학술논문

Two Stream Convolutional Neural Network for Full Field Optical Coherence Tomography Fingerprint Recognition
Document Type
Conference
Source
2019 22th International Conference on Information Fusion (FUSION) Information Fusion (FUSION), 2019 22th International Conference on. :1-4 Jul, 2019
Subject
Aerospace
Bioengineering
Communication, Networking and Broadcast Technologies
Computing and Processing
General Topics for Engineers
Robotics and Control Systems
Signal Processing and Analysis
Transportation
Databases
Error analysis
Optical coherence tomography
Image matching
Imaging
Fingerprint recognition
Streaming media
Language
Abstract
Full-Field Optical Coherence Tomography (FF-OCT) for fingerprint imaging has been recently explored to counter presentation attacks (previously referred as spoofing attacks). The ability to acquire discriminant information under the surface of the external fingerprint can not only detect such attacks, but also provide supplementary information to make fingerprint recognition superior. In this work, we present a new approach for robust fingerprint recognition by learning deep representation by employing multiple subsurface fingerprints. Specifically, we design a new Two Stream - Convolutional Neural Network (TS-CNN) to employ internal fingerprint images captured at 6 different depths. Further, to accelerate the learning of the features, we transfer the weights of the AlexNet for each stream. With a semi-public in-house FF-OCT database of 200 unique fingerprints, we demonstrate the applicability of the proposed approach by achieving 0.17% Equal Error Rate (EER). While the proposed TS-CNN is trained and fine-tuned on a development subset of fingerprints from FF-OCT fingerprint image database, the final results are reported on the disjoint testing set of fingerprints from the same dataset.