RF-Mic

Author:

Chen Yunzhong1ORCID,Yu Jiadi1ORCID,Kong Linghe1ORCID,Kong Hao1ORCID,Zhu Yanmin1ORCID,Chen Yi-Chao1ORCID

Affiliation:

1. Shanghai Jiao Tong University, Department of Computer Science and Engineering, Shanghai, China

Abstract

Eavesdropping on human voice is one of the most common but harmful threats to personal privacy. Glasses are in direct contact with human face, which could sense facial motions when users speak, so human speech contents could be inferred by sensing the movements of glasses. In this paper, we present a live voice eavesdropping method, RF-Mic, which utilizes common glasses attached with a low-cost RFID tag to sense subtle facial speech dynamics for inferring possible voice contents. When a user with a glasses, which is attached an RFID tag on the glass bridge, is speaking, RF-Mic first collects RF signals through forward propagation and backscattering. Then, body motion interference is eliminated from the collected RF signals through a proposed Conditional Denoising AutoEncoder (CDAE) network. Next, RF-Mic extracts three kinds of facial speech dynamic features (i.e., facial movements, bone-borne vibrations, and airborne vibrations) by designing three different deep-learning models. Based on the extracted features, a facial speech dynamics model is constructed for live voice eavesdropping. Extensive experiments in different real environments demonstrate that RF-Mic can achieve robust and accurate human live voice eavesdropping.

Funder

National Natural Science Foundation of China

Publisher

Association for Computing Machinery (ACM)

Subject

Computer Networks and Communications,Hardware and Architecture,Human-Computer Interaction

Reference50 articles.

1. S. Abhishek Anand and Nitesh Saxena . 2018 . Speechless: Analyzing the Threat to Speech Privacy from Smartphone Motion Sensors . In Proc. IEEE Symposium on Security and Privacy . San Francisco, USA, 1000--1017. S. Abhishek Anand and Nitesh Saxena. 2018. Speechless: Analyzing the Threat to Speech Privacy from Smartphone Motion Sensors. In Proc. IEEE Symposium on Security and Privacy. San Francisco, USA, 1000--1017.

2. Zhongjie Ba , Tianhang Zheng , Xinyu Zhang , Zhan Qin , Baochun Li , Xue Liu , and Kui Ren . 2020 . Learning-based Practical Smartphone Eavesdropping with Built-in Accelerometer. In proc. NDSS . San Diego, USA, 23--26. Zhongjie Ba, Tianhang Zheng, Xinyu Zhang, Zhan Qin, Baochun Li, Xue Liu, and Kui Ren. 2020. Learning-based Practical Smartphone Eavesdropping with Built-in Accelerometer. In proc. NDSS. San Diego, USA, 23--26.

3. C. BYU. 2020. Word frequency: based on 450 million word coca corpus. [Online]. Available: https://www.wordfrequency.info/. C. BYU. 2020. Word frequency: based on 450 million word coca corpus. [Online]. Available: https://www.wordfrequency.info/.

4. MoVi-Fi

5. M Dobhn Daniel et al. 2008. The rf in rfid passive uhf rfid in practice. In Elsevier. M Dobhn Daniel et al. 2008. The rf in rfid passive uhf rfid in practice. In Elsevier.

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