FeatureSense: Protecting Speaker Attributes in Always-On Audio Sensing System
Bhawana Chhaglani, Sarmistha Sarna Gomasta, Yuvraj Agarwal, Jeremy Gummeson, Prashant Shenoy

TL;DR
FeatureSense is an open-source framework that enhances privacy in audio sensing by protecting speaker attributes like age and gender, while maintaining high utility across various applications.
Contribution
The paper introduces FeatureSense, a novel privacy-aware audio feature set and an adaptive selection algorithm that balances privacy and utility in always-on audio sensing systems.
Findings
Outperforms existing privacy techniques by 60.6% in privacy preservation.
Maintains high utility across diverse sensing tasks.
Provides a comprehensive privacy evaluation framework.
Abstract
Audio is a rich sensing modality that is useful for a variety of human activity recognition tasks. However, the ubiquitous nature of smartphones and smart speakers with always-on microphones has led to numerous privacy concerns and a lack of trust in deploying these audio-based sensing systems. This paper addresses this critical challenge of preserving user privacy when using audio for sensing applications while maintaining utility. While prior work focuses primarily on protecting recoverable speech content, we show that sensitive speaker-specific attributes such as age and gender can still be inferred after masking speech and propose a comprehensive privacy evaluation framework to assess this speaker attribute leakage. We design and implement FeatureSense, an open-source library that provides a set of generalizable privacy-aware audio features that can be used for wide range of sensing…
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Taxonomy
TopicsMusic and Audio Processing · Speech and Audio Processing · Speech Recognition and Synthesis
