Smart Socks and In-Shoe Systems: State-of-the-Art for Two Popular Technologies for Foot Motion Analysis, Sports, and Medical Applications
Abstract
:1. General Considerations Concerning Gait Monitoring Systems
- footwear evaluation (for determining the efficacy of athletic and therapeutic shoes);
- athletic training (for optimizing sports achievements);
- clinical gait analysis (for investigating the walking pattern: normal gait and abnormal walking—toe in, toe out, heel walking, or oversupination);
- evaluation of foot pathologies (e.g., flat foot, diabetic foot, strephenopodia, strephexopodia).
1.1. Sensing Technologies for Gait Monitoring
- capacitive sensors (composed of two plates, electrically conductive, with an insulating elastic layer between them; when a force is applied, the distance between the plates is modified, and a variation of the voltage is thus produced);
- resistive sensors (the most used type; they are made of a conductive polymer; when a force is applied, the resistance of the material decreases with the increase of the applied pressure);
- optoelectronic sensors (composed of a transmitter—generally a laser or a light-emitting diode (LED)—and a receiver—generally a photodiode; between them, there is a silicon-based structure; when a force is applied, it causes a deformation of the cover, the screening of the emitted light, and a proportional variation of the output voltage of the sensor);
- piezoresistive and piezoelectric sensors (devices that use the piezoelectric effect: the variations of an applied pressure are converted into electrical charge and thus can be measured; for the piezoresistive ones, when the material is stretched, a variation of its electrical resistance takes place and can be measured) and textile sensors (conductive inks are used for creating a textile material that is thin and sensitive to pressure; in this material, one can include a high number of sensors, which however have the drawback of being nonlinear and suffering from a significant hysteresis).
1.2. Classification of Gait Monitoring Systems
- Platform systems (generally embedded in a treadmill):They are considered the gold standard in plantar pressure measurement and possess the advantages of a high precision of measurements and a high spatial resolution. However, they also have the drawback that they can be used only in a laboratory or in a hospital (they lack portability).
- In-shoe systems:More flexible and mobile, with improved performance and efficiency in terms of circuit solutions, power consumption, and communication technology, with a reduced cost as compared to platform systems, able to measure the distribution of the plantar pressure within a shoe, and able to provide a high number of recorded steps and, thus, a long-term recording of gait, both indoors and outdoors; however, their precision is inferior to that of platforms;
- Smart wireless insoles:They avoid the drawback of the two previous systems, which have to use electrical wires for sensor connection and for the data acquisition system around the waist. Moreover, as in-shoe systems are not suited for long-term outdoor measurements, smart wireless insoles can be used both indoors and outdoors. They are usually equipped with a data transmission device, such as a Bluetooth or WiFi module, and an energy source, but have the disadvantage of forming an additional elastic layer inside the shoe, which can have a thickness up to several mm and may distort the real data of the foot’s plantar loading. In addition, they are relatively expensive and not suitable for daily use.
- Smart socks:They are textile-based systems with integrated sensors that avoid the drawbacks above, but have the disadvantage of being handmade or using a complicated fabrication technology.
1.3. Features of Foot Motion-Based Systems
- We propose an original definition of smart socks and highlight the most relevant contributions in the field of smart socks and in-shoe systems.
- We compare the performance of different in-shoe systems and platform systems and consider the main applications in fields such as: medicine, sports, and wellness assessment.
- We emphasize the challenges faced by these systems and the issues that are still unsolved.
