College of Control Science and Engineering, Zhejiang University, Hangzhou 310000, China.
School of Advanced Technology, Xi'an Jiaotong-Liverpool University, Suzhou 215123, China.
Sensors (Basel). 2022 Sep 27;22(19):7345. doi: 10.3390/s22197345.
With the emergence of COVID-19, social distancing detection is a crucial technique for epidemic prevention and control. However, the current mainstream detection technology cannot obtain accurate social distance in real-time. To address this problem, this paper presents a first study on smartphone-based social distance detection technology based on near-ultrasonic signals. Firstly, according to auditory characteristics of the human ear and smartphone frequency response characteristics, a group of 18 kHz-23 kHz inaudible Chirp signals accompanied with single frequency signals are designed to complete ranging and ID identification in a short time. Secondly, an improved mutual ranging algorithm is proposed by combining the cubic spline interpolation and a two-stage search to obtain robust mutual ranging performance against multipath and NLoS affect. Thirdly, a hybrid channel access protocol is proposed consisting of Chirp BOK, FDMA, and CSMA/CA to increase the number of concurrencies and reduce the probability of collision. The results show that in our ranging algorithm, 95% of the mutual ranging error within 5 m is less than 10 cm and gets the best performance compared to the other traditional methods in both LoS and NLoS. The protocol can efficiently utilize the limited near-ultrasonic channel resources and achieve a high refresh rate ranging under the premise of reducing the collision probability. Our study can realize high-precision, high-refresh-rate social distance detection on smartphones and has significant application value during an epidemic.
随着 COVID-19 的出现,社交距离检测是疫情防控的关键技术。然而,当前主流的检测技术无法实时获得准确的社交距离。针对这一问题,本文首次提出了一种基于近超声信号的智能手机社交距离检测技术。首先,根据人耳的听觉特性和智能手机的频率响应特性,设计了一组 18 kHz-23 kHz 的不可听 Chirp 信号和单频信号,以在短时间内完成测距和 ID 识别。其次,提出了一种改进的互测距算法,该算法结合三次样条插值和两级搜索,获得了对多径和非视距影响具有鲁棒性的互测距性能。第三,提出了一种混合信道接入协议,由 Chirp BOK、FDMA 和 CSMA/CA 组成,以增加并发数并降低碰撞概率。结果表明,在我们的测距算法中,95%的 5m 内互测距误差小于 10cm,与其他传统方法相比,在视距和非视距条件下均具有最佳性能。该协议可以有效地利用有限的近超声信道资源,并在降低碰撞概率的前提下实现高刷新率测距。我们的研究可以在智能手机上实现高精度、高刷新率的社交距离检测,在疫情期间具有重要的应用价值。