Deakin University
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The audio auditor: user-level membership inference in Internet of Things voice services

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posted on 2021-01-01, 00:00 authored by Yuantian Miao, Minhui Xue, Chao Chen, Lei PanLei Pan, Jun Zhang, Benjamin Zi Hao Zhao, Dali Kaafar, Yang Xiang
With the rapid development of deep learning techniques, the popularity of voice services implemented on various Internet of Things (IoT) devices is ever increasing. In this paper, we examine user-level membership inference in the problem space of voice services, by designing an audio auditor to verify whether a specific user had unwillingly contributed audio used to train an automatic speech recognition (ASR) model under strict black-box access. With user representation of the input audio data and their corresponding translated text, our trained auditor is effective in user-level audit. We also observe that the auditor trained on specific data can be generalized well regardless of the ASR model architecture. We validate the auditor on ASR models trained with LSTM, RNNs, and GRU algorithms on two state-of-the-art pipelines, the hybrid ASR system and the end-to-end ASR system. Finally, we conduct a real-world trial of our auditor on iPhone Siri, achieving an overall accuracy exceeding 80%. We hope the methodology developed in this paper and findings can inform privacy advocates to overhaul IoT privacy.

History

Journal

Proceedings on privacy enhancing technologies

Volume

2021

Pagination

209-228

Location

Warsaw, Poland

Open access

  • Yes

eISSN

2299-0984

Language

eng

Publication classification

C1 Refereed article in a scholarly journal

Issue

1

Publisher

De Gruyter Open

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