2. Smart Sock Definition and Principles of the Technology
3. Description of Proposed Solutions Using Smart Socks for Gait and Foot Pressure Analysis
3.1. Smart Socks for Gait Monitoring and Partitioning of Gait Cycle
3.2. Smart Socks Applications for Plantar Pressure Measurements
3.3. Smart Socks for Counting Steps
4. Description of Proposed Methods Using Smart Socks in Health and Wellness Monitoring
4.1. Smart Socks for Patient with Diabetes
4.2. Smart Socks for Periodic Limb Movement Disorder
4.3. Smart Socks for Fall Risk Detection
4.4. MONARCA System: Smart Wearables and Sock for Bipolar Disorder
4.5. Smart Socks and Sensory Augmentation for Prosthetic Limbs
4.6. Smart Socks for Parkinson’s Disease Patients
4.7. Smart Socks for Patients Who Have Suffered Stroke Events
4.8. Smart Socks for Baby Monitoring
4.9. Upper-Limb Smart Textile for Sports Applications
5. Description of the Pedar System, Together with Validation and Repeatability Tests for Pedar and Other In-Shoe and Platform Systems
6. Description of Proposed Methods Using the In-Shoe Pedar System
6.1. Pedar in Medical Applications
6.2. Pedar in Sports Applications
6.3. Other Pedar Applications
7. Description of Proposed Methods Using Other In-Shoe Systems
8. Challenges and Open Issues
9. Conclusions
Author Contributions
Funding
Conflicts of Interest
Abbreviations
CoT | Communication technology |
IC | Integrated circuit |
LED | Light0emitting diode |
GRF | Ground reaction forces |
TSS | Temperature-sensing socks |
NTC | Negative temperature coefficient |
PLMD | Periodic limb movement disorder |
PLM | Periodic limb movements |
sEMG | surface electromyogram |
HPe | Hybrid polymer electrolyte |
GPS | Global positioning system |
WWS | Wrist-worn sensor |
GSR | Galvanic skin response |
PZT | Lead zirconate titanate |
PEDOT:PSS | Poly(3,4-ethylenedioxythiophene) polystyrene sulfonate |
TENG | Triboelectric nanogenerator |
FBG | Fiber Bragg gratings |
DPN | Diabetic peripheral neuropathy |
POF | Polymeric optical fibers |
OSS | Owlet Smart Sock |
AAP | American Academy of Pediatrics |
SIDS | Sudden infant death syndrome |
SpO2 | Oxygen saturation |
HR | Heart rate |
AOP | Apnea of prematurity |
BLE | Bluetooth Low Energy |
NICU | Neonatal intensive care units |
SBG | Smart basketball glove |
DPSS | DAid® Pressure Sock System |
WP | Wave plot |
FPC | Flexible printed circuit board |
RFID | Radio frequency identification |
CoP | Center of pressure |
PPy | Polypyrrole |
STS | Smart textile system |
SVM | Support vector machines |
ANN | Artificial neural networks |
LDA | Linear discriminant analyses |
kNN | k-nearest neighbors |
C-SRS | Compressible soft robotic sensors |
GRPS | Ground reaction pressure sock |
PP | Peak pressure |
PTI | Pressure-time integral |
CA | Contact area |
FTI | Force-time integral |
CT | Contact time |
IPP | Instant of peak pressure |
MaF | Maximum force |
TCC | Total contact cast |
EVA | Ethylene vinyl acetate |
OA | Osteoarthritis |
AOA | Ankle osteoarthritis |
AGA | Ambulatory gait assessment |
MPJ | Metatarsophalangeal joint |
LBP | Low back pain |
WV | Weighted vest |
HRS | Hindfoot relief shoe |
HRO | Hindfoot relief orthosis |
MMP | Maximum mean pressure |
PSL | Preferred stride length |
ACC | Acceleration |
SS | Steady-state |
OC | One leg condition |
TC | Two legs condition |
MPP | Mean plantar pressure |
VGRF | Vertical ground reaction forces |
ACLR | Anterior cruciate ligament reconstruction |
Fmax | Maximum plantar force |
RTS | Return to sports |
RFS | Rearfoot strike |
NRFS | Non-rearfoot strike |
RRI | Running-related injuries |
PSD | Power spectral density |
RMSE | Root mean-squared errors |
SD | Secure Digital |
TO | Take-off |
TD | Touch-down |
BW | Body weight |
BT | Big toe |
OT | Other toes |
MFF | Medial forefoot |
CFF | Center forefoot |
LFF | Lateral forefoot |
MF | Middle foot |
MFF | Medial forefoot |
ML | Medial-lateral |
AP | Antero-posterior |
HHS | High-heeled shoes |
KOA | Knee osteoarthritis |
KL-grade | Kellgren–Lawrence classification |
SI | Smart insole |
