Abstract
Face recognition plays an essential role for the biometric
authentication. Conventional lens-based imagery keeps the spatial
fidelity with respect to the object, thus, leading to the privacy
concerns. Based on the point spread function engineering, we employed
a coded mask as the encryption scheme, which allows a readily
noninterpretable representation on the sensor. A deep neural network
computation was used to extract the features and further conduct the
identification. The advantage of this data-driven approach lies in
that it is neither necessary to correct the lens aberration nor
revealing any facial conformity amid the image formation chain. To
validate the proposed framework, we generated a dataset with practical
photographing and data augmentation by a set of experimental
parameters. The system has the capability to adapt a wide depth of
field (DoF) (60-cm hyperfocal distance) and pose variation (0 to
45 deg). The 100% recognition accuracy on real-time measurement was
achieved without the necessity of any physics priors, such as the
encryption scheme.
Funder
Ministry of Science and Technology,
Taiwan
Southern Taiwan Science
Park
Subject
Atomic and Molecular Physics, and Optics,Engineering (miscellaneous),Electrical and Electronic Engineering
Cited by
3 articles.
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