PrivDiffuser: Privacy-Guided Diffusion Model for Data Obfuscation in Sensor Networks
Xin Yang, Omid Ardakanian

TL;DR
PrivDiffuser is a novel diffusion-based data obfuscation method that enhances privacy protection in sensor networks while maintaining data utility, using guidance from latent representations and mutual information regularization.
Contribution
It introduces a privacy-guided diffusion model with effective guidance techniques and mutual information regularization for improved privacy-utility trade-off in sensor data obfuscation.
Findings
Outperforms state-of-the-art in privacy-utility trade-off.
Reduces utility loss by up to 1.81%.
Reduces privacy loss by up to 3.42%.
Abstract
Sensor data collected by Internet of Things (IoT) devices can reveal sensitive personal information about individuals, raising significant privacy concerns when shared with semi-trusted service providers, as they may extract this information using machine learning models. Data obfuscation empowered by generative models is a promising approach to generate synthetic data such that useful information contained in the original data is preserved while sensitive information is obscured. This newly generated data will then be shared with service providers instead of the original sensor data. In this work, we propose PrivDiffuser, a novel data obfuscation technique based on a denoising diffusion model that achieves a superior trade-off between data utility and privacy by incorporating effective guidance techniques. Specifically, we extract latent representations that contain information about…
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Taxonomy
TopicsChaos-based Image/Signal Encryption
Methodstravel james · Diffusion
