4.8 Article

Speckle-Based Optical Cryptosystem and its Application for Human Face Recognition via Deep Learning

Journal

ADVANCED SCIENCE
Volume 9, Issue 25, Pages -

Publisher

WILEY
DOI: 10.1002/advs.202202407

Keywords

deep learning; face recognition; optical encryption; speckle

Funding

  1. National Natural Science Foundation of China (NSFC) [81930048, 81627805, 81671726]
  2. Guangdong Science and Technology Commission [2019A1515011374, 2019BT02X105]
  3. Hong Kong Research Grant Council [15217721, 25204416, R5029-19]
  4. Hong Kong Innovation and Technology Commission [GHP/043/19SZ, GHP/044/19GD, ITS/022/18]
  5. Shenzhen Science and Technology Innovation Commission [JCYJ20170818104421564]

Ask authors/readers for more resources

A simple and efficient speckle-based optical cryptosystem is proposed and implemented in this study, utilizing physical secret keys of 17.2 gigabit length to encrypt face images at light speed. The system achieves up to 98% accuracy in face recognition and is suitable for practical applications due to its high security, fast speed, and low cost.
Face recognition has become ubiquitous for authentication or security purposes. Meanwhile, there are increasing concerns about the privacy of face images, which are sensitive biometric data and should be protected. Software-based cryptosystems are widely adopted to encrypt face images, but the security level is limited by insufficient digital secret key length or computing power. Hardware-based optical cryptosystems can generate enormously longer secret keys and enable encryption at light speed, but most reported optical methods, such as double random phase encryption, are less compatible with other systems due to system complexity. In this study, a plain yet highly efficient speckle-based optical cryptosystem is proposed and implemented. A scattering ground glass is exploited to generate physical secret keys of 17.2 gigabit length and encrypt face images via seemingly random optical speckles at light speed. Face images can then be decrypted from random speckles by a well-trained decryption neural network, such that face recognition can be realized with up to 98% accuracy. Furthermore, attack analyses are carried out to show the cryptosystem's security. Due to its high security, fast speed, and low cost, the speckle-based optical cryptosystem is suitable for practical applications and can inspire other high-security cryptosystems.

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