Leveraging Off-the-Shelf WiFi for Contactless Activity Monitoring
Abstract
:1. Introduction
- We propose a method for achieving contactless human activity sensing by utilizing ubiquitous WiFi signals, which is non-intrusive, low-cost, and secure for the user.
- We have designed a novel metric based on kurtosis and standard deviation to select an optimal subcarrier set that is sensitive to all target activities from the candidate 30 subcarriers.
- We have implemented our system prototype with a COTS router and a desktop computer and conducted extensive experiments with 10 people over a period of one month. The results indicate the accuracy and robustness of our system.
2. Preliminaries
2.1. Channel State Information
2.2. Support Vector Machine
3. System Design
3.1. System Overview
3.2. Data Collection
3.3. Data Processing
3.3.1. Hampel Filter
3.3.2. Wavelet Filter
3.3.3. Moving Average Filter
3.3.4. Carrier Selection
3.4. Motion Recognition
3.4.1. Data Segments
3.4.2. Feature Extraction and Classification
4. Evaluation
4.1. Implementation
4.1.1. Hardware and Software Implementation
4.1.2. Environment and Participants
4.1.3. Performance Metrics
4.2. Overall Performance
4.3. Impacts of Different Factors
4.3.1. Impact of Transceiver Distance
4.3.2. Impact of Transceiver Height
4.3.3. Impact of Different Classifiers
5. Discussion
- Subtle movement. The proposed system only uses a low-cost COTS router as a transmitter, which limits its ability to sense subtle movements (e.g., heartbeat, respiration, and cough). We will try to deploy a high-gain directional antenna to enhance the power of the transmitted signal or some wearable and skin-attachable sensors to collect more fine-grained information in future experiments so that the proposed method can provide a higher sensing accuracy in recognizing human activity.
- Multiple users. The proposed system can only be applied to sense one person’s body movements at a time. The receiver will collect a mixed signal recording multiple users’ body movements if they perform activities simultaneously, and it is challenging to decouple the CSI signals of individual body movements from the mixed signal.
- Cross-domain. The performance of the proposed system relies on environment-related domains including position, orientation, and static objects. As such, a classifier model trained using data collected in a given environment may not perform well in a new environment. We will try to apply transfer learning or adversarial learning methodologies to improve the cross-domain sensing performance in future work.
6. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Time-Domain Features |
---|
max, min, mean, variance, standard deviation, max–min, kurtosis, skewness, mean crossing rate |
Frequency-Domain Features |
energy, frequency, sensitivity |
Classifier | ||||
---|---|---|---|---|
Metric (%) | SVM | k-NN | DT | RF |
Accuracy | 95.7 | 92.8 | 91.6 | 94.3 |
F1-score | 96 | 92.3 | 92.1 | 94.8 |
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Zhu, Z.; Liu, W.; Zhang, H.; Lu, J. Leveraging Off-the-Shelf WiFi for Contactless Activity Monitoring. Electronics 2024, 13, 3351. https://doi.org/10.3390/electronics13173351
Zhu Z, Liu W, Zhang H, Lu J. Leveraging Off-the-Shelf WiFi for Contactless Activity Monitoring. Electronics. 2024; 13(17):3351. https://doi.org/10.3390/electronics13173351
Chicago/Turabian StyleZhu, Zixuan, Wei Liu, Hao Zhang, and Jinhu Lu. 2024. "Leveraging Off-the-Shelf WiFi for Contactless Activity Monitoring" Electronics 13, no. 17: 3351. https://doi.org/10.3390/electronics13173351
APA StyleZhu, Z., Liu, W., Zhang, H., & Lu, J. (2024). Leveraging Off-the-Shelf WiFi for Contactless Activity Monitoring. Electronics, 13(17), 3351. https://doi.org/10.3390/electronics13173351