powerful near-infrared LED light source. The system, for example, is able to record 1.7  cm×1.7  cm en face images in 0.12 s with the spatial sampling rate of 2116 dots per inch and the sensitivity of 93 dB. We show that the system can be used to image internal fingerprints and sweat ducts with good contrast. Finally, to demonstrate its biometric performance, we acquired subsurface fingerprint images from 240 individual fingers and estimated the equal-error-rate to be ∼0.8%. The developed instrument could also be used in other en face deep-tissue imaging applications because of its high sensitivity, such as in vivo skin imaging.
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ISSN:1083-3668
1560-2281
DOI:10.1117/1.JBO.22.9.096002