Privacy-Preserving Adaptive Re-Identification without Image Transfer
Hamza Rami, Jhony H. Giraldo, Nicolas Winckler, St\'ephane, Lathuili\`ere

TL;DR
This paper introduces Fed-Protoid, a privacy-preserving, distributed unsupervised domain adaptation method for person re-identification that operates entirely on edge devices, enhancing accuracy and efficiency without sharing images.
Contribution
The paper proposes Fed-Protoid, a novel edge-based Re-ID adaptation approach using prototypes and distributed MMD loss, addressing privacy and domain shift challenges.
Findings
Fed-Protoid outperforms existing methods in accuracy.
It reduces communication costs significantly.
Maintains data privacy effectively.
Abstract
Re-Identification systems (Re-ID) are crucial for public safety but face the challenge of having to adapt to environments that differ from their training distribution. Furthermore, rigorous privacy protocols in public places are being enforced as apprehensions regarding individual freedom rise, adding layers of complexity to the deployment of accurate Re-ID systems in new environments. For example, in the European Union, the principles of ``Data Minimization'' and ``Purpose Limitation'' restrict the retention and processing of images to what is strictly necessary. These regulations pose a challenge to the conventional Re-ID training schemes that rely on centralizing data on servers. In this work, we present a novel setting for privacy-preserving Distributed Unsupervised Domain Adaptation for person Re-ID (DUDA-Rid) to address the problem of domain shift without requiring any image…
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Taxonomy
TopicsVideo Surveillance and Tracking Methods · Face recognition and analysis · Privacy-Preserving Technologies in Data
MethodsALIGN
