From Easy to Hard++: Promoting Differentially Private Image Synthesis Through Spatial-Frequency Curriculum
Chen Gong, Kecen Li, Zinan Lin, Tianhao Wang

TL;DR
This paper introduces FETA-Pro, a novel curriculum for differentially private image synthesis that combines spatial and frequency features, significantly improving image quality and utility under privacy constraints.
Contribution
FETA-Pro presents a new training curriculum using frequency features as shortcuts, enhancing DP image synthesis by integrating multiple models for better quality.
Findings
FETA-Pro achieves 25.7% higher fidelity than baselines.
FETA-Pro improves utility by 4.1% under privacy budget ε=1.
The method effectively handles diverse image datasets.
Abstract
To improve the quality of Differentially private (DP) synthetic images, most studies have focused on improving the core optimization techniques (e.g., DP-SGD). Recently, we have witnessed a paradigm shift that takes these techniques off the shelf and studies how to use them together to achieve the best results. One notable work is DP-FETA, which proposes using `central images' for `warming up' the DP training and then using traditional DP-SGD. Inspired by DP-FETA, we are curious whether there are other such tools we can use together with DP-SGD. We first observe that using `central images' mainly works for datasets where there are many samples that look similar. To handle scenarios where images could vary significantly, we propose FETA-Pro, which introduces frequency features as `training shortcuts.' The complexity of frequency features lies between that of spatial features (captured…
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Taxonomy
TopicsGenerative Adversarial Networks and Image Synthesis · Advanced Neural Network Applications · Physical Unclonable Functions (PUFs) and Hardware Security
