Adversarial Machine Learning for Emotional Privacy
thesis
posted on 2025-02-08, 02:38authored byYIN YIN LOW
This thesis explores leveraging adversarial machine learning to safeguard emotional privacy in the era of pervasive social media. It proposes a method that introduces subtle modifications, or “adversarial perturbations,” to video-based emotion recognition, making emotions more difficult to detect while preserving natural content. The study examines the applicability of these techniques across multimodal systems combining text, images, and video. A novel architecture for universal adversarial attacks is presented, with evaluations demonstrating its effectiveness in maintaining privacy, robustness, and transferability. This study emphasizes the potential of machine learning in responsibly safeguarding privacy in real-world affective computing applications.
History
Campus location
Malaysia
Principal supervisor
Raphael Phan
Additional supervisor 1
Arghya Pal
Additional supervisor 2
XiaoJun Chang
Year of Award
2025
Department, School or Centre
School of Information Technology (Monash University Malaysia)