Full Respiration Rate Monitoring Exploiting Doppler Information with Commodity Wi-Fi Devices
Abstract
:1. Introduction
- A respiration-sensing model based on the Doppler frequency shift was proposed to solve the problem that the breathing depth and location may affect the detectability of CSI amplitude and phase. The feasibility of extracting Doppler frequency shift for respiration monitoring is theoretically verified.
- In view of the phenomenon that Doppler caused by weak chest movement in indoor environment is interfered by multipath effect and cannot be directly extracted, we propose a Doppler spectral energy extraction method to effectively extract breathing signals, including multipath decomposition, dynamic path unit extraction and Doppler shift energy accumulation.
- We design a complete respiration rate-monitoring system and conduct extensive experiments to verify and evaluate its performance in actual indoor home environment. The results demonstrate that our system can accurately estimate the respiration rate and achieve developed performance compared with the existing respiration-sensing system.
2. Related Work
2.1. Contact-Based Respiration Sensing
2.2. Radar-Based Respiration Sensing
2.3. Wi-Fi-Based Respiration Detection Sensing
3. Human Respiration Sensing
3.1. CSI Primer
3.2. Respiration Sensing in the Wi-Fi Fresnel Zone
3.2.1. Fresnel Zone
3.2.2. Respiration-Sensing Model
3.2.3. Respiration Sensing by CSI Amplitude and Phase
3.3. Respiration Sensing Based on Doppler Effect
3.3.1. Respiration-Sensing Model Based on Doppler Effect
3.3.2. Extraction of Doppler Information from CSI
4. Reparation Rate-Monitoring System
4.1. System Overview
4.2. Breathing Detection
4.3. Preprocessing
4.3.1. Data Calibration
4.3.2. Phase Sanitisation
- Carrier frequency offset (CFO): The carrier frequency offset is caused by the incomplete synchronisation of the carrier frequency generated by the oscillator of the receiver and transmitter. The CFO corrector compensated the carrier frequency; however, a residual CFO was still present, which is noted as . In the IEEE802.11n standard, the frequency is allowed to be as high as 100 kHz [29]. Accordingly, a large phase uncertainty is introduced. The CFO is determined only by the hardware characteristics; hence, it is a constant that does not change over time.
- Sampling frequency offset (SFO): In the sampling process of analogue-to-digital convertor, the sampling frequency is offset due to the unsynchronised clock. This phenomenon introduces a time offset termed as between the adjacent sampling points and causes a phase rotation error in the subcarrier. SFO can be considered stable for short periods of time.
- Packet detection delay (PDD): The packets of the Wi-Fi signals are transmitted in the frame format specified by the protocol. The packet detector detects the arrival of a packet by using the preamble. This situation introduces the packet detection time delay , resulting in a phase rotation error. PDD is random for packets arriving at different times.
4.4. Respiration Signal Extraction
4.5. Respiration Rate Estimation
5. Evaluation
5.1. Experiment Configuration
5.2. Performance of Respiration Rate Estimation
5.3. Verifying the Detectability of Breathing Locations
5.4. Impact of Various Factors
5.4.1. Impact of Distance between the Transmitter and the Receiver
5.4.2. Impact of Sampling Rate
6. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Conflicts of Interest
References
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Dou, C.; Huan, H. Full Respiration Rate Monitoring Exploiting Doppler Information with Commodity Wi-Fi Devices. Sensors 2021, 21, 3505. https://doi.org/10.3390/s21103505
Dou C, Huan H. Full Respiration Rate Monitoring Exploiting Doppler Information with Commodity Wi-Fi Devices. Sensors. 2021; 21(10):3505. https://doi.org/10.3390/s21103505
Chicago/Turabian StyleDou, Chendan, and Hao Huan. 2021. "Full Respiration Rate Monitoring Exploiting Doppler Information with Commodity Wi-Fi Devices" Sensors 21, no. 10: 3505. https://doi.org/10.3390/s21103505