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Feature | Description | Motivation |
---|---|---|
Wearable | Implies low-weight devices, | Performing measurements in different environments |
wireless technologies | and conditions, not only in the laboratory | |
Accurate | Uses accurate and reliable devices | Reliable data and new measurements in the same |
scenarios and conditions with the same output | ||
Comfortable | Implies imperceptible casing; | Avoiding disturbing the user and performing |
it is secured against accidental detachment | erroneous experiments | |
Safe | Implies appropriate isolation against | Avoid injures and fatalities |
electrical discharges and ground loops |
System | Application | Method | Sensing (Type/No.) | Communication Technology | Reference |
---|---|---|---|---|---|
Smart sock | People suffering from gait disorders | Conductive thread, placed between a neoprene and a conductive fabric | Resistive textile pressure sensors (polyester-BASF resistant carbon fibers)/6 | Wired (serial data logging) | [23] |
Smart sock | Gait analysis | Comparison of conductive textiles in terms of their sensing ability | Multiple piezo-resistive sensor patches | WiFi | [24] |
Smart sock | Analysis of gait parameters | Algorithm for distinguishing heel strike and non-heel strike walking and running modes | Resistive sensors knitted in the sock/5 | Bluetooth | [17] |
Smart sock | Detection of excessive pronation and supination of the foot; gait cycle partitioning | Values given by the sensors are converted into a pressure vector | Piezoresistive sensors/5 | Bluetooth | [25] |
Smart sock | Gait cycle partitioning | Algorithm with six gait phases | Piezoresistive sensors/5 | Bluetooth | [26] |
Smart sock | Gait cycle partitioning and gait parameters’ determination | Algorithm for segmentation of the gait cycle and for gait parameters determination | Capacitive pressure sensors/8 | Bluetooth | [22] |
Sensoria smart sock and smart shirt | Differentiation between normal and abnormal gait | SVM, ANN, LDA, and kNN | Pressure sensors/3 and accelerometer/1 | wireless (no CoT mentioned) | [27] |
Sensoria smart sock and smart undershirt | Discrimination between three different postures (lying down, sitting, and standing) and various walking and running activities, with different speeds | ANN, LDA, and kNN | Pressure sensors/3 and accelerometer/1 | wireless (no CoT mentioned) | [28] |
Sensoria smart sock | Gait monitoring | Measurement of step count, velocity, and cadence | Pressure sensors/3 and accelerometer/1 | wireless (no CoT mentioned) | [29] |
Sensoria smart sock | Posturographic assessment | Variations of CoP parameter evaluation | Pressure sensors/3 and accelerometer/1 | wireless (no CoT mentioned) | [30] |
Sensoria smart sock | Counting steps in slow walking | Three different methods, using: (1) a smart sock worn on the left foot; (2) a pedometer; (3) a pedometer included as an application in a smartphone | Pressure sensors/3 and accelerometer/1 | Bluetooth | [31] |
Algorithm to implement in Sensoria smart socks | Finding frailty phenotypes | Algorithm using an artificial neural network | Gyroscope/1 | Bluetooth | [31] |
DAid® Pressure Sock System (DPSS) | Gait analysis for normal and flat foot | Plantar pressure measurement | Piezoresistive pressure sensors/8 | Bluetooth | [1,2,32] |
DPSS | Testing of shoe cushioning properties | Plantar pressure measurement | Piezoresistive pressure sensors/8 | Bluetooth | [33] |
Version of DPSS | Gait parameters measurement | Processing, analysis, and representation of gait parameters during outdoor walking and running; foot loading during gait is compared to the propagation of a shock or seismic wave | Piezoresistive pressure sensors/6 | Bluetooth | [14,34] |
Battery-free smart sock | Detection of abnormal changes of relative plantar pressure values | Measurement of relative plantar pressure | Piezoresistive pressure sensors/4 | RFID reader unit, two antennas oriented orthogonally | [35] |
