Detection Method for Human Respiration Waveform in Sleep State Based on IR-UWB
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    Abstract:

    The detection of the human respiration waveform in the sleep state is crucial for applications in intelligent health care as well as medical and healthcare in that different respiration waveform patterns can be examined to analyze sleep quality and monitor respiratory diseases. Traditional respiration sensing methods based on contact devices cause various inconveniences to users. In contrast, contactless sensing methods are more suitable for continuous monitoring. However, the randomness of the device deployment, sleep posture, and human motion during sleep severely restrict the application of contactless respiration sensing solutions in daily life. For this reason, the study proposes a detection method for the human respiration waveform in the sleep state based on impulse radio-ultra wide band (IR-UWB). On the basis of the periodic changes in the propagation path of the wireless pulse signal caused by the undulation of the human chest during respiration in the sleep state, the proposed method generates a fine-grained human respiration waveform and thereby achieves the real-time output of the respiration waveform and high-precision respiratory rate estimation. Specifically, to obtain the position of the human chest during respiration from the received wireless radio-frequency (RF) signals, this study proposes the indicator respiration energy ratio based on IR-UWB signals to estimate the target position. Then, it puts forward a vector projection method based on the in-phase/quadrature (I/Q) complex plane and a method of projection signal selection based on the circumferential position of the respiration vector to extract the characteristic human respiration waveform from the reflected signal. Finally, a variational encoder-decoder network is leveraged to achieve the fine-grained recovery of the respiratory waveform in the sleep state. Extensive experiments and tests are conducted under different conditions, and the results show that the human respiration waveforms monitored by the proposed method in the sleep state are highly similar to the actual waveforms captured by commercial respiratory belts. The average error of the proposed method in estimating the human respiratory rate is 0.229 bpm, indicating that the method can achieve high-precision detection of the human respiration waveform in the sleep state.

    Reference
    [1] Taylor DJ, Lichstein KL, Durrence HH, Reidel BW, Bush AJ. Epidemiology of insomnia, depression, and anxiety. Sleep, 2005, 28(11): 1457–1464. [doi: 10.1093/sleep.28.11.1457]
    [2] Kapur VK, Auckley DH, Chowdhuri S, Kuhlmann DC, Mehra R, Ramar K, Harrod CG. Clinical practice guideline for diagnostic testing for adult obstructive sleep apnea: An American Academy of Sleep Medicine clinical practice guideline. Journal of Clinical Sleep Medicine, 2017, 13(3): 479–504. [doi: 10.5664/jcsm.6506]
    [3] Gulia KK, Kumar VM. Sleep disorders in the elderly: A growing challenge. Psychogeriatrics, 2018, 18(3): 155–165. [doi: 10.1111/psyg.12319]
    [4] Cheng JY, Filippov G, Moline M, Zammit GK, Bsharat M, Hall N. Respiratory safety of lemborexant in healthy adult and elderly subjects with mild obstructive sleep apnea: A randomized, double-blind, placebo-controlled, crossover study. Journal of Sleep Research, 2020, 29(4): e13021. [doi: 10.1111/jsr.13021]
    [5] Fletcher C, Peto R. The natural history of chronic airflow obstruction. British Medical Journal, 1977, 1(6077): 1645–1648. [doi: 10.1136/bmj.1.6077.1645]
    [6] Holland AE, Hill CJ, Jones AY, McDonald CF. Breathing exercises for chronic obstructive pulmonary disease. Cochrane Database of Systematic Reviews, 2012, 10: CD008250. [doi: 10.1002/14651858.CD008250.pub2]
    [7] Gift AG, Moore T, Soeken K. Relaxation to reduce dyspnea and anxiety in COPD patients. Nursing Research, 1992, 41(4): 242–246. [doi: 10.1097/00006199-199207000-00011]
    [8] Holland AE, Hill CJ, Conron M, Munro P, McDonald CF. Short term improvement in exercise capacity and symptoms following exercise training in interstitial lung disease. Thorax, 2008, 63(6): 549–554. [doi: 10.1136/thx.2007.088070]
    [9] Fang BY, Lane ND, Zhang M, Boran A, Kawsar F. BodyScan: Enabling radio-based sensing on wearable devices for contactless activity and vital sign monitoring. In: Proc. of the 14th Annual Int’l Conf. on Mobile Systems, Applications, and Services. Singapore: ACM, 2016. 97–110.
