Abstract:Continuous and accurate respiratory volume monitoring during sleep helps to infer the user’s sleep stage and provide clues about some chronic diseases. The existing works mainly focus on the detection and monitoring of respiratory frequency, and lack the means for continuous monitoring of respiratory volume. Therefore, a system named RF-SLEEP which uses commercial Radio Frequency IDentification (RFID) tags to wirelessly sense the respiratory volume during sleep was proposed. The phase value and timestamp data returned by the tag array attached to the chest surface was collected continuously by RF-SLEEP through the reader, and the displacement amounts of different points of the chest caused by breathing were calculated, then the model of relationship between the displacement amounts of different points of the chest and the respiratory volume was constructed by General Regression Neural Network (GRNN), so as to evaluate the respiratory volume of user during sleep. The errors in the calculation of chest displacement caused by the rollover of the user’s body during sleep were eliminated by RF-SLEEP through attaching the double reference tags to the user’s shoulders. The experimental results show that the average accuracy of RF-SLEEP for continuous monitoring of respiratory volume during sleep is 92.49% on average for different users.
徐晓翔, 常相茂, 陈方进. 基于RFID标签阵列的睡眠期间呼吸量连续监测系统[J]. 计算机应用, 2020, 40(5): 1534-1538.
XU Xiaoxiang, CHANG Xiangmao, CHEN Fangjin. Continuous respiratory volume monitoring system during sleep based on radio frequency identification tag array. Journal of Computer Applications, 2020, 40(5): 1534-1538.
1 YUE S , HE H , WANG H , et al . Extracting multi-person respiration from entangled RF signals [C]// Proceedings of the 2018 ACM on Interactive, Mobile, Wearable and Ubiquitous Technologies. New York: ACM, 2018: No.86. 2 RAHMAN T , ADAMS A T , RAVICHANDRAN R V , et al . DoppleSleep: a contactless unobtrusive sleep sensing system using short-range Doppler radar[C]// Proceedings of the 2015 ACM International Joint Conference on Pervasive and Ubiquitous Computing. New York: ACM, 2015: 39-50. 3 LIU X , CAO J , TANG S , et al . Contactless respiration monitoring via off-the-shelf WiFi devices[J]. IEEE Transactions on Mobile Computing, 2016, 15(10): 2466-2479. 4 SHI S , XIE Y , LI M , et al . Synthesizing wider WiFi bandwidth for respiration rate monitoring in dynamic environments[C]// Proceedings of the 2019 International Conference on Computer Communications. Piscataway: IEEE, 2019: 181-189. 5 LIU J , WANG Y , CHEN Y , et al . Tracking vital signs during sleep leveraging off-the-shelf WiFi[C]// Proceedings of the 16th ACM International Symposium on Mobile Ad Hoc Networking and Computing. New York: ACM, 2015: 267-276. 6 于怡然,常俊,吴柳繁,等 . 基于Wi-Fi信号的免训练呼吸检测[J]. 计算机科学, 2019, 46(11): 304-308. YU Y R , CHANG J , WU L F , et al . Training-free human respiration sensing based on Wi-Fi signal[J]. Computer Science, 2019, 46(11): 304-308. 7 单禹皓,陈通,温万惠,等 . 呼吸信号的非接触式测量[J]. 计算机科学, 2015, 42(10): 43-44, 75. SHAN Y H , CHEN T , WEN W H , et al . Remote sensing respiration signals[J]. Computer Science, 2015, 42(10): 43-44, 75. 8 XU X , YU J , CHEN Y , et al . BreathListener: fine-grained breathing monitoring in driving environments utilizing acoustic signals[C]// Proceedings of the 17th Annual International Conference on Mobile Systems, Applications, and Services. New York: ACM, 2019: 54-66. 9 HUMMEL R , BRADLEY T D , PACKER D , et al . Distinguishing obstructive from central sleep apneas and hypopneas using linear SVM and acoustic features[C]// Proceedings of the 38th International Conference of the IEEE Engineering in Medicine and Biology Society. Piscataway: IEEE, 2016: 2236-2240. 10 NGUYEN P , ZHANG X , HALBOWER A , et al . Continuous and fine-grained breathing volume monitoring from afar using wireless signals[C]// Proceedings of the 35th Annual IEEE International Conference on Computer Communications. Piscataway: IEEE, 2016: 1-9. 11 OH K, SHIN C S , KIM J , et al . Level-set segmentation based respiratory volume estimation using a depth camera[J]. IEEE Journal of Biomedical and Health Informatics, 2019, 23(4): 1674-1682. 12 LEE Y S, PATHIRANA P N , STEINFORT C L , et al . Monitoring and analysis of respiratory patterns using microwave doppler radar[J]. IEEE Journal of Translational Engineering in Health and Medicine, 2014, 2: No.1800912. 13 YANG L , CHEN Y , LI X , et al . Tagoram: real-time tracking of mobile RFID tags to high precision using COTS devices[C]// Proceedings of the 20th Annual International Conference on Mobile Computing and Networking. New York: ACM, 2014: 237-248. 14 LIU T , YANG L , LIN Q , et al . Anchor-free backscatter positioning for RFID tags with high accuracy[C]// Proceedings of the 2014 IEEE Conference on Computer Communications. Piscataway: IEEE, 2014: 379-387. 15 XIAO F , WANG Z , YE N , et al . One more tag enables fine-grained RFID localization and tracking[J]. IEEE/ACM Transactions on Networking, 2018, 26(1): 161-174. 16 WANG Y , ZHENG Y . TagBreathe: monitor breathing with commodity RFID systems[C]// Proceedings of the 37th International Conference on Distributed Computing Systems. Piscataway: IEEE, 2017: 404-413. 17 ZHAO R , WANG D , ZHANG Q , et al . CRH: a contactless respiration and heartbeat monitoring system with COTS RFID tags[C]// Proceedings of the 15th International Conference on Sensing, Communication, and Networking. Piscataway: IEEE, 2018: 1-9. 18 WANG J , VASISHT D , KATABI D . RF-IDraw: virtual touch screen in the air using RF signals[C]// Proceedings of the 2014 ACM Conference on SIGCOMM. New York: ACM, 2014: 235-246.