SWEET-Sock | Postural and gait analysis | Measurement of parameters for postural and gait analysis | Piezo-resistive textile sensors/3 and accelerometer/1 | Simblee BLE (Bluetooth Low Energy) | [36] |
GRPS (ground reaction pressure sock) | Determination of the ground reaction pressures | Sensors are placed on top of a BodiTrak vector plate, positioned in turn on a Kistler force plate | Compressible soft robotic sensors (C-SRS)/10 | BLE | [37] |
E-knitted POF-based sock | Measurement of friction during walking | Irradiance loss evaluation | Empa Geniomer® POF/3 | N/A | [38] |
Smart sock | Counting steps | The smart socks gather information concerning motion and the degrees of ankle bending; three algorithms are used: for classification, step counting, and interaction with the user | Accelerometer/1, magnetometer/1, gyroscope/1, bending sensors/4. | wireless (no CoT mentioned; Bluetooth mentioned as future research) | [39] |
Locomotion Type | Walking | Race Walking | Running |
---|---|---|---|
Absolute mean difference (s) | 0.0027 | 0.0024 | 0.0013 |
System | DAid® | BTS |
---|---|---|
Mean ground contact time (s) | 0.281 | 0.298 |
System | Zebris | Sensoria |
---|---|---|
Sway Path (mean ± SD) (mm) | 868 ± 81 | 884 ± 71 |
Mean Sway Velocity (mean ± SD) (mm/s) | 14 ± 2 | 9 ± 1 |
System | Application | Method | Sensing (Type/No.) | Communication Technology | Reference |
---|---|---|---|---|---|
Temperature sock | Temperature foot monitoring in diabetes | Measuring foot temperature, alerting | IC-based and NTC temperature devices | wireless (no CoT mentioned) | [7] |
Texisense smart sock | Plantar ulcer prevention | Tissue overpressure notification | Texisense pressure sensing fabric | Bluetooth | [41,42,43] |
Temperature sensing socks | Smart textiles, diabetes ulcerations | Temperature monitoring and decision-making | Temperature sensing yarn | wireless (no CoT mentioned) | [8] |
Smart sock wireless device | Foot temperature monitoring (diabetes and neuropathy) | Detection of abnormal increase of temperature based on measurements performed every 10 s | Neurofabric™textiles based on temperature microsensors/6 | Bluetooth | [9] |
Smart sock | Foot ulceration prediction | Study correlation between increased skin temperature and plantar pressure overload | Thermal sensors (NTC thermistors)/7 | N/A | [10] |
Distal EMG sock | Body control, fall detection | Distal EMG signal feature estimation | EMG sensors/5 conductive electrode pairs, 6 wet electrodes pairs | N/A | [18] |
Smart wearable sock | PLMD detection | Monitoring the activity of PLM related muscles | sEMG system with Nishijin electrodes/2 | N/A | [44] |
Wellness assessment sock | Wellness statistics | Points-based score using sensors data | HR/HRV, FSR, temperature, GSR, SpO sensors, accelerometer | WiFi | [19] |
Instrumented Sock | Drop foot, gait events’ identification | Kinematic signals derivation based on video camera | resistive strain sensors | Wired | [45] |
MONARCA | Bipolar disorder signs’ recognition | Physical and social activities and behavior recognition based on sensors and smartphone data | Smartphone sensors (GPS, accelerometer), wrist-worn sensor (accelerometer, gyroscope), smart sock (GSR, pulse sensor) | Bluetooth | [20] |
Smart EMG-based socks | Age-related gait changes, fall risk and postural anomalies’ detection, sarcopenia | Linear discriminant analysis | Myoware muscle sensor/2 | Bluetooth | [46] |
proCover | Sensory augmentation for prosthetic | Sensing and haptic feedback | EeonTex LG-SLPA fabric | N/A | [47] |
Self-functional sock | Energy harvesting-based wearables, sports, healthcare | Single electrode mode gait analysis, walking pattern detection, and motion tracking | Hybrid mechanism for sensing devices: piezoelectric and triboelectric | N/A | [48] |
MagicSox | Drop foot detection | Classification normal foot/drop foot based on support vector machine and multiplication of backward differences | FlexiForce A201 (Tekscan) piezoresistive pressure sensor/1, flex sensors/2, gyroscope/1, accelerometer/1 | Bluetooth | [49] |
System | Application | Method | Sensing (Type/No.) | Communication Technology | Reference |
