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mmEavesdropper: Signal Augmentation-based Directional Eavesdropping with mmWave Radar

Yiwen Feng, Kai Zhang, Chuyu Wang, Lei Xie, Jingyi Ning, Shijia Chen

202326 citationsDOI

Abstract

With the popularity of online meetings equipped with speakers, voice privacy security has drawn increasing attention because eavesdropping on the speakers can quickly obtain sensitive information. In this paper, we propose mmEavesdropper, a mmWave based eavesdropping system, which focuses on augmenting the micro-vibration signal via theoretical models for voice recovery. Particularly, to augment the receiving signal of the target vibration, we propose to use beam-forming to facilitate the directional augmentation by suppressing other orientations and use Chirp-Z transform to facilitate the distance augmentation by increasing the range resolution compared with traditional FFT. To augment the vibration signal in the IQ plane, we build a theoretical model to analyze the distortion and propose a segmentation-based fitting method to calibrate the vibration signal. To augment the spectrum for sound recovery, we propose to combine multiple channels and leverage an encoder-decoder based neural network to reconstruct the spectrogram for voice recovery. We perform extensive experiments on mmEavesdropper and the results show that mmEavesdropper can reach the accuracy of 93% on digit and letter recognition. Moreover, mmEavesdropper can reconstruct the voice with an average SNR of 5dB and peak SNR of 17dB.

Topics & Concepts

EavesdroppingComputer scienceSpectrogramSIGNAL (programming language)Speech recognitionLeverage (statistics)Artificial intelligenceComputer networkProgramming languageSpeech and Audio ProcessingIndoor and Outdoor Localization TechnologiesAdvanced Adaptive Filtering Techniques
mmEavesdropper: Signal Augmentation-based Directional Eavesdropping with mmWave Radar | Litcius