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Auteurs principaux: Ilic, Filip, Zhao, He, Pock, Thomas, Wildes, Richard P.
Format: Preprint
Publié: 2024
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Accès en ligne:https://arxiv.org/abs/2403.12710
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author Ilic, Filip
Zhao, He
Pock, Thomas
Wildes, Richard P.
author_facet Ilic, Filip
Zhao, He
Pock, Thomas
Wildes, Richard P.
contents Concerns for the privacy of individuals captured in public imagery have led to privacy-preserving action recognition. Existing approaches often suffer from issues arising through obfuscation being applied globally and a lack of interpretability. Global obfuscation hides privacy sensitive regions, but also contextual regions important for action recognition. Lack of interpretability erodes trust in these new technologies. We highlight the limitations of current paradigms and propose a solution: Human selected privacy templates that yield interpretability by design, an obfuscation scheme that selectively hides attributes and also induces temporal consistency, which is important in action recognition. Our approach is architecture agnostic and directly modifies input imagery, while existing approaches generally require architecture training. Our approach offers more flexibility, as no retraining is required, and outperforms alternatives on three widely used datasets.
format Preprint
id arxiv_https___arxiv_org_abs_2403_12710
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Selective, Interpretable, and Motion Consistent Privacy Attribute Obfuscation for Action Recognition
Ilic, Filip
Zhao, He
Pock, Thomas
Wildes, Richard P.
Computer Vision and Pattern Recognition
Machine Learning
Concerns for the privacy of individuals captured in public imagery have led to privacy-preserving action recognition. Existing approaches often suffer from issues arising through obfuscation being applied globally and a lack of interpretability. Global obfuscation hides privacy sensitive regions, but also contextual regions important for action recognition. Lack of interpretability erodes trust in these new technologies. We highlight the limitations of current paradigms and propose a solution: Human selected privacy templates that yield interpretability by design, an obfuscation scheme that selectively hides attributes and also induces temporal consistency, which is important in action recognition. Our approach is architecture agnostic and directly modifies input imagery, while existing approaches generally require architecture training. Our approach offers more flexibility, as no retraining is required, and outperforms alternatives on three widely used datasets.
title Selective, Interpretable, and Motion Consistent Privacy Attribute Obfuscation for Action Recognition
topic Computer Vision and Pattern Recognition
Machine Learning
url https://arxiv.org/abs/2403.12710