2023
DOI: 10.3390/app131810132
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Local Differential Privacy Image Generation Using Flow-Based Deep Generative Models

Hisaichi Shibata,
Shouhei Hanaoka,
Yang Cao
et al.

Abstract: Diagnostic radiologists need artificial intelligence (AI) for medical imaging, but access to medical images required for training in AI has become increasingly restrictive. To release and use medical images, we need an algorithm that can simultaneously protect privacy and preserve pathologies in medical images. To address this, we introduce DP-GLOW, a hybrid that combines the local differential privacy (LDP) algorithm with GLOW, one of the flow-based deep generative models. By applying a GLOW model, we disenta… Show more

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References 17 publications
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