An Overview of Indoor Localization System for Human Activity Recognition (HAR) in Healthcare
Abstract
:1. Introduction
- The sensing module continuously collects information through sensors on the activities carried out.
- The processing and selection module extracts features that help discriminate between activities.
- The classification module uses the features to identify the individual’s activity.
- Know in real-time how people move within a structure.
- Identify where a particular subject is.
- Activate alarms when particular situations are identified.
- Support security and emergency services to direct them where their intervention is needed.
- Track personnel at risk when they reach designated collection points in the event of an evacuation.
- The presence of obstacles weakens the signal (fast fading);
- The presence of obstacles creates the problem of signals not being in a direct line (not line of sight (NLOS));
- The structure and nature of the construction materials of the indoor environment may create the problem of reflection and refraction (multipathing), making it difficult to determine the correct origin of the signal;
- The climatic changes in the signal’s means of transport affect the propagation speed.
- The space segment consists of a constellation of satellites.
- The control segment comprises ground stations with the task of synchronizing the clocks of all the satellites, knowing their position, and possibly correcting them.
- The user segment comprises an antenna capable of acquiring signals and a receiver capable of decoding and processing them.
2. IPS
Evaluation Metrics
- Accuracy is the main feature that evaluates the average difference between the detected and actual positions (ground truth) [19]. Generally, this value is not fixed but oscillates concerning various parameters; thus, the reference is made to minimum and maximum values. Depending on the technology used, we can have the values in meters reported in Table 1.
- Coverage indicates the functional surface within which the examined technology is effective. Depending on the type of technology used, it takes on different values. IPS coverage usually ranges from a few meters to scalable systems that can cover multiple large environments by adding hardware. In the case of challenging-to-scale technologies, this value represents the maximum local area covered, while, in the application of techniques that can scale (increasing their level of coverage), it represents the distance or area that can be covered by a single cell. Generally, technologies with more excellent coverage typically imply lower accuracy. In Table 1, the values of coverage are reported in meters.
- Scalability indicates the possibility with which the technology can be extended, referring both to the coverage area and to the number of users supported simultaneously [20].
- Security and privacy represent the level of control of access to the subjects’ personal information.
- Cost includes all the costs necessary for the implementation and operation of the system, such as infrastructure costs, installation and maintenance, and energy consumption to run the components. The latter represents a fundamental parameter to ensure system continuity and higher mobility [21].
- Complexity represents the level of complexity of designing, constructing, and maintaining an IPS.
- Support/infrastructure represents the hardware necessary for the system to operate, i.e., if specific equipment is needed, or it can refer to the integration of an infrastructure located in the localization area, such as sensors or transmitters. The density and cost of these additional infrastructures weigh on the expansion capacity of the technology if it is necessary to use more nodes of the infrastructure.
- Continuity indicates the property of continuous operation of an IPS over an appropriate time to perform its specific function, including acceptable outage frequency.
- Usability/user acceptance represents how convenient and usable the technology is to the end user. A simpler infrastructure is easier to use.
- Privacy is a crucial aspect to keep in mind that is not always carefully evaluated in IPS systems. Security mechanisms should be in place to improve user privacy, protecting data from intrusion or misuse [22].
3. Signal Measurement Techniques
3.1. Time-Based Methods
3.1.1. Time of Arrival (TOA)
3.1.2. Time Difference of Arrival (TDOA)
3.1.3. Round Trip Time (RTT)
- Propagation delay, which depends on the distance between the transmitter and the receiver;
- Processing delay that depends on the number of nodes on the network. A node can also experience congestion by slowing the connection and increasing the RTT.
3.2. Receiving Angle
Angle of Arrival
3.3. Connectivity
Received Signal Strength (RSS)
4. Localization Methods
4.1. Trilateration or True-Range Multilateration
4.2. Triangulation
4.3. Pseudo-Range Multilateration
4.4. Fingerprinting
5. Signal Technologies
5.1. Radiofrequency-Based Systems (RF)
5.2. Ultrasound-Based Systems
5.3. Infrared-Based Systems (IR)
5.4. Magnetic Field-Based Systems
5.5. Optical System
5.6. Inertial System
6. Systems for HAR
6.1. Intelligent Metasurfaces
- Do not emit new radio waves;
- No power amplification;
- Low power consumption for operation;
- Low processing capacity for surface configuration.
- Nearly digital-computing-free intelligent sensing.
- Hybrid-computing-based intelligent sensing.
- Hybrid-computing-based intelligent integrated sensing.
6.2. Related Work
- Monitoring of the patient’s status. Various information is collected on the patient’s status concerning standing, walking, supine, and prone activities.
- Localization and tracking of patients. The exact knowledge of the patients allows a quick intervention of the assistants in case of need.
- Data collection connected to the patient activity such as inertial, physiological, environmental, and localization data;
- Design of a convolutional neural network for activity recognition;
- Identification of the exact elderly position.
