A Review of Gait Analysis Using Gyroscopes and Inertial Measurement Units
Abstract
1. Introduction
2. Review Methodology
2.1. Search Strategy and Selection Criteria
2.2. Eligibility Criteria
3. Results
3.1. Specification of Sensors Used in Papers
3.2. Location of Sensor Placement and Numbers
3.3. Sensor Synchronization
3.4. Overview of Gait Events Detection
Ref. | Sensor Types * | Sensor Location | Number | Sample Frequency | Signal Filter | Method Category | Type of Machine Learning | Target Population |
---|---|---|---|---|---|---|---|---|
[59] | IMU, ZurichMove, Zürich, Switzerland | Wrist, pelvis, foot, head | 4 | 200 Hz | N/A | Machine learning | Convolutional neural networks (CNN) and temporal convolutional networks (TCN) | 79 healthy adults |
[60] | IMU, Xsens MTw sensors Enschede, The Netherlands | Back waist, lateral thigh and shank, dorsum of the foot | 7 | 100 Hz | 4 order Butterworth low-pass filter with 5 Hz cut-off frequency | Rule-based method | 20 healthy adults | |
[61] | IMU, EBIMU-9DOFV5; E2BOX, Seoul, Republic of Korea | Lateral thigh | 1 | 100 Hz | 2 order Butterworth band-pass filter main frequency ±0.5 Hz for acceleration, 2 order Butterworth filter with a 3 Hz cutoff frequency for angular velocity | Rule-based method | 2 healthy adults; 1 patient with left hemiplegia; | |
[62] | IMU, Xsens MTw sensors Enschede, The Netherlands | Foot | 2 | 100 Hz | N/A | Rule-based method | 12 healthy adults and 12 stroke patients | |
[63] | IMU, MTw Awinda XSens, The Netherlands | Dorsum of foot | 2 | 100 Hz | 8 order low-pass Butterworth filter with a 14 Hz cut-off frequency | Rule-based method | 13 healthy adults; 29 patients with multiple sclerosis (MS), and 21 post-stroke hemiplegic patients with spastic equino varus foot (EVF) | |
[64] | IMU, MyoMotion, NORAXON, USA | sacrum, frontal thigh and shank, foot | 4 | 100 Hz | N/A | Machine learning | 1D CNN-Bi-LSTM | 26 healthy adults |
[36] | IMU | Thigh and shank | 2 | 25 Hz | N/A | Machine learning | Deep Learning (DNN, Recursive Neural Network (RNN), LSTM) | 10 healthy adults |
[55] | IMU, Xsens, Enschede, The Netherlands | Lateral mid-thigh and shank | 4 | 100 Hz | 4 order Butterworth low-pass filter with a 10 Hz cut-off frequency | Machine learning | Convolutional neural network (CNN) | 16 healthy adults |
[45] | IMU (gyroscope), Vicon Blue Trident, UK | Lateral shank | 2 | 225 Hz | 4 order Butterworth low-pass filter with a 10 Hz cut-off frequency | Rule-based method | 15 healthy adults | |
[65] | IMU, Invensense, San Jose, CA, USA | Frontal thighs and shanks | 4 | 500 Hz | N/A | Machine learning | Artificial neural networks (ANN) | N/A (based on Benchmark ENABL3S Dataset) |
[66] | IMU, BMI270 BOSCH, Germany | Dorsum of foot | 2 | 73.5 Hz | 5 order Butterworth low-pass filter with a 4 Hz cut-off frequency | Machine learning | Support vector machine (SVM) | 32 healthy adults |
[67] | IMU, Bionic Pro (Motesque, Germany), SageMotion (SageMotion, USA), | Lateral lower legs | 2 | 500 Hz (Bionic Pro), 100 Hz (SageMotion) | Low-pass Butterworth filter with 15 Hz cut-off frequency | Rule-based method | 51 healthy adults and 41 stroke patients | |
[68] | IMU, Xsens, Enschede, The Netherlands | Frontal waist, shank, dorsum of foot | 5 | 100 Hz | N/A | Machine learning | Bi-directional long short-term memory (bi-LSTM) | 3 healthy adults |
