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Main Authors: Chen, Chen, Sun, Mengyuan, Gong, Xueluan, Chen, Yanjiao, Wang, Qian
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2501.08665
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author Chen, Chen
Sun, Mengyuan
Gong, Xueluan
Chen, Yanjiao
Wang, Qian
author_facet Chen, Chen
Sun, Mengyuan
Gong, Xueluan
Chen, Yanjiao
Wang, Qian
contents Facial recognition models are increasingly employed by commercial enterprises, government agencies, and cloud service providers for identity verification, consumer services, and surveillance. These models are often trained using vast amounts of facial data processed and stored in cloud-based platforms, raising significant privacy concerns. Users' facial images may be exploited without their consent, leading to potential data breaches and misuse. This survey presents a comprehensive review of current methods aimed at preserving facial image privacy in cloud-based services. We categorize these methods into two primary approaches: image obfuscation-based protection and adversarial perturbation-based protection. We provide an in-depth analysis of both categories, offering qualitative and quantitative comparisons of their effectiveness. Additionally, we highlight unresolved challenges and propose future research directions to improve privacy preservation in cloud computing environments.
format Preprint
id arxiv_https___arxiv_org_abs_2501_08665
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle A Survey on Facial Image Privacy Preservation in Cloud-Based Services
Chen, Chen
Sun, Mengyuan
Gong, Xueluan
Chen, Yanjiao
Wang, Qian
Computer Vision and Pattern Recognition
Facial recognition models are increasingly employed by commercial enterprises, government agencies, and cloud service providers for identity verification, consumer services, and surveillance. These models are often trained using vast amounts of facial data processed and stored in cloud-based platforms, raising significant privacy concerns. Users' facial images may be exploited without their consent, leading to potential data breaches and misuse. This survey presents a comprehensive review of current methods aimed at preserving facial image privacy in cloud-based services. We categorize these methods into two primary approaches: image obfuscation-based protection and adversarial perturbation-based protection. We provide an in-depth analysis of both categories, offering qualitative and quantitative comparisons of their effectiveness. Additionally, we highlight unresolved challenges and propose future research directions to improve privacy preservation in cloud computing environments.
title A Survey on Facial Image Privacy Preservation in Cloud-Based Services
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2501.08665