    [10] Güder F, Ainla A, Redston J, Mosadegh B, Glavan A, Martin TJ, Whitesides GM. Paper-based electrical respiration sensor. Angewandte Chemie Int’l Edition, 2016, 55(19): 5727–5732. [doi: 10.1002/anie.201511805]
    [11] NeuLog. Respiration monitor belt logger sensor NUL-236. 2017. https://neulog.com/respiration-monitor-belt/
    [12] Rahman M, Morshed BI. Estimation of respiration rate using an inertial measurement unit placed on thorax-abdomen. In: Proc. of the 2021 IEEE Int’l Conf. on Electro Information Technology (EIT). Mt. Pleasant: IEEE, 2021. 1–5.
    [13] Kao TYJ, Yan Y, Shen TM, Chen AYK, Lin J. Design and analysis of a 60-GHz CMOS Doppler micro-radar system-in-package for vital-sign and vibration detection. IEEE Transactions on Microwave Theory and Techniques, 2013, 61(4): 1649–1659. [doi: 10.1109/TMTT.2013.2247620]
    [14] Lin F, Song C, Zhuang Y, Xu WY, Li CZ, Ren K. Cardiac scan: A non-contact and continuous heart-based user authentication system. In: Proc. of the 23rd Annual Int’l Conf. on Mobile Computing and Networking. Snowbird: ACM, 2017. 315–328.
    [15] Nguyen P, Zhang XY, Halbower A, Vu T. Continuous and fine-grained breathing volume monitoring from afar using wireless signals. In: Proc. of the 35th Annual IEEE Int’l Conf. on Computer Communications (IEEE INFOCOM 2016). San Francisco: IEEE, 2016. 1–9.
    [16] Massaroni C, Lopes DS, Lo Presti D, Schena E, Silvestri S. Contactless monitoring of breathing patterns and respiratory rate at the pit of the neck: A single camera approach. Journal of Sensors, 2018, 2018: 4567213. [doi: 10.1155/2018/4567213]
    [17] Dupin M, Garcia S, Boulanger-Bertolus J, Buonviso N, Mouly AM. New insights from 22-kHz ultrasonic vocalizations to characterize fear responses: Relationship with respiration and brain oscillatory dynamics. Eneuro, 2019, 6(2): ENEURO. 0065-19.2019. [doi: 10.1523/ENEURO.0065-19.2019]
    [18] Guo ZX, Zhu X, Gui LQ, Sheng BY, Xiao F. BreathID: Respiration sensing for human identification using commodity WiFi. IEEE Systems Journal, 2023, 17(2): 3059–3070.
    [19] Yu BH, Wang YX, Niu K, Zeng YW, Gu T, Wang LY, Guan CT, Zhang DQ. WiFi-sleep: Sleep stage monitoring using commodity WiFi devices. IEEE Internet of Things Journal, 2021, 8(18): 13900–13913. [doi: 10.1109/JIOT.2021.3068798]
    [20] Mikhelson IV, Bakhtiari S, Elmer TW II, Sahakian AV. Remote sensing of heart rate and patterns of respiration on a stationary subject using 94-GHz millimeter-wave interferometry. IEEE Transactions on Biomedical Engineering, 2011, 58(6): 1671–1677. [doi: 10.1109/TBME.2011.2111371]
    [21] Chen Z, Zheng TY, Cai C, Luo J. MoVi-Fi: Motion-robust vital signs waveform recovery via deep interpreted RF sensing. In: Proc. of the 27th Annual Int’l Conf. on Mobile Computing and Networking. New Orleans: ACM, 2021. 392–405.
    [22] Zheng TY, Chen Z, Zhang SJ, Cai C, Luo J. MoRe-Fi: Motion-robust and fine-grained respiration monitoring via deep-learning UWB radar. In: Proc. of the 19th ACM Conf. on Embedded Networked Sensor Systems. Coimbra: ACM, 2021. 111–124.
