DarkneTZ: Towards Model Privacy at the Edge using Trusted Execution Environments
April 12, 2020 ยท Declared Dead ยท ๐ ACM SIGMOBILE International Conference on Mobile Systems, Applications, and Services
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Authors
Fan Mo, Ali Shahin Shamsabadi, Kleomenis Katevas, Soteris Demetriou, Ilias Leontiadis, Andrea Cavallaro, Hamed Haddadi
arXiv ID
2004.05703
Category
cs.LG: Machine Learning
Cross-listed
cs.CR,
stat.ML
Citations
218
Venue
ACM SIGMOBILE International Conference on Mobile Systems, Applications, and Services
Last Checked
4 months ago
Abstract
We present DarkneTZ, a framework that uses an edge device's Trusted Execution Environment (TEE) in conjunction with model partitioning to limit the attack surface against Deep Neural Networks (DNNs). Increasingly, edge devices (smartphones and consumer IoT devices) are equipped with pre-trained DNNs for a variety of applications. This trend comes with privacy risks as models can leak information about their training data through effective membership inference attacks (MIAs). We evaluate the performance of DarkneTZ, including CPU execution time, memory usage, and accurate power consumption, using two small and six large image classification models. Due to the limited memory of the edge device's TEE, we partition model layers into more sensitive layers (to be executed inside the device TEE), and a set of layers to be executed in the untrusted part of the operating system. Our results show that even if a single layer is hidden, we can provide reliable model privacy and defend against state of the art MIAs, with only 3% performance overhead. When fully utilizing the TEE, DarkneTZ provides model protections with up to 10% overhead.
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