| Literature DB >> 24556672 |
Alvaro Muro-de-la-Herran1, Begonya Garcia-Zapirain2, Amaia Mendez-Zorrilla3.
Abstract
This article presents a review of the methods used in recognition and analysis of the human gait from three different approaches: image processing, floor sensors and sensors placed on the body. Progress in new technologies has led the development of a series of devices and techniques which allow for objective evaluation, making measurements more efficient and effective and providing specialists with reliable information. Firstly, an introduction of the key gait parameters and semi-subjective methods is presented. Secondly, technologies and studies on the different objective methods are reviewed. Finally, based on the latest research, the characteristics of each method are discussed. 40% of the reviewed articles published in late 2012 and 2013 were related to non-wearable systems, 37.5% presented inertial sensor-based systems, and the remaining 22.5% corresponded to other wearable systems. An increasing number of research works demonstrate that various parameters such as precision, conformability, usability or transportability have indicated that the portable systems based on body sensors are promising methods for gait analysis.Entities:
Year: 2014 PMID: 24556672 PMCID: PMC3958266 DOI: 10.3390/s140203362
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Overview of gait parameters and applications.
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|---|---|---|---|
| Stride velocity | X | X | X |
| Step length | X | X | X |
| Stride length | X | X | X |
| Cadence | X | X | X |
| Step Width | X | X | X |
| Step Angle | X | X | X |
| Step time | X | ||
| Swing time | X | ||
| Stance time | X | ||
| Traversed distance | X | X | |
| Gait autonomy | X | ||
| Stop duration | X | ||
| Existence of tremors | X | ||
| Fall | X | ||
| Accumulated altitude | X | X | |
| Route | X | X | |
| Gait phases | X | X | X |
| Body segment orientation | X | X | |
| Ground Reaction Forces | X | X | |
| Joint angles | X | X | |
| Muscle force | X | X | |
| Momentum | X | X | |
| Body posture (inclination, symmetry) | X | X | X |
| Long-term monitoring of gait | X | X | |
Figure 1.Different technologies for IP based measurement. Reproduced with permission from MESA Imaging.
Figure 2.Time-of-flight working principle.
Figure 3.IRT image processing to extract the essential gait features. Reproduced with permission from Xue et al. [38].
Figure 4.Gait analysis using floor sensors. (a) Steps recognized; (b) time elapsed in each position; (c) profiles for heel and toe impact; and finally (d) image of the prototype sensor mat on the floor. Reproduced with permission from University of Southampton.
Figure 5.Example of AMTI Force Plate showing the three forces and the three moment components along the three measurable GFR axis. Reproduced with permission from AMTI.
Figure 6.FlexiForce piezoresistive pressure sensor.
Figure 7.Instrumented shoe from Smartxa Project: (a) inertial measurement unit; (b) flexible goniometer; and (c) pressure sensors which are situated inside the insole.
Figure 8.Instrumented insole: (a) inertial sensor, Bluetooth, microcontroller and battery module; (b) coil for inductive recharging; and (c) pressure sensors. Reproduced with permission from Stacy Morris Bamberg (Veristride, Salt Lake City, UT, USA).
Figure 9.Flexible Goniometer.
Figure 10.Brainquiry Wireless EMG/EEG/ECG system.
Figure 11.Example of NWS system: BTS GaitLab configuration. (1) infrared videocameras; (2) inertial sensor; (3) GRF measurement walkway; (4) wireless EMG; (5) workstation; (6) video recording system; (7) TV screen; (8) control station. Reproduced with permission from BTS Bioingenieering.
Figure 12.Commercial WS system based on inertial sensors: Xsens MVN. Reproduced with permission from Xsens.
Figure 13.WS system based on (a) inertial sensors and (b) wearable force plates. Reproduced with permission from Tec Gihan Co.
Figure 14.Classification of the reviewed papers published in 2012 and 2013.