    [23] 李晟洁, 李翔, 张越, 王亚沙, 张大庆. 基于Wi-Fi信道状态信息的行走识别与行走参数估计. 软件学报, 2020, 32(10): 3122?3138. http://www.jos.org.cn/1000-9825/6027.htm
    Li SJ, Li X, Zhang Y, Wang YS, Zhang DQ. Walking recognition and parameters estimation based on Wi-Fi channel state information. Ruan Jian Xue Bao/Journal of Software, 2021, 32(10): 3122–3138 (in Chinese with English abstract). http://www.jos.org.cn/1000-9825/6027.htm
    [24] Bouchard K, Maitre J, Bertuglia C, Gaboury S. Activity recognition in smart homes using UWB radars. Procedia Computer Science, 2020, 170: 10–17. [doi: 10.1016/j.procs.2020.03.004]
    [25] Zhang SJ, Zheng TY, Chen Z, Luo J. Can we obtain fine-grained heartbeat waveform via contact-free RF-sensing? In: Proc. of the 2022 IEEE Conf. on Computer Communications (IEEE INFOCOM 2022). London: IEEE, 2022. 1759–1768.
    [26] Zheng TY, Chen Z, Zhang SJ, Luo J. Catch your breath: Simultaneous RF tracking and respiration monitoring with radar pairs. IEEE Trans. on Mobile Computing, 2023, 22(11): 6283–6296.
    [27] Lv QY, Chen L, An K, Wang J, Li H, Ye DX, Huangfu JT, Li CZ, Ran LX. Doppler vital signs detection in the presence of large-scale random body movements. IEEE Transactions on Microwave Theory and Techniques, 2018, 66(9): 4261–4270. [doi: 10.1109/TMTT.2018.2852625]
    [28] Wang XY, Huang RZ, Yang C, Mao SW. Smartphone sonar-based contact-free respiration rate monitoring. ACM Transactions on Computing for Healthcare, 2021, 2(2): 15. [doi: 10.1145/3436822]
    [29] 王楚豫, 谢磊, 赵彦超, 张大庆, 叶保留, 陆桑璐. 基于RFID的无源感知机制研究综述. 软件学报, 2022, 33(1): 297?323. http://www.jos.org.cn/1000-9825/6344.htm
    Wang CY, Xie L, Zhao YC, Zhang DQ, Ye BL, Lu SL. Survey on RFID-based battery-less sensing. Ruan Jian Xue Bao/Journal of Software, 2022, 33(1): 297–323 (in Chinese with English abstract). http://www.jos.org.cn/1000-9825/6344.htm
    [30] Pai A, Veeraraghavan A, Sabharwal A. HRVCam: Robust camera-based measurement of heart rate variability. Journal of Biomedical Optics, 2021, 26(2): 022707. [doi: 10.1117/1.JBO.26.2.022707]
    [31] Wang AR, Sunshine JE, Gollakota S. Contactless infant monitoring using white noise. In: Proc. of the 25th Annual Int’l Conf. on Mobile Computing and Networking. Los Cabos: ACM, 2019. 52.
    [32] Wang TB, Zhang DQ, Zheng YQ, Gu T, Zhou XS, Dorizzi B. C-FMCW based contactless respiration detection using acoustic signal. Proceedings of the ACM on Interactive, Mobile, Wearable and Ubiquitous Technologies, 2018, 1(4): 170. [doi: 10.1145/3161188]
    [33] Xu XY, Yu JD, Chen YY, Zhu YM, Kong LH, Li ML. BreathListener: Fine-grained bs, 2019, 3(3): 96. [doi: 10.1145/3351254]
    [51] Pramudita AA, Suratman FY. Low-power radar system for ?oncontact human respiration sensor. IEEE Transactions on Instrumentation an? Measurement, 2021, 70: 4005415. [doi: 10.1109/TIM.2021.3087839]
    [52] Zhang FS, Chang ZX, Xiong J, Zheng R, Ma JQ, Niu K, Jin BH, Zhang DQ. Unlocking the beamforming potential of LoRa for lo?g-range multi-target respiration sensing. Proceedings of the ACM on Interactive, Mobile, Wearable and Ubiquitous Technologies, 2021, 5(2): 85. [doi: 10.1145/3463526]
    [53] Novelda AS. The world leader in ultra-wideband (UWB) sensing. 2021. htt?s://novelda.com/technology/
    2997053]
    [36] Gao QH, Tong JY, Wang J, Ran ZH, Pan M. Device-free multi-person respiration monitoring using WiFi. IEEE Transactions on Vehicular Technology, 2020, 69(11): 14083–14087. [doi: 10.1109/TVT.2020.3020180]
    [37] Zakaria C, Yilmaz G, Mammen PM, Chee M, Shenoy P, Balan R. SleepMore: Inferring sleep duration at scale via multi-device WiFi sensing. Proceedings of the ACM on Interactive, Mobile, Wearable and Ubiquitous Technologies, 2023, 6(4): 193. [doi: 10.1145/3569489]
    [38] Wang XY, Yang C, Mao SW. TensorBeat: Tensor decomposition for monitoring multiperson breathing beats with commodity WiFi. ACM Transactions on Intelligent Systems and Technology, 2017, 9(1): 8. [doi: 10.1145/3078855]
    [39] Shi SY, Xie YX, Li M, Liu AX, Zhao J. Synthesizing wider WiFi bandwidth for respiration rate monitoring in dynamic environments. In: Proc. of the 2019 IEEE Conf. on Computer Communications (IEEE INFOCOM 2019). Paris: IEEE, 2019. 181–189.
