Privacy Preserving Anomaly Detection on Homomorphic Encrypted Data from IoT Sensors
Anca Hangan, Dragos Lazea, Tudor Cioara

TL;DR
This paper introduces a privacy-preserving anomaly detection method for IoT data using homomorphic encryption, enabling analysis without decryption and maintaining effectiveness against noise and attacks.
Contribution
It adapts histogram-based anomaly detection for the TFHE homomorphic encryption scheme with vectorized operations, addressing input size and computation depth limitations.
Findings
Effective anomaly detection on encrypted IoT data without decryption
Comparable accuracy to plain data detection mechanisms
Robust against noise, adversarial attacks, and device malfunctions
Abstract
IoT devices have become indispensable components of our lives, and the advancement of AI technologies will make them even more pervasive, increasing the vulnerability to malfunctions or cyberattacks and raising privacy concerns. Encryption can mitigate these challenges; however, most existing anomaly detection techniques decrypt the data to perform the analysis, potentially undermining the encryption protection provided during transit or storage. Homomorphic encryption schemes are promising solutions as they enable the processing and execution of operations on IoT data while still encrypted, however, these schemes offer only limited operations, which poses challenges to their practical usage. In this paper, we propose a novel privacy-preserving anomaly detection solution designed for homomorphically encrypted data generated by IoT devices that efficiently detects abnormal values without…
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