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From Pixels to Privacy: Temporally Consistent Video Anonymization via Token Pruning for Privacy Preserving Action Recognition

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Recent advances in large-scale video models have significantly improved video understanding across domains such as surveillance, healthcare, and entertainment. However, these models also amplify privacy risks by encoding sensitive attributes, including facial identity, race, and gender. While image anonymization has been extensively studied, video anonymization remains relatively underexplored, even though modern video models can leverage spatiotemporal motion patterns as biometric identifiers. To address this challenge, we propose a novel attention-driven spatiotemporal video anonymization framework based on systematic disentanglement of utility and privacy features. Our key insight is that attention mechanisms in Vision Transformers (ViTs) can be explicitly structured to separate action-relevant information from privacy-sensitive content. Building on this insight, we introduce two task-specific classification tokens, an action CLS token and a privacy CLS token, that learn complementary representations within a shared Transformer backbone. We contrast their attention distributions to compute a utility-privacy score for each spatiotemporal tubelet, and keep the top-k tubelets with the highest scores. This selectively prunes tubelets dominated by privacy cues while preserving those most critical for action recognition. Extensive experiments demonstrate that our approach maintains action recognition performance comparable to models trained on raw videos, while substantially reducing privacy leakage. These results indicate that attention-driven spatiotemporal pruning offers an effective and principled solution for privacy-preserving video analytics.

Nazia Aslam, Abhisek Ray, Joakim Bruslund Haurum, Lukas Esterle, Kamal Nasrollahi• 2026

Related benchmarks

TaskDatasetResultRank
Privacy Attribute RecognitionVPHMDB
cMAP70.32
20
Action RecognitionPA-HMDB
Top-1 Accuracy62.58
19
Privacy Attribute RecognitionPAHMDB
cMAP65.92
10
Privacy RecognitionVPHMDB -> VPUCF transfer
cMAP59.3
10
Action RecognitionVPHMDB
Top-1 Accuracy79.59
9
Action RecognitionVPUCF
Top-1 Accuracy80.96
9
Privacy Attribute RecognitionVPUCF
cMAP60.3
9
Action RecognitionVPHMDB Novel Actions trained on VPUCF
Top-1 Acc79.83
8
Privacy ProtectionVPUCF Novel Private Attributes split trained on VPHMDB
cMAP69.81
5
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