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Privacy Preserving Face Recognition in Cloud Robotics: A Comparative Study

Karri Chiranjeevi, Omar Cheikhrouhou, Ahmed Harbaoui, Atef Zaguia, Habib Hamam

Year
2021
Citations
12
Access
Open access

Abstract

Real-time robotic applications encounter the robot on board resources’ limitations. The speed of robot face recognition can be improved by incorporating cloud technology. However, the transmission of data to the cloud servers exposes the data to security and privacy attacks. Therefore, encryption algorithms need to be set up. This paper aims to study the security and performance of potential encryption algorithms and their impact on the deep-learning-based face recognition task’s accuracy. To this end, experiments are conducted for robot face recognition through various deep learning algorithms after encrypting the images of the ORL database using cryptography and image-processing based algorithms.

Keywords

Computer scienceCloud computingFacial recognition systemEncryptionArtificial intelligenceRobotCryptographyRoboticsServerTask (project management)

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