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Main Authors: Soumik, Mohd. Farhan Israk, Mithsara, W. K. M., Shahid, Abdur R., Imteaj, Ahmed
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2501.18727
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author Soumik, Mohd. Farhan Israk
Mithsara, W. K. M.
Shahid, Abdur R.
Imteaj, Ahmed
author_facet Soumik, Mohd. Farhan Israk
Mithsara, W. K. M.
Shahid, Abdur R.
Imteaj, Ahmed
contents The rapid proliferation of speech-enabled technologies, including virtual assistants, video conferencing platforms, and wearable devices, has raised significant privacy concerns, particularly regarding the inference of sensitive emotional information from audio data. Existing privacy-preserving methods often compromise usability and security, limiting their adoption in practical scenarios. This paper introduces a novel, user-centric approach that leverages familiar audio editing techniques, specifically pitch and tempo manipulation, to protect emotional privacy without sacrificing usability. By analyzing popular audio editing applications on Android and iOS platforms, we identified these features as both widely available and usable. We rigorously evaluated their effectiveness against a threat model, considering adversarial attacks from diverse sources, including Deep Neural Networks (DNNs), Large Language Models (LLMs), and and reversibility testing. Our experiments, conducted on three distinct datasets, demonstrate that pitch and tempo manipulation effectively obfuscates emotional data. Additionally, we explore the design principles for lightweight, on-device implementation to ensure broad applicability across various devices and platforms.
format Preprint
id arxiv_https___arxiv_org_abs_2501_18727
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Exploring Audio Editing Features as User-Centric Privacy Defenses Against Large Language Model(LLM) Based Emotion Inference Attacks
Soumik, Mohd. Farhan Israk
Mithsara, W. K. M.
Shahid, Abdur R.
Imteaj, Ahmed
Cryptography and Security
Artificial Intelligence
Machine Learning
Sound
Audio and Speech Processing
The rapid proliferation of speech-enabled technologies, including virtual assistants, video conferencing platforms, and wearable devices, has raised significant privacy concerns, particularly regarding the inference of sensitive emotional information from audio data. Existing privacy-preserving methods often compromise usability and security, limiting their adoption in practical scenarios. This paper introduces a novel, user-centric approach that leverages familiar audio editing techniques, specifically pitch and tempo manipulation, to protect emotional privacy without sacrificing usability. By analyzing popular audio editing applications on Android and iOS platforms, we identified these features as both widely available and usable. We rigorously evaluated their effectiveness against a threat model, considering adversarial attacks from diverse sources, including Deep Neural Networks (DNNs), Large Language Models (LLMs), and and reversibility testing. Our experiments, conducted on three distinct datasets, demonstrate that pitch and tempo manipulation effectively obfuscates emotional data. Additionally, we explore the design principles for lightweight, on-device implementation to ensure broad applicability across various devices and platforms.
title Exploring Audio Editing Features as User-Centric Privacy Defenses Against Large Language Model(LLM) Based Emotion Inference Attacks
topic Cryptography and Security
Artificial Intelligence
Machine Learning
Sound
Audio and Speech Processing
url https://arxiv.org/abs/2501.18727