[69] | IMU | Shank, thigh, and waist | 6 | N/A | N/A | Machine learning | Deep neural network (DNN) | N/A (based on ENABL3S dataset) |
[50] | IMU, MetaMotionC, MbientLab, San Fransisco, CA, USA | Shank | 2 | 100 Hz | N/A | Machine learning | Fully convolutional network (FCN) | 5 healthy adults |
[47] | IMU, MPU 9250, Wit Motion, China | Lateral shank | 1 | 100 Hz | 2 order Butterworth filter with 10 Hz cut off frequency | Rule-based method | 10 healthy adults | |
[70] | IMU, SEEED XIAO nRF52840 Sense, China | Lateral shank | 2 | 100 Hz | N/A | Rule-based method | 8 healthy adults | |
[71] | IMU, Adafruit BNO085, USA | Frontal thigh, shank | 2 | N/A | N/A | Machine learning | Time series forest classifier | N/A |
[40] | IMU (gyroscope), INDIP wearable multi-sensor system, Italy | Dorsum of foot | 2 | 100 Hz | Low-pass FIR filter, n = 120 coefficients, 3.2 Hz cut off frequency, Savitzky–Golay filter | Rule-based method | 18 healthy adults | |
[51] | IMU, MPU9250, InvenSense, Japan | Frontal thigh, shank, dorsum of foot | 3 | 100 Hz | Mean filtering algorithm | Machine learning | Hidden Markov model (HMM) | 17 healthy adults |
[72] | IMU, JY901, China | Lateral thigh, shank, dorsum of foot | 6 | 100 Hz | N/A | Machine learning | Data pre-filtering long short-term memory and convolutional neural network (DPF-LSTM-CNN) | 20 healthy adults |
[44] | IMU, Delsys Trigno IM, Delsys Inc., Boston, MA, USA | Gluteus maximus, biceps femoris, vastus lateralis, gastrocnemius, tibialis anterior, erector spinae, rectus abdominus, dorsum of foot | 16 | 148 Hz | N/A | Machine learning | Random forest, long short-term memory (LSTM), bi-directional LSTM (bi-LSTM) | 30 healthy adults |
[42] | Gyroscope, MPU6050, USA | Frontal thigh, shank | 2 | 1000 Hz | interpolation filtering | Machine learning | Long short term memory (LSTM) | 7 healthy adults |
[38] | IMU | Dorsum of foot | 1 | 200 Hz | Low-pass filter | Rule-based method | N/A | |
[73] | IMU, MPU9250 InvenSense, Japan | Hip, left/right thigh, left/right shank, and left/right foot | 7 | 200 Hz | N/A | Machine learning | Temporal convolutional network (TCN), Long short term memory (LSTM) | 10 healthy adults |
[74] | IMU, Xsens MTw Awinda, The Netherlands | Lateral thigh, thigh pocket, frontal shank, dorsum of foot | 4 | 100 Hz | 2 order Butterworth filter with a cut-off frequency of 15 Hz in foot and shank, 1.5 Hz in thigh | Machine learning | Hidden Markov model (HMM) | 9 healthy adults |
[58] | IMU, Physilog 5, GaitUp Ltd., Lausanne, Switzerland | Dorsum of foot | 1 | 512 Hz | N/A | Machine learning | Decision trees | 40 healthy adults |
[75] | IMU, ZurichMOVE, Switzerland | Lateral ankle | 2 | 200 Hz | 1 order high-pass Butterworth filter with a 0.0002 Hz cut-off frequency | Rule-based method | 17 healthy adults; 10 patients with spinal cord injury | |
[76] | IMU, BOSCH BMI family, Germany | Frontal thigh, shank, dorsum of foot | 3 | N/A | N/A | Machine learning | Long short term memory (LSTM) | 2 healthy adults |
[77] | IMU, IMU-Z2, ZMP Inc., Tokyo, Japan | Trunk, the frontal thighs, shank | 5 | 100 Hz | 5 order low-pass Butterworth filter with 2 Hz cut off frequency | Rule-based method | 7 healthy adults; 15 patients with knee osteoarthritis | |
