Quantized Approximate Signal Processing (QASP): Towards Homomorphic Encryption for audio
Tu Duyen Nguyen, Adrien Lesage, Clotilde Cantini, Rachid Riad

TL;DR
This paper introduces a fully secure pipeline using homomorphic encryption and quantized neural networks to compute essential time-frequency audio representations, enabling privacy-preserving audio analysis and classification.
Contribution
It presents the first fully homomorphic encryption-based method for computing multiple audio features and classifiers, with approximate algorithms that reduce computational load and error.
Findings
Significant performance improvements with STFT approximation in private analysis.
Reduced error rates in private speech feature extraction compared to conventional methods.
Successful private classification of gender and vocal exercises from raw audio.
Abstract
Audio and speech data are increasingly used in machine learning applications such as speech recognition, speaker identification, and mental health monitoring. However, the passive collection of this data by audio listening devices raises significant privacy concerns. Fully homomorphic encryption (FHE) offers a promising solution by enabling computations on encrypted data and preserving user privacy. Despite its potential, prior attempts to apply FHE to audio processing have faced challenges, particularly in securely computing time frequency representations, a critical step in many audio tasks. Here, we addressed this gap by introducing a fully secure pipeline that computes, with FHE and quantized neural network operations, four fundamental time-frequency representations: Short-Time Fourier Transform (STFT), Mel filterbanks, Mel-frequency cepstral coefficients (MFCCs), and gammatone…
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Taxonomy
TopicsChaos-based Image/Signal Encryption · Advanced Steganography and Watermarking Techniques · Digital Media Forensic Detection
