Publication | Closed Access
MILLIEAR: Millimeter-wave Acoustic Eavesdropping with Unconstrained Vocabulary
51
Citations
34
References
2022
Year
Acoustic Communication SystemsAcoustic EavesdroppingMachine LearningEngineeringHealth SciencesAcoustic Signal ProcessingAudio AnalysisSpeech ProcessingMillimeter-wave Acoustic EavesdroppingMmwave Fmcw RangingDeep LearningMillimeter Wave TechnologyDistant Speech RecognitionSignal ProcessingAcoustic ModelingSpeech Recognition
As acoustic communication systems become more common in homes and offices, eavesdropping brings significant security and privacy risks. Current approaches of acoustic eavesdropping either provide low resolution due to the use of sub-6 GHz frequencies, work only for limited words using classification, or cannot work through-wall due to the use of optical sensors. In this paper, we present MILLIEAR, a mmWave acoustic eavesdropping system that leverages the high-resolution of mmWave FMCW ranging and generative machine learning models to not only extract vibrations but to reconstruct the audio. MILLIEAR combines speaker vibration estimation with conditional generative adversarial networks to eavesdrop with unconstrained vocabulary. We implement and evaluate MIL-LIEAR using off-the-shelf mmWave radar deployed in different scenarios and settings. We find that it can accurately reconstruct the audio even at different distances, angles and through the wall with different insulator materials. Our subjective and objective evaluations show that the reconstructed audio has a strong similarity with the original audio.
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