[43] | IMU, Xsens MTw Awinda, Xsens Technologies B.V., Enschede, The Netherlands | Lateral ankle | 2 | 100 Hz | Gaussian smoothing filter | Machine learning | Long short term memory (LSTM) | 16 healthy adults; 11 patients with glaucoma and 37 patients with chronic low back pain |
[78] | IMU, Noraxon U.S.A. Inc., Scottsdale, Arizona, USA | Lateral shank | 1 | 200 Hz | High-pass IIR filter with 0.15 Hz cut off frequency, 4 order Butterworth filter with a 10 Hz cut-off frequency | Rule-based method | 11 healthy adults; 14 patients with Parkinson and 9 patients with stroke | |
[79] | IMU (gyroscope), MTw Awinda, Xsens, Enschede, The Netherlands | Lateral thigh | 2 | 100 Hz | 2 order Butterworth filter with 10 Hz cut off frequency | Rule-based method | 10 healthy adults; 8 patients with chronic phase after stroke | |
[80] | IMU (gyroscope), Shimmer Research, Dublin, Ireland | Frontal thigh, shank | 4 | 51.2 Hz | low-pass Butterworth filter with a 5 Hz cut-off frequency | Rule-based method | 12 healthy adults; 13 patients with Parkinson | |
[81] | IMU, MEMS PA-GS, China | Dorsum of foot | 1 | 100 Hz | N/A | Rule-based method | 10 healthy adults | |
[82] | IMU, Invensense, Sunnyvale, CA, USA | Dorsum of foot | 1 | 100 Hz | N/A | Machine learning | Hidden Markov model (HMM) | 8 healthy adults |
[41] | IMU, PABLO Tyromotion GmbH, Graz, Austria | Dorsum of foot | 2 | 110 Hz | Moving average filter | Rule-based method | 39 healthy adults | |
[83] | IMU, Xsens MTw, Enschede, Netherlands, Opal, V2 APDM Inc., Portland, OR, USA) | Trunk, shank | 3 | 60, 75,100 Hz | N/A | Rule-based method | 10 healthy adults; 10 patients with vestibular neuritis | |
[57] | IMU, MPU-6050 InvenSense, USA | Lateral shank | 2 | 100 Hz | N/A | Machine learning | Support vector machine (SVM) | 13 healthy adults; 8 patients with peripheral neuropathy, 13 patients with post-stroke, 15 patients with Parkinson |
[84] | IMU, XSens® Technologies, Enschede, the Netherlands | Dorsum of foot | 2 | 100 Hz | N/A | Rule-based method | 10 healthy adults; 22 patients with progressive multiple sclerosis | |
[85] | IMU, Myon/Cometa aktos-T, Milan, Italy | Pelvis, thighs, shank, dorsum of foot | 7 | 50 Hz | N/A | Machine learning | Deep convolutional neural networks (DCNN) | 12 healthy adults |
[86] | IMU, ZurichMOVE, Switzerland | Shank, wrist, chest | 5 | 50 Hz | 1 order low pass Butterworth filter with a 5 Hz and 12 Hz cut-off frequency for acceleration and angular velocity | Rule-based method | 40 healthy adults | |
[56] | IMU, MPU-6050 InvenSense, Inc. San Jose, CA, USA | Foot heel | 2 | 50 Hz | N/A | Machine learning | Support vector machine (SVM) | 4 healthy adults; 6 patients with idiopathic Parkinson |
[87] | IMU (gyroscope), MPU-6050 InvenSense, Inc. San Jose, CA, USA | Lateral side of shoe | 2 | N/A | Moving average filter | Rule-based method | 1 healthy adult; 1 patient with chronic post-stroke, and 1 chronic myelopathic | |
[88] | IMU (gyroscope), Trigno Research+, Delsys, MA, USA | Foot heel | 2 | 148 Hz | 4 order low pass Butterworth filter with a 6 Hz cut-off frequency | Rule-based method | 6 healthy adults | |
[53] | IMU, TSND151 ATR-Promotions, Japan | Upper body, thighs, lower legs, and feet | 7 | N/A | N/A | Mechanical modelling | 1 healthy adult | |
