상세 보기
- Wang, Xin;
- Lv, Jianhui;
- Kim, Byung-Gyu;
- Maple, Carsten;
- Parameshachari, B.D.;
- 외 2명
WEB OF SCIENCE
5SCOPUS
6초록
The proliferation of multimedia-enabled IoT devices and edge computing enables a new class of data-intensive applications. However, analyzing the massive volumes of multimedia data presents significant privacy challenges. We propose a novel framework called generative adversarial privacy (GAP) that leverages generative adversarial networks (GANs) to synthesize privacy-preserving surrogate data for multimedia analytics across the IoT-Edge continuum. GAP carefully perturbs the GAN's training process to provide rigorous differential privacy guarantees without compromising utility. Moreover, we present optimization strategies, including dynamic privacy budget allocation, adaptive gradient clipping, and weight clustering to improve convergence and data quality under a constrained privacy budget. Theoretical analysis proves that GAP provides rigorous privacy protections while enabling high-fidelity analytics. Extensive experiments on real-world multimedia datasets demonstrate that GAP outperforms existing methods, producing high-quality synthetic data for privacy-preserving multimedia processing in diverse IoT-Edge applications. © 2013 IEEE.
키워드
- 제목
- Generative Adversarial Privacy for Multimedia Analytics Across the IoT-Edge Continuum
- 저자
- Wang, Xin; Lv, Jianhui; Kim, Byung-Gyu; Maple, Carsten; Parameshachari, B.D.; Slowik, Adam; Li, Keqin
- 발행일
- 2024-10
- 유형
- Article
- 권
- 12
- 호
- 4
- 페이지
- 1260 ~ 1272