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Efficient and privacy-aware multi-party classification protocol for human activity recognition

journal contribution
posted on 2024-11-01, 01:19 authored by Zakaria Gheid, Yacine Challal, Xun YiXun Yi, Abdelouahid Derhab
Human activity recognition (HAR) is an important research field that relies on sensing technologies to enable many context-aware applications. Nevertheless, tracking personal signs to enable such applications has given rise to serious privacy issues, especially when using external activity recognition services. In this paper, we propose (Π-Knn): a privacy-preserving version of the K Nearest Neighbors (k-NN) classifier that is mainly built on (Π-CSP+): a novel cryptography-free private similarity evaluation protocol. As a sample application, we consider a medical monitoring system enhanced with a HAR process based on our privacy preserving classifier. The integration of the privacy preserving HAR aims to improve the accuracy of the clinical decision support. We conduct a standard security analysis to prove that our protocols provide a complete privacy protection against malicious adversaries. We perform a comparative performance evaluation through several experiments while using real HAR system parameters. Experimental evaluations show that our protocol (Π-CSP+) incurs a low increasing overhead (37% in Online classification and 50% in Offline classification) compared to PCSC, a representative state-of-the art protocol, which incurs 3600% and 4800% in online and offline classification respectively. Besides, Π-CSP+ provides a stable and efficient response time (W=0.0x ms) for both short and long duration activities while serving up to 1000 clients. Comparative results confirm the computational efficiency of our protocol against a competitive state-of-the-art protocol.

History

Journal

Journal of Network and Computer Applications

Volume

98

Start page

84

End page

96

Total pages

13

Publisher

Academic Press

Place published

United Kingdom

Language

English

Copyright

© 2017 Elsevier Ltd

Former Identifier

2006079436

Esploro creation date

2020-06-22

Fedora creation date

2017-12-04

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