[37] | Gyroscope, ADXRS652, ±250°/s Yaw Rate Gyro, Analog Devices Inc., Norwood, MA, USA | Right leg | 1 | 1500 Hz | 4 order Butterworth lowpass filter with a 15 Hz cut-off frequency | Rule-based method | 13 healthy adults | |
[89] | IMU, ADIS16448 Analog Devices, USA | Upper part of the lateral shanks | 2 | 256 Hz | N/A | Rule-based method | 97 healthy adults; 4 patients with idiopathic normal pressure hydrocephalus | |
[90] | IMU | Dorsum of foot | 2 | 100 Hz | 2 order low-pass Butterworth filter with 17 Hz and 15 Hz cut-off frequency for accelerometer and gyroscope signals | Machine learning | Hidden Markov model (HMM) | 9 healthy adults; 9 patients with hemiparesis |
[91] | IMU | Thigh and shank | 2 | 100 Hz | N/A | Machine learning | Quadratic discriminant analysis (QDA) classifier | 5 patients with stroke |
[92] | IMU, MPU-6150 InvenSense, Inc. San Jose, CA, USA | Frontal thigh and shank | 2 | 100 Hz | N/A | Rule-based method | 10 healthy adults | |
[93] | IMU | Lateral thigh and shank | 2 | 128 Hz | 5 order low pass Butterworth filter with a 5 Hz cut-off frequency | Rule-based method | 10 healthy adults; 20 patients with total knee arthroplasty | |
[46] | IMU | Medial side of the right foot | 2 | 100 Hz | N/A | Rule-based method | 16 healthy adults | |
[94] | IMU (gyroscope), APDM, Inc. Oregon, USA | Lateral thigh, medial shank | 4 | 128 Hz | 3 order Butterworth filters with cut off at 1 Hz intervals from 2 Hz to 20 Hz | Rule-based method | 8 healthy adults | |
[95] | IMU (gyroscope), MPU-6050, InvenSense, Inc. San Jose, CA, USA | Dorsum of foot | 2 | 100 Hz | digital 1st order low-pass filter low-pass filter with a cut-off frequency of 40 Hz | Rule-based method | 10 healthy adults | |
[96] | IMU, JY901 Wei TeZhiNeng Company, China | Dorsum of foot | 2 | 100 Hz | low-pass filter with a 40 Hz cut-off frequency | Rule-based method | 11 healthy adults | |
[49] | IMU (gyroscope), Xsens MTw sensors Enschede, The Netherlands | Shank | 2 | 100 Hz | low pass finite impulse response filter, with a stop-band attenuation of 60 dB A zero-phase filter | Rule-based method | 16 patients with knee arthroplasty | |
[52] | IMU (gyroscope) | Thigh and shank | 4 | N/A | N/A | Mechanical modelling | 11 healthy adults | |
[97] | IMU (gyroscope) | Thigh and shank | 4 | 50 Hz | N/A | Rule-based method | 11 healthy adults | |
[98] | IMU | Thigh and shank, waist | 6 | 100 Hz | Low-pass filter for acceleration and high-pass filter for gyroscope | Mechanical modelling | 1 healthy adult; 1 patient with stroke, and 1 patient with Parkinson | |
[99] | IMU, OpalTM, APDM, USA | Lower trunk, ankle | 3 | 128 Hz | N/A | Rule-based method | 10 healthy adults | |
[39] | IMU, MTx Xsens, The Netherlands | Thigh, shank, dorsum of foot | 3 | 100 Hz | N/A | Rule-based method | 4 healthy adults | |
[54] | IMU (gyroscope), XBus Master, Xsens Technologies, The Netherland | Lateral thigh, shank, frontal dorsum of foot | 3 | 60 Hz | Low-pass Butterworth filter with 15 Hz cut-off frequency | Machine learning | Hidden Markov model (HMM) | 10 healthy adults |
[48] | IMU (gyroscope), ITG3200, InvenSense, InvenSense; Sunnyvale, CA, USA | Frontal shank | 2 | 50 Hz | N/A | Rule-based method | 10 healthy adults; 10 patients with Vestibular Neuritis | |
