FedMeNF: Privacy-Preserving Federated Meta-Learning for Neural Fields
Yun, Junhyeog, Hong, Minui, Kim, Gunhee
–arXiv.org Artificial Intelligence
Neural fields provide a memory-efficient representation of data, which can effectively handle diverse modalities and large-scale data. However, learning to map neural fields often requires large amounts of training data and computations, which can be limited to resource-constrained edge devices. One approach to tackle this limitation is to leverage Federated Meta-Learning (FML), but traditional FML approaches suffer from privacy leakage. T o address these issues, we introduce a novel FML approach called Fed-MeNF . FedMeNF utilizes a new privacy-preserving loss function that regulates privacy leakage in the local meta-optimization. This enables the local meta-learner to optimize quickly and efficiently without retaining the client's private data. Our experiments demonstrate that FedMeNF achieves fast optimization speed and robust reconstruction performance, even with few-shot or non-IID data across diverse data modalities, while preserving client data privacy.
arXiv.org Artificial Intelligence
Aug-11-2025
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