Characteristics of different depth measurement methods.
| Camera Triangulation |
High image resolution No special conditions in terms of scene illumination |
At least two cameras needed High computational cost | 400 to 1,900 | [ | 70% [ |
| Time of Flight |
Only one camera is needed It is not necessary to calculate depth manually Real-time 3D acquisition Reduced dependence on scene illumination |
Low resolutions Aliasing effect Problems with reflective surfaces | 239 to 3,700 | [ | 2.66% to 9.25% (EER) [ |
| Structured Light |
Provide great detail Allows robust and precise acquisition of objects with arbitrary geometry and a with a wide range of materials Geometry and texture can be obtained with the same camera |
Irregular functioning with motion scenes Problems with transparent and reflective surfaces Superposition of the light pattern with reflections | 160 to 200 | [ | <1% (Mean diff) [ |
| Infrared Thermography |
Fast, reliable & accurate output A large surface area can be scanned in no time Requires very little skill for monitoring |
Cost of instrument is relatively high Unable to detect the inside temperature if the medium is separated by glass/polythene Emissivity problems | 1.000 to 18.440 | [ | 78%–91% |
Comparison between NWS and WS systems.
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Allows simultaneous analysis of multiple gait parameters captured from different approaches Non restricted by power consumption Some systems are totally non-intrusive in terms of attaching sensors to the body Complex analysis systems allow more precision and have more measurement capacity Better repeatability, reproducibility and less external factor interference due to controlled environment. Measurement process controlled in real time by the specialist. |
Normal subject gait can be altered due to walking space restrictions required by the measurement system Expensive equipment and tests Impossible to monitor real life gait outside the instrumented environment | |
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Transparent analysis and monitoring of gait during daily activities and on the long term Cheaper systems Allows the possibility of deployment in any place, not needing controlled environments Increasing availability of varied miniaturized sensors Wireless systems enhance usability In clinical gait analysis, promotes autonomy and active role of patients |
Power consumption restrictions due to limited battery duration Complex algorithms needed to estimate parameters from inertial sensors Allows analysis of limited number of gait parameters Susceptible to noise and interference of external factors not controlled by specialist |
Classification of existing gait analysis systems.
| Inertial sensors | [ | Segment position | Angle Coeff. Mult. Corr. > 0.96 [ | 91.30 [ | Complex algorithms. Sensible to interferences | ||
| GRF plates | [ | Step Detection | 10% of the range of GRF [ | 17,180 for one foot [ | Bigger size than pressure sensors (less usability) Easy to analyse data | ||
| Pressure sensors | [ | Foot Plantar Pressure | Pressure correlation R > 0.95 (with clinical motion analysis laboratory measures) | 14.58 [ | Simple algorithms. Easy to setup in shoe/insole. Highly nonlinear response | ||
| EMG | [ | Muscle Electrical Activity | SNR = 0.25 microvolt @ 200 Hz [Brainquiry] | 35–350 [ | Need specific knowledge on electrode setup. Sensible to interferences | ||
| UWB | [ | Step Detection | Correlation R = 0.96 (with ultrasound system measures) [ | Not specified | Measurement situation on shoe/foot is critical | ||
| Ultrasound | [ | Step Length | Not Specified | 20.44 [ | Sensible to interferences. Sensor situation is critical | ||
| Goniometer | [ | Joint Angles | R = 0.999 with measures taken with mechanical Goniometer [ | 9.46 [ | Easy to setup and analyse data, but low hysteresis. | ||
| GRF plates | AMTI, Kistler | Step Detection | ±0.1% of load [AMTI] | 30,000 [AMTI] | Need for the subject to contact center of plate for correct measurement | ||
| Pressure sensor mats and platforms | [ | Plantar Pressure Distribution | 80% recognition rate [ | 4,000–54,000 [depending on number of sensors and specifications] | Limitations of space, indoor measurement, and patients ability to make contact with the platform | ||
| Single camera image processing | [ | Individual Recognition | 77.8% recognition rate [ | 400–1,900 [depending on camera specifications] | Simple equipment setup. | ||
| Time of Flight | [ | Segment Position | 2.66%–9.25% EER recognition [ | 200– 3,700 [depending on sensor specifications] | Only one camera neededProblems with reflective surfaces | ||
| Stereoscopic Vision | [ | Gait Phase Detection | 70.18% recognition rate [ | 200–9,000 [depending on camera specifications] | Complex calibration. High computational cost | ||
| Structured Light | [ | Segment Position | Correlation R=0.89 with inertial and pressure sensor measures [ | 160–200 [depending on sensor specifications] | Complex calibration. Lower sensor cost related with other image processing systems | ||
| IR Thermography | [ | Gait Phase Detection | 78%–91% recognition [ | 8,000 to 100,000 [8 camera laboratory as BTS Gaitlab] | Need to take into account emissivity, absorptivity, reflectivity, transmissivity of materials | ||