Voice interfaces has become an integral part of our lives, with the proliferation of smart devices. Today, IoT devices mainly rely on microphones to sense sound. Microphones, however, have fundamental limitations, such as weak source separation, limited range in the presence of acoustic insulation, and being prone to multiple side-channel attacks. In this paper, we propose RadioMic, a radio-based sound sensing system to mitigate these issues and enrich sound applications. RadioMic constructs sound based on tiny vibrations on active sources (e.g., a speaker or human throat) or object surfaces (e.g., paper bag), and can work through walls, even a soundproof one. To convert the extremely weak sound vibration in the radio signals into sound signals, RadioMic introduces radio acoustics, and presents training-free approaches for robust sound detection and high-fidelity sound recovery. It then exploits a neural network to further enhance the recovered sound by expanding the recoverable frequencies and reducing the noises. RadioMic translates massive online audios to synthesized data to train the network, and thus minimizes the need of RF data. We thoroughly evaluate RadioMic under different scenarios using a commodity mmWave radar. The results show RadioMic outperforms the state-of-the-art systems significantly. We believe RadioMic provides new horizons for sound sensing and inspires attractive sensing capabilities of mmWave sensing devices
翻译:智能设备扩散,使声音界面成为我们生活中不可分割的一部分。今天,IOT设备主要依靠麦克风来感知声音。但麦克风有根本性的局限性,例如源分离薄弱,音绝绝缘的射程有限,容易发生多侧声道攻击。在本论文中,我们提议无线电气象系统,这是一个以无线电为基础的音响感应系统,以缓解这些问题,并丰富音效应用。无线电气象系统根据活跃源(例如,扬声器或人喉咙)或物体表面(例如,纸袋)的小微振动构筑声音,可以通过墙壁工作,甚至防声墙工作。将无线电信号中极弱的音振动转换为音信号,RanoMic采用无线电声学,提出无培训的方法,以稳健的音响探测和高知觉恢复。然后利用神经网络,通过扩大可恢复的频率和减少噪音来进一步增强声音。无线电气象系统将大量在线音频传到合成数据,以训练网络,从而最大限度地减少无线电信号信号信号信号信号信号信号的强度。我们用不同的射频M系统来大大地显示磁测测测地分析结果。