---|---|---|---|---|---|
SmartSox | Foot ulcer parameters’ assessment | Sensors data processing to extract joint angles, temperature, and pressure variation | Optical fiber sensors/5 | N/A (LabVIEW interface only) | [50] |
Owlet Smart Sock | Baby monitoring | Pulse and oxygen levels monitoring | Pulse oximeter | WiFi (base station use is possible), Bluetooth | [51,52,53,54] |
Baby Vida | Baby monitoring | Pulse and oxygen levels monitoring | Pulse oximeter | WiFi (no base station use is possible), Bluetooth | [52,53] |
Component | Role |
---|---|
Sock (textile) | Foot external pressures sensing and acquisition |
Central unit | Gathering data and forwarding to external device |
External device | Data processing and information extraction for estimating foot ulcer risks in the patient |
Parameter | Acronym | Measure Unit | Parameter | Acronym | Measure Unit |
---|---|---|---|---|---|
Peak Pressure | PP | kPa | Pressure-Time Integral | PTI | kPa·s |
Contact Area | CA | cm | Force-Time integral | FTI | N·s |
Contact Time | CT | ms | Instant of Peak Pressure | IPP | ms |
Participants | CoP | p-Value | SI vs. FP | Pedar vs. FP | ||
---|---|---|---|---|---|---|
k | k | |||||
1 | CoPx | 0.0989 | 0.7046 | 0.6655 | 0.6825 | 0.7458 |
CoPy | 0 | 0.9077 | 0.8455 | 0.9401 | 1.08 | |
2 | CoPx | 0 | 0.7837 | 0.8867 | 0.8409 | 1.0492 |
Copy | 0.0001 | 0.9368 | 0.8538 | 0.9244 | 0.9053 |
Feature | Medilogic | OpenGo/Insole3 | Tekscan | Pedar |
---|---|---|---|---|
Pressure sensor model | SohleFlex Sport | Moticon proprietary | FScan 3000E Sport | Pedar-X |
System cost (current quote) | 11,600 € | 1795 €/7500 € | 15,500 € | 14,000 € |
Price including | insoles | insoles/insoles+software | insoles | - |
Pressure sensor technology | Resistive | Capacitive | Resistive | Capacitive |
Number of pressure sensors/insole | Variable based on insole size (up to 240) | 13/16 | Variable based on insole size (up to 960) | 99 |
Pressure sensor density | 0.79 per cm | 0.1 per cm | 3.9 per cm | 0.57–0.78 per cm |
Other sensors | - | 3D accelerometer/3D accelerometer+3D gyroscope | - | - |
Communication technology | WiFi | 2.4 GHz ANT/BLE5.0 | wired, wireless | Bluetooth, fiber optic/TTL |
Analysis Software | medilogic | Beaker/Moticon Science | F-Scan | Pedar |
Insole thickness (at sensor region) | 1.6 mm | 2–3 mm | 0.2 mm | 2.2 mm |
Maximum sampling rate | 300 Hz | 50 Hz/100 Hz | 169 Hz | 100 Hz |
Measurement range | 6–640 kPa | 0–400 kPa/0–500 kPa | 345–862 kPa | 20–600 kPa |
Calibration method | By manufacturer (polybaric characteristics) | No calibration needed | Device: factory insole: human standing or calibration device | Insole: Tru-Blu (pneumatic calibration) |
Recommended time between calibrations | 1 year or 5000 steps | - | Disposable insoles, calibrate at each use | Variable |
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Drăgulinescu, A.; Drăgulinescu, A.-M.; Zincă, G.; Bucur, D.; Feieș, V.; Neagu, D.-M. Smart Socks and In-Shoe Systems: State-of-the-Art for Two Popular Technologies for Foot Motion Analysis, Sports, and Medical Applications. Sensors 2020, 20, 4316. https://doi.org/10.3390/s20154316
Drăgulinescu A, Drăgulinescu A-M, Zincă G, Bucur D, Feieș V, Neagu D-M. Smart Socks and In-Shoe Systems: State-of-the-Art for Two Popular Technologies for Foot Motion Analysis, Sports, and Medical Applications. Sensors. 2020; 20(15):4316. https://doi.org/10.3390/s20154316
Chicago/Turabian StyleDrăgulinescu, Andrei, Ana-Maria Drăgulinescu, Gabriela Zincă, Doina Bucur, Valentin Feieș, and Dumitru-Marius Neagu. 2020. "Smart Socks and In-Shoe Systems: State-of-the-Art for Two Popular Technologies for Foot Motion Analysis, Sports, and Medical Applications" Sensors 20, no. 15: 4316. https://doi.org/10.3390/s20154316
APA StyleDrăgulinescu, A., Drăgulinescu, A. -M., Zincă, G., Bucur, D., Feieș, V., & Neagu, D. -M. (2020). Smart Socks and In-Shoe Systems: State-of-the-Art for Two Popular Technologies for Foot Motion Analysis, Sports, and Medical Applications. Sensors, 20(15), 4316. https://doi.org/10.3390/s20154316