Bao Zhongxu, Xu Baoxuan, Zhang Xuehan, Yin Yuqing, Yang Xu, Niu Qiang
State Key Laboratory of Mining Response and Disaster Prevention and Control in Deep Coal Mines, Anhui University of Science and Technology, Huainan 232000, China.
School of Computer Science and Technology, China University of Mining and Technology, Xuzhou 221116, China.
Sensors (Basel). 2025 Mar 18;25(6):1874. doi: 10.3390/s25061874.
Monitoring for early symptoms is a critical step in preventing pneumoconiosis. The early signs of pneumoconiosis can be characterized by dyspnea, tachypnea, and cough. While traditional sensor-based methods are promising, they necessitate the wearing of devices and confine human physical movements. On the other hand, camera-based methods have issues related to illumination, obstruction, and privacy. Recently, wireless sensing has attracted a significant amount of research attention. Among wireless signals, acoustic signals possess unique advantages for fine-grained sensing due to their low propagation speed in the air and low hardware requirement. In this paper, we propose a system called P3Warning to realize low-cost warnings for potential pneumoconiosis patients in a contactless manner. For the first time, the designed system utilizes the inaudible acoustic signal to monitor early symptoms of pneumoconiosis (i.e., abnormal respiration and cough), leveraging a pair of commercial speaker and microphone. We introduce and address unique technical challenges, such as formulating a delay elimination method to synchronize transceiver signals and providing a search-based strategy to amplify signal variation for accurate and long-distance vital sign sensing. Ultimately, we apply an innovative signal decomposition technique to reconstruct the respiration waveform and extract features for cough detection. Comprehensive experiments were conducted to evaluate P3Warning. Experiment results show that it can achieve a robust performance with a median error of 0.39 bpm for abnormal respiration pattern monitoring and an accuracy of 95% for cough detection in total, and support the furthest sensing range of up to 4 m.
监测早期症状是预防尘肺病的关键步骤。尘肺病的早期症状表现为呼吸困难、呼吸急促和咳嗽。虽然传统的基于传感器的方法很有前景,但它们需要佩戴设备,限制了人体活动。另一方面,基于摄像头的方法存在光照、遮挡和隐私等问题。近年来,无线传感引起了大量研究关注。在无线信号中,声学信号由于在空气中传播速度低且硬件要求低,在细粒度传感方面具有独特优势。在本文中,我们提出了一种名为P3Warning的系统,以非接触方式为潜在的尘肺病患者实现低成本预警。该设计系统首次利用听不见的声学信号来监测尘肺病的早期症状(即异常呼吸和咳嗽),借助一对商用扬声器和麦克风。我们介绍并解决了独特的技术挑战,例如制定延迟消除方法以同步收发器信号,以及提供基于搜索的策略来放大信号变化以实现准确的远距离生命体征传感。最终,我们应用一种创新的信号分解技术来重建呼吸波形并提取咳嗽检测特征。进行了全面的实验来评估P3Warning。实验结果表明,它在监测异常呼吸模式时中位数误差为0.39次/分钟,咳嗽检测准确率总计为95%,能够实现稳健的性能,并支持最远4米的传感范围。