Federated Self-Supervised Few-Shot Face Recognition
Makhanov N. Amirgaliyev B. Islamgozhayev T. Yedilkhan D.
October 2025Multidisciplinary Digital Publishing Institute (MDPI)
Journal of Imaging
2025#11Issue 10
This paper presents a systematic framework that combines federated learning, self-supervised learning, and few-shot learning paradigms for privacy-preserving face recognition. We use the large-scale CASIA-WebFace dataset for self-supervised pre-training using SimCLR in a federated setting, followed by federated few-shot fine-tuning on the LFW dataset using prototypical networks. Through comprehensive evaluation across six state-of-the-art architectures (ResNet, DenseNet, MobileViT, ViT-Small, CvT, and CoAtNet), we demonstrate that while our federated approach successfully preserves data privacy, it comes with significant performance trade-offs. Our results show 12–30% accuracy degradation compared to centralized methods, representing the substantial cost of privacy preservation. We find that traditional CNNs show superior robustness to federated constraints compared to transformer-based architectures, and that five-shot configurations provide an optimal balance between data efficiency and performance. This work provides important empirical insights and establishes benchmarks for federated few-shot face recognition, quantifying the privacy–utility trade-offs that practitioners must consider when deploying such systems in real-world applications.
face recognition , federated learning , few-shot learning , privacy-preserving machine learning , self-supervised learning
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Smart City Research Center, Astana IT University, Astana, 010000, Kazakhstan
Smart City Research Center
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