7. Discussion
8. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Parameter | Wi-Fi | Ultrasound | Infrared | Bluetooth | Rigid | ZigBee | UWB |
---|---|---|---|---|---|---|---|
Accuracy | 1–10 | 0.01–0.1 | 5–10 | 2–15 | 0.5 (passive) 1 (active) | 1–5 | 0.1–1 |
Coverage | 20–50 | 2–10 | 1–5 | 1–30 | 1–100 | 10–100 | 0.50–10 |
Technique | Accuracy | Cost | Advantages | Disadvantages |
---|---|---|---|---|
TOA | High | High | Scalability, does not require any fingerprint | Needs time synchronization, difficult to implement, produces multipath effects |
TOP | High | High | No need time synchronization among devices and received nodes, does not require any fingerprint | Requires time synchronization between the received nodes, difficult to implement in narrow bandwidth, multipath effects |
RTT | High | High | Does not require time synchronization, low complexity | Affected by multipath effects and noise, different processing time delays |
AOA | Medium | High | No need for any fingerprint, no need for time synchronization, low number of APs | Requires additional directional antennas, decreases in accuracy as distance from source increases |
RSS | Low | Medium | No need for synchronization, can be used with different technologies, easy to implement | Suffers from multipath effect, noise, can require fingerprint |
Technology | Measure Method | Cost | Advantages | Disadvantages | Accuracy (m) |
---|---|---|---|---|---|
RFID | Proximity, RSS TOA, TDOA, AOA | High | Does not require LOS between TR and RT, simultaneous and fast reading of multiple tags | Small coverage, multipath effect and signal fluctuation, limited capabilities of passive tags | 0.5 (passive) 1 (active) |
WLAN | RSS, TDOA | Medium | Does not require LOS, presence in multiple buildings, medium scalability | Complex methodology, system redesign in case of changes in the environment | 10–50 |
Bluetooth | TDOA, RSS | Low–medium | Good accuracy, no need additional infrastructure, does not require LOS, present in most smartphones | RF interference, limited coverage and mobility | 2–15 |
UWB | TDOA | High | Low energy consumption, high accuracy, passes through walls and any other obstacles | Needs time synchronization, limited coverage, performance degrades in NLOS. | 0.1–1 |
ZigBee | RSS, AP ID | Low | Low power consumption | Requires special equipment, vulnerable to interference caused by a wide range of signal types | 1–5 |
Ultrasound | TOA, TDOA | Medium | Good accuracy, not affected by multipath | Interference by high-frequency sound, loss of signal for obstruction | 0.01–0.1 |
Infrared | AOA, TOA, TDOA | Medium | Low power, no multipath effect, medium accuracy | Does not penetrate walls, requires LOS, sunlight interference, short range | 5–10 |
Magnetic | AOA, TOA | Medium | Medium power consumption | Requires magnetic field mapping, errors increase with the size of the fingerprinting map | 1–3 |
Optical | Scene analysis, proximity | Medium | Performance improvement by fusion of image data with data from other sensors | The transformation from the image space into the object space requires additional depth information | 0.1 |
Inertial | Dead reckoning | Low | Great reliability, reduced size | Cumulative errors, high complexity | Error range 0.5–2% total traveled distance |
Typology | Advantages | Disadvantages | Accuracy |
---|---|---|---|
Visual-sensor | Ease of use, ease of analysis from images, data reliability, alternative to multiple sensory devices, | Privacy, sensitive to environmental conditions, higher cost, increased processing power, longer processing time | 99% |
Non-visual sensors | Detection of any information about behavior, no privacy issues, lower cost, less processing power, lower power consumption, less processing time | Need for a large set of sensors, data reliability, system vulnerability due to sensor malfunction, lower accuracy values | 70–80% |
Multimodal sensor | Suitable for the collection of data of different nature, lightweight devices, lower power consumption, less processing time | Need for multiple sensors, acceptance issues, need to wear sensors, efficient fusion algorithms | 99% |
Author | Adopted System | Technology | Technique | Accuracy |
---|---|---|---|---|
Jamil [72] | Inertial sensors of smartphone | PDR-BLE | EPBCM/HMM | 99% |
Vandewiele [78] | Cameras and smart home sensors | Visual/Wi-Fi | Unsupervised model | 77% |
Moreira [79] | Inertial sensors of smartphone | Fingerprints | ConVLSTM | 84% |
Ruan [81] | RFID | Wi-Fi | KNN | Not declared |
Dao [82] | UHF/RFID Landmark | Wi-Fi | KNN | 32 cm error |
Guo [83] | Inertial sensors of smartphone | PDR | KNN | 99% |
Wang [84] | Inertial sensor | Wi-Fi fingerprints | C1D | 88% recognition, 95% localization |
Fiorini [86] | Inertial–physiological sensor (ECG) | Bluetooth | DT/SVM/ANN | 0.924–0.994 DT 0.995–0.999 SVM 0.839–0.917 ANM |
Redondi [87] | Anchors/mobile device | Wi-Fi | DT | 99% |
Bibbò [88] | MEMS/ultrasound | Wi-Fi | CNN | 99% recognition 1 cm localization |
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Bibbò, L.; Carotenuto, R.; Della Corte, F. An Overview of Indoor Localization System for Human Activity Recognition (HAR) in Healthcare. Sensors 2022, 22, 8119. https://doi.org/10.3390/s22218119
Bibbò L, Carotenuto R, Della Corte F. An Overview of Indoor Localization System for Human Activity Recognition (HAR) in Healthcare. Sensors. 2022; 22(21):8119. https://doi.org/10.3390/s22218119
Chicago/Turabian StyleBibbò, Luigi, Riccardo Carotenuto, and Francesco Della Corte. 2022. "An Overview of Indoor Localization System for Human Activity Recognition (HAR) in Healthcare" Sensors 22, no. 21: 8119. https://doi.org/10.3390/s22218119
APA StyleBibbò, L., Carotenuto, R., & Della Corte, F. (2022). An Overview of Indoor Localization System for Human Activity Recognition (HAR) in Healthcare. Sensors, 22(21), 8119. https://doi.org/10.3390/s22218119