VoiceListener: A Training-free and Universal Eavesdropping Attack on Built-in Speakers of Mobile Devices

Lei Wang, Meng Chen, Lu Li, Feng Lin, Kui Ren, Lei Wang, Meng Chen, Liwang Lu, Zhongjie Ba, Feng Lin
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引用次数: 1

Abstract

Recently, voice leakage gradually raises more significant concerns of users, due to its underlying sensitive and private information when providing intelligent services. Existing studies demonstrate the feasibility of applying learning-based solutions on built-in sensor measurements to recover voices. However, due to the privacy concerns, large-scale voices-sensor measurements samples for model training are not publicly available, leading to significant efforts in data collection for such an attack. In this paper, we propose a training-free and universal eavesdropping attack on built-in speakers, VoiceListener , which releases the data collection efforts and is able to adapt to various voices, platforms, and domains. In particular, VoiceListener develops an aliasing-corrected super resolution mechanism, including an aliasing-based pitch estimation and an aliasing-corrected voice recovering, to convert the undersampled narrow-band sensor measurements to wide-band voices. Extensive experiments demonstrate that our proposed VoiceListener could accurately recover the voices from undersampled sensor measurements and is robust to different voices, platforms and domains, realizing the universal eavesdropping attack.
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VoiceListener:对移动设备内置扬声器的免培训和通用窃听攻击
近年来,语音泄露在提供智能服务的过程中,由于其潜在的敏感和隐私信息,逐渐引起了用户更大的关注。现有的研究表明,将基于学习的解决方案应用于内置传感器测量来恢复声音是可行的。然而,由于隐私问题,用于模型训练的大规模语音传感器测量样本是不可公开的,这导致了为此类攻击收集数据的重大努力。在本文中,我们提出了一种针对内置扬声器的免训练通用窃听攻击,VoiceListener,它可以释放数据收集工作,并且能够适应各种声音,平台和领域。特别是,VoiceListener开发了一种混叠校正超分辨率机制,包括基于混叠的音高估计和混叠校正语音恢复,将欠采样窄带传感器测量值转换为宽带语音。大量的实验表明,我们提出的VoiceListener可以准确地从欠采样传感器测量中恢复声音,并且对不同的声音,平台和领域具有鲁棒性,实现了通用窃听攻击。
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