English

GI-PIP: Do We Require Impractical Auxiliary Dataset for Gradient Inversion Attacks?

Cryptography and Security 2024-04-02 v3 Artificial Intelligence Machine Learning

Abstract

Deep gradient inversion attacks expose a serious threat to Federated Learning (FL) by accurately recovering private data from shared gradients. However, the state-of-the-art heavily relies on impractical assumptions to access excessive auxiliary data, which violates the basic data partitioning principle of FL. In this paper, a novel method, Gradient Inversion Attack using Practical Image Prior (GI-PIP), is proposed under a revised threat model. GI-PIP exploits anomaly detection models to capture the underlying distribution from fewer data, while GAN-based methods consume significant more data to synthesize images. The extracted distribution is then leveraged to regulate the attack process as Anomaly Score loss. Experimental results show that GI-PIP achieves a 16.12 dB PSNR recovery using only 3.8% data of ImageNet, while GAN-based methods necessitate over 70%. Moreover, GI-PIP exhibits superior capability on distribution generalization compared to GAN-based methods. Our approach significantly alleviates the auxiliary data requirement on both amount and distribution in gradient inversion attacks, hence posing more substantial threat to real-world FL.

Keywords

Cite

@article{arxiv.2401.11748,
  title  = {GI-PIP: Do We Require Impractical Auxiliary Dataset for Gradient Inversion Attacks?},
  author = {Yu Sun and Gaojian Xiong and Xianxun Yao and Kailang Ma and Jian Cui},
  journal= {arXiv preprint arXiv:2401.11748},
  year   = {2024}
}
R2 v1 2026-06-28T14:23:13.444Z