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Offline Model Guard: Secure and Private ML on Mobile Devices

Sebastian P. Bayerl, Tommaso Frassetto, Patrick Jauernig, Korbinian Riedhammer, Ahmad-Reza Sadeghi, Thomas Schneider, Emmanuel Stapf, Christian Weinert

202033 citationsDOIOpen Access PDF

Abstract

Performing machine learning tasks in mobile applications yields a challenging conflict of interest: highly sensitive client information (e.g., speech data) should remain private while also the intellectual property of service providers (e.g., model parameters) must be protected. Cryptographic techniques offer secure solutions for this, but have an unacceptable overhead and moreover require frequent network interaction.In this work, we design a practically efficient hardware-based solution. Specifically, we build OFFLINE MODEL GUARD (OMG) to enable privacy-preserving machine learning on the predominant mobile computing platform ARM—even in offline scenarios. By leveraging a trusted execution environment for strict hardware-enforced isolation from other system components, OMG guarantees privacy of client data, secrecy of provided models, and integrity of processing algorithms. Our prototype implementation on an ARM HiKey 960 development board performs privacy-preserving keyword recognition using TensorFlow Lite for Microcontrollers in real time.

Topics & Concepts

Computer scienceMobile deviceSecrecyGuard (computer science)Overhead (engineering)Computer securityAndroid (operating system)CryptographyEmbedded systemTrusted Platform ModuleMicrocontrollerService providerCryptographic protocolMobile computingConfidentialityInformation privacyTrusted computing baseIsolation (microbiology)AnonymityComputer networkDomain (mathematical analysis)Trusted ComputingKey (lock)Private information retrievalSecurity tokenInformation sensitivityThreat modelProperty (philosophy)Security and Verification in ComputingAdvanced Malware Detection TechniquesCryptography and Data Security
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