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Main Authors: Li, Yijiang, Zhang, Genpei, Cheng, Jiacheng, Li, Yi, Shan, Xiaojun, Gao, Dashan, Lyu, Jiancheng, Li, Yuan, Bi, Ning, Vasconcelos, Nuno
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2506.12258
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author Li, Yijiang
Zhang, Genpei
Cheng, Jiacheng
Li, Yi
Shan, Xiaojun
Gao, Dashan
Lyu, Jiancheng
Li, Yuan
Bi, Ning
Vasconcelos, Nuno
author_facet Li, Yijiang
Zhang, Genpei
Cheng, Jiacheng
Li, Yi
Shan, Xiaojun
Gao, Dashan
Lyu, Jiancheng
Li, Yuan
Bi, Ning
Vasconcelos, Nuno
contents While the rapid proliferation of wearable cameras has raised significant concerns about egocentric video privacy, prior work has largely overlooked the unique privacy threats posed to the camera wearer. This work investigates the core question: How much privacy information about the camera wearer can be inferred from their first-person view videos? We introduce EgoPrivacy, the first large-scale benchmark for the comprehensive evaluation of privacy risks in egocentric vision. EgoPrivacy covers three types of privacy (demographic, individual, and situational), defining seven tasks that aim to recover private information ranging from fine-grained (e.g., wearer's identity) to coarse-grained (e.g., age group). To further emphasize the privacy threats inherent to egocentric vision, we propose Retrieval-Augmented Attack, a novel attack strategy that leverages ego-to-exo retrieval from an external pool of exocentric videos to boost the effectiveness of demographic privacy attacks. An extensive comparison of the different attacks possible under all threat models is presented, showing that private information of the wearer is highly susceptible to leakage. For instance, our findings indicate that foundation models can effectively compromise wearer privacy even in zero-shot settings by recovering attributes such as identity, scene, gender, and race with 70-80% accuracy. Our code and data are available at https://github.com/williamium3000/ego-privacy.
format Preprint
id arxiv_https___arxiv_org_abs_2506_12258
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle EgoPrivacy: What Your First-Person Camera Says About You?
Li, Yijiang
Zhang, Genpei
Cheng, Jiacheng
Li, Yi
Shan, Xiaojun
Gao, Dashan
Lyu, Jiancheng
Li, Yuan
Bi, Ning
Vasconcelos, Nuno
Computer Vision and Pattern Recognition
Computers and Society
While the rapid proliferation of wearable cameras has raised significant concerns about egocentric video privacy, prior work has largely overlooked the unique privacy threats posed to the camera wearer. This work investigates the core question: How much privacy information about the camera wearer can be inferred from their first-person view videos? We introduce EgoPrivacy, the first large-scale benchmark for the comprehensive evaluation of privacy risks in egocentric vision. EgoPrivacy covers three types of privacy (demographic, individual, and situational), defining seven tasks that aim to recover private information ranging from fine-grained (e.g., wearer's identity) to coarse-grained (e.g., age group). To further emphasize the privacy threats inherent to egocentric vision, we propose Retrieval-Augmented Attack, a novel attack strategy that leverages ego-to-exo retrieval from an external pool of exocentric videos to boost the effectiveness of demographic privacy attacks. An extensive comparison of the different attacks possible under all threat models is presented, showing that private information of the wearer is highly susceptible to leakage. For instance, our findings indicate that foundation models can effectively compromise wearer privacy even in zero-shot settings by recovering attributes such as identity, scene, gender, and race with 70-80% accuracy. Our code and data are available at https://github.com/williamium3000/ego-privacy.
title EgoPrivacy: What Your First-Person Camera Says About You?
topic Computer Vision and Pattern Recognition
Computers and Society
url https://arxiv.org/abs/2506.12258