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Learnable Privacy-Preserving Anonymization for Pedestrian Images

Junwu Zhang, Mang Ye, Yaowen Yang

2022Proceedings of the 30th ACM International Conference on Multimedia18 citationsDOIOpen Access PDF

Abstract

This paper studies a novel privacy-preserving anonymization problem for pedestrian images, which preserves personal identity information (PII) for authorized models and prevents PII from being recognized by third parties. Conventional anonymization methods unavoidably cause semantic information loss, leading to limited data utility. Besides, existing learned anonymization techniques, while retaining various identity-irrelevant utilities, will change the pedestrian identity, and thus are unsuitable for training robust re-identification models. To explore the privacy-utility trade-off for pedestrian images, we propose a joint learning reversible anonymization framework, which can reversibly generate full-body anonymous images with little performance drop on person re-identification tasks. The core idea is that we adopt desensitized images generated by conventional methods as the initial privacy-preserving supervision and jointly train an anonymization encoder with a recovery decoder and an identity-invariant model. We further propose a progressive training strategy to improve the performance, which iteratively upgrades the initial anonymization supervision. Experiments further demonstrate the effectiveness of our anonymized pedestrian images for privacy protection, which boosts the re-identification performance while preserving privacy. Code is available at https://github.com/whuzjw/privacy-reid.

Topics & Concepts

Computer sciencePedestrianEncoderIdentity (music)Identification (biology)Data anonymizationInformation privacyPedestrian detectionComputer securityData miningArtificial intelligenceOperating systemEngineeringBiologyPhysicsAcousticsBotanyTransport engineeringFace recognition and analysisPrivacy-Preserving Technologies in DataAdvanced Neural Network Applications
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