Privacy Enhanced Speech Emotion Communication using Deep Learning Aided Edge Computing
Hafiz Shehbaz Ali, Fakhar ul Hassan, Siddique Latif, Habib Ullah, Manzoor, Junaid Qadir

TL;DR
This paper introduces a novel privacy-preserving speech emotion communication system using adversarial learning at the edge, which protects user privacy while maintaining emotion recognition accuracy.
Contribution
It presents the first privacy-enhanced framework for emotion sensing in communication networks utilizing adversarial learning at the edge.
Findings
Successfully hides user demographic information
Maintains high emotion recognition accuracy
Improves robustness against privacy attacks
Abstract
Speech emotion sensing in communication networks has a wide range of applications in real life. In these applications, voice data are transmitted from the user to the central server for storage, processing, and decision making. However, speech data contain vulnerable information that can be used maliciously without the user's consent by an eavesdropping adversary. In this work, we present a privacy-enhanced emotion communication system for preserving the user personal information in emotion-sensing applications. We propose the use of an adversarial learning framework that can be deployed at the edge to unlearn the users' private information in the speech representations. These privacy-enhanced representations can be transmitted to the central server for decision making. We evaluate the proposed model on multiple speech emotion datasets and show that the proposed model can hide users'…
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