RadEar: A Self-Supervised RF Backscatter System for Voice Eavesdropping and Separation
Abstract
Eavesdropping on voice conversations presents a growing threat to personal privacy and information security. In this paper, we present RadEar, a novel RF backscatter-based system designed to enable covert voice eavesdropping through walls. RadEar consists of two key components: (i) a batteryless RF backscatter tag covertly deployed inside the target space, and (ii) an RF reader located outside the room that performs signal demodulation, voice separation, and denoising. The tag features a compact, dual-resonator design that achieves energy-efficient frequency modulation for continuous voice eavesdropping while mitigating self-interference by separating excitation and reflection frequencies. To overcome the challenges of weak signal reception and overlapping speech, the RF reader employs self-supervised learning models for voice separation and denoising, trained using a remix-based objective without requiring ground-truth labels. We fabricate and evaluate RadEar in real-world scenarios, demonstrating its ability to recover and separate human speech with high fidelity under practical constraints.
Cite
@article{arxiv.2603.12446,
title = {RadEar: A Self-Supervised RF Backscatter System for Voice Eavesdropping and Separation},
author = {Qijun Wang and Peihao Yan and Chunqi Qian and Huacheng Zeng},
journal= {arXiv preprint arXiv:2603.12446},
year = {2026}
}
Comments
Accepted by IEEE INFOCOM 2026