Wearables Meet IoT: Synergistic Personal Area Networks (SPANs)
Abstract
:1. Introduction
2. Wearables
3. IoT Sensing
4. SPAN: Synergy of Information from Wearables and IoT Sensors
- Vital sign monitoring provides snapshots or continuous measurements of the user’s vital signs, such as heart rate, respiration rate, and blood pressure.
- 2.
- Activity monitoring can be implemented using:
- Inertial sensors embedded in IoT objects or wearable inertial sensor on user [8];
- Touch sensors that are typically implemented as capacitive or pressure sensors and can indicate the use of a smart object;
- Mechanical and magnetic sensors can indicate opening or general use of the device. For example, the smart pill bottle from Adhere Tech can detect the use of the bottle and transmit information in real-time to the medical server to facilitate drug compliance monitoring of patients [32]. Nonadherence in the U.S. is estimated to be $100–$300 billions of avoidable health costs [33].
- 3.
- Location sensing. The location of the user could be information itself or provide context for measurements. For example, outdoor location (e.g., home, office, physician’s office, park) provides information about activity during the day, but also the context of measurements, such as:
- Blood pressure measurements are typically higher when measured in physician’s office than at home;
- The number of bathroom visits might indicate the development of urinary tract infection;
- User association for automated measurements, such as assigning automated weight scale measurement with the user closest to the weight scale.
- 4.
- 5.
- 6.
- Wide area networks (WANs) use wired, long-range wireless, or cell-phone network connections to interface short-range networks to the Internet and store records in the cloud and on the medical server. That allows physicians, users, and their caregivers access to all the records that the user wants to share with them [38].
4.1. SPAN Applications
4.1.1. User Identification
- Vital sign-based user identification [39,40]. If the IoT object (smart stuff) contains a vital sign monitor, the user with a wearable sensor that monitors the same vital sign can be identified based on the similarity of vital signs from both sensors. For example, heart rate acquired on the water bottle is compared with heart rate from the smartwatch of users in the vicinity. A similar heart rate or a sequence of heart rate values can identify the subject, particularly in the case of the limited number of subjects sharing the same space (e.g., a couple living together, or nursing home). Subject identification may facilitate the annotation of automatically collected records. Javaid et al. present the use of the wearable ECG and tiles with ballistocardiogram (BCG) for user identification and home monitoring [40].
- Activity-based user identification. Interaction with a smart object causes certain activity parameters to be similar, which can lead to user identification. For example, wearable inertial sensors might have some or multiple parameters very similar to the equivalent parameters on the object. We illustrated user identification using the three axis (3D) accelerometer on the smartwatch of the user and in a smart water bottle in Figure 4. A dynamic 3D vector magnitude with no baseline for the smartwatch and the smart water bottle become very similar when the hand holds the water bottle, as can be seen in Figure 4. Therefore, the system can detect if somebody is using my water bottle. That information is critical in nursing homes and hospitals, where detection of the use of a water bottle by an “unauthorized” user might represent a significant health hazard. Moreover, “authorized” users, such as nurses, do not trigger the alarm.
- Identification of the class of users, such as child vs. adult. In [41] we present how capacitive sensing on multiple segments of the object can be used to detect a pattern of the contact interface that can be used to detect if the person handling the object is an adult or a child. In the case of the smaller number of known users (e.g., family members), the system can identify individuals using the object. “Smart” bottles equipped with sensing technology have substantial potential to detect hazardous events, provide instant alarms and warnings to children who handle bottles containing dangerous products, and warn parents/guardians, wherever they are, via text message or other means.
4.1.2. Synergistic Physiological Monitoring
5. Conclusions and Future Work
6. Patents
Funding
Acknowledgments
Conflicts of Interest
References
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Jovanov, E. Wearables Meet IoT: Synergistic Personal Area Networks (SPANs). Sensors 2019, 19, 4295. https://doi.org/10.3390/s19194295
Jovanov E. Wearables Meet IoT: Synergistic Personal Area Networks (SPANs). Sensors. 2019; 19(19):4295. https://doi.org/10.3390/s19194295
Chicago/Turabian StyleJovanov, Emil. 2019. "Wearables Meet IoT: Synergistic Personal Area Networks (SPANs)" Sensors 19, no. 19: 4295. https://doi.org/10.3390/s19194295
APA StyleJovanov, E. (2019). Wearables Meet IoT: Synergistic Personal Area Networks (SPANs). Sensors, 19(19), 4295. https://doi.org/10.3390/s19194295