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Differential Privacy Image Generation with Reconstruction Loss and Noise Injection Using an Error Feedback SGD

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Traditional data masking techniques such as anonymization cannot achieve the expected privacy protection while ensuring data utility for privacy-preserving machine learning. Synthetic data plays an increasingly important role as it generates a large number of training samples and prevents information leakage in real data. The existing methods suffer from the repeating trade-off processes between privacy and utility. We propose a novel framework for differential privacy generation, which employs an Error Feedback Stochastic Gradient Descent(EFSGD) method and introduces a reconstruction loss and noise injection mechanism into the training process. We generate images with higher quality and usability under the same privacy budget as the related work. Extensive experiments demonstrate the effectiveness and generalization of our proposed framework for both grayscale and RGB images. We achieve state-of-the-art results over almost all metrics on three benchmarks: MNIST, Fashion-MNIST, and CelebA.

Qiwei Ma, Jun Zhang• 2026

Related benchmarks

TaskDatasetResultRank
Image GenerationMNIST
FID49.41
44
Image GenerationFashion MNIST
FID83.48
38
Image GenerationCelebA
Fréchet Inception Distance114
10
Image GenerationCelebA
Gen2Real Accuracy88
8
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