Authors
Amine Boulemtafes, Abdelouahid Derhab, Nassim Ait Ali Braham, Yacine Challal
Publication date
2021/11/30
Conference
2021 IEEE/ACS 18th International Conference on Computer Systems and Applications (AICCSA)
Pages
1-8
Publisher
IEEE
Description
Homomorphic Encryption is one of the most promising techniques to deal with privacy concerns, which is raised by remote deep learning paradigm, and maintain high classification accuracy. However, homomorphic encryption-based solutions are characterized by high overhead in terms of both computation and communication, which limits their adoption in pervasive health monitoring applications with constrained client-side devices. In this paper, we propose PReDIHERO, an improved privacy-preserving solution for remote deep learning inferences based on homomorphic encryption. The proposed solution applies a reversible obfuscation technique that successfully protects sensitive information, and enhances the client-side overhead compared to the conventional homomorphic encryption approach. The solution tackles three main heavyweight client-side tasks, namely, encryption and transmission of private …
Total citations
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