    [40] Bao N, Du JJ, Wu CY, Hong D, Chen JX, Nowak R, Lv ZH. Wi-Breath: A WiFi-based contactless and real-time respiration monitoring scheme for remote healthcare. IEEE Journal of Biomedical and Health Informatics, 2023, 27(5): 2276-2285. [doi: 10.1109/JBHI.2022.3186152]
    [41] Guo ZX, Yuan WY, Gui LQ, Sheng BY, Xiao F. BreatheBand: A fine-grained and robust respiration monitor system using WiFi signals. ACM Trans. on Sensor Networks, 2023, 19(4): 1–18.
    [42] Yang YN, Cao JN, Liu XF, Xing K. Multi-person sleeping respiration monitoring with COTS WiFi devices. In: Proc. of the 15th IEEE Int’l Conf. on Mobile Ad Hoc and Sensor Systems (MASS). Chengdu: IEEE, 2018. 37–45.
    [43] Zeng YW, Wu D, Xiong J, Liu JY, Liu ZP, Zhang DQ. MultiSense: Enabling multi-person respiration sensing with commodity WiFi. Proceedings of the ACM on Interactive, Mobile, Wearable and Ubiquitous Technologies, 2020, 4(3): 102. [doi: 10.1145/3411816]
    [44] Liu JY, Zeng YW, Gu T, Wang LY, Zhang DQ. WiPhone: Smartphone-based respiration monitoring using ambient reflected WiFi signals. Proceedings of the ACM on Interactive, Mobile, Wearable and Ubiquitous Technologies, 2021, 5(1): 23. [doi: 10.1145/3448092]
    [45] 杨铮, 刘云浩. Wi-Fi雷达: 从RSSI到CSI. 中国计算机学会通讯, 2014, 10(11): 55?60.
    Yang Z, Liu YH. Wi-Fi radar: From RSSI to CSI. Communications of the CCF, 2014, 10(11): 55–60 (in Chinese). (查阅网上资料, 未找到对应的英文翻译, 请确认)
    [46] Zhai Q, Han XY, Han Y, Yi JG, Wang SY, Liu T. A contactless on-bed radar system for human respiration monitoring. IEEE Transactions on Instrumentation and Measurement, 2022, 71: 4004210. [doi: 10.1109/TIM.2022.3164145]
    [47] Zhang B, Jiang BY, Zheng R, Zhang XP, Li J, Xu Q. Pi-ViMo: Physiology-inspired robust vital sign monitoring using mmwave radars. ACM Trans. on Internet of Things, 2023, 4(2): 1–27.
    [48] Xiong JJ, Hong H, Zhang HQ, Wang N, Chu H, Zhu XH. Multitarget respiration detection with adaptive digital beamforming technique based on SIMO radar. IEEE Transactions on Microwave Theory and Techniques, 2020, 68(11): 4814–4824. [doi: 10.1109/TMTT.2020.3020082]
    [49] Li Z, Jin T, Guan DF, Xu HT. MetaPhys: Contactless physiological sensing of multiple subjects using RIS-based 4D radar. IEEE Internet of Things Journal, 2023, 10(14): 12616–12626.
    [50] Liu C, Xiong J, Cai L, Feng L, Chen XJ, Fang DY. Beyond respiration: Contactless sleep sound-activity recognition using RF signals. Proceedings of the ACM on Interactive, Mobile, Wearable and Ubiquitous Technologie
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郭政鑫,戴余豪,桂林卿,盛碧云,肖甫.基于IR-UWB的睡眠状态下人体呼吸波形检测方法.软件学报,2024,35(9):4346-4364

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History
  • Received:December 17,2022
  • Revised:March 24,2023
  • Online: September 20,2023
  • Published: September 06,2024
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