[100] | IMU (gyroscope) | Frontal shank, mid-thigh | 4 | 40 Hz | N/A | Rule-based method | 7 healthy adults; 6 patients with Parkinson | |
[101] | IMU (gyroscope), Microstrain, Inc, USA | Thigh and shank | 4 | 200 Hz | N/A | Rule-based method | 16 healthy adults |
3.5. Rule-Based Methods
3.5.1. Rule-Based Methods Based on Gyroscopes
3.5.2. Rule-Based Methods Based on IMUs
3.6. Machine Learning Methods
3.6.1. General Approach for Machine Learning in Gait Events Detection
3.6.2. Machine Learning Methods Using Gyroscope and IMU
3.7. Validation Approach
3.8. Gait Physical Quantities
3.9. Application of Gait Measurement
4. Discussion
4.1. Advantages and Challenges in Using Gyroscope and IMU
4.2. Comparison Between Gait Events Detection Method
4.3. Clinical Applications and Future Directions
5. Limitations
6. Conclusions
Supplementary Materials
Author Contributions
Funding
Conflicts of Interest
References
- Winter, D.A.; McFadyen, B.J.; Dickey, J.P. Adaptability of the CNS in Human Walking. In Advances in Psychology; Patla, A.E., Ed.; North-Holland: Amsterdam, The Netherlands, 1991; Volume 78, pp. 127–144. [Google Scholar]
- Grimmer, M.; Riener, R.; Walsh, C.J.; Seyfarth, A. Mobility related physical and functional losses due to aging and disease–A motivation for lower limb exoskeletons. J. Neuroeng. Rehabil. 2019, 16, 2. [Google Scholar] [CrossRef]
- Prajapati, N.; Kaur, A.; Sethi, D. A Review on Clinical Gait Analysis. In Proceedings of the 5th International Conference on Trends in Electronics and Informatics (ICOEI), Tirunelveli, India, 3–5 June 2021; pp. 967–974. [Google Scholar]
- Lofterød, B.; Terjesen, T.; Skaaret, I. Gait analysis-a new diagnostic tool. Tidsskr. Nor. Laegeforen. 2005, 125, 2014–2016. [Google Scholar]
- Whittle, M.W. Normal Gait. In Gait Analysis; Elsevier: Amsterdam, The Netherlands, 2007. [Google Scholar]
- Hulleck, A.A.; Menoth Mohan, D.; Abdallah, N.; El Rich, M.; Khalaf, K. Present and future of gait assessment in clinical practice: Towards the application of novel trends and technologies. Front. Med. Technol. 2022, 4, 901331. [Google Scholar] [CrossRef] [PubMed]
- Wallmann, H.W. Introduction to Observational Gait Analysis. Home Health Care Manag. Pract. 2009, 22, 66–68. [Google Scholar] [CrossRef]
- Toro, B.; Nester, C.; Farren, P. A review of observational gait assessment in clinical practice. Physiother. Theory Pract. 2009, 19, 137–149. [Google Scholar] [CrossRef]
- Leal-Junior, A.; Frizera-Neto, A. Gait analysis: Overview, trends, and challenges. In Optical Fiber Sensors for the Next Generation of Rehabilitation Robotics; Academic Press: Cambridge, MA, USA, 2022; pp. 53–64. [Google Scholar]
- Van der Kruk, E.; Reijne, M.M. Accuracy of human motion capture systems for sport applications; state-of-the-art review. Eur. J. Sport Sci. 2018, 18, 806–819. [Google Scholar] [CrossRef] [PubMed]
- Peters, D.M.; O’Brien, E.S.; Kamrud, K.E.; Roberts, S.M.; Rooney, T.A.; Thibodeau, K.P.; Balakrishnan, S.; Gell, N.; Mohapatra, S. Utilization of wearable technology to assess gait and mobility post-stroke: A systematic review. J. Neuroeng. Rehabil. 2021, 18, 67. [Google Scholar] [CrossRef]
- Biswas, N.; Chakrabarti, S.; Jones, L.D.; Ashili, S. Smart wearables addressing gait disorders: A review. Mater. Today Commun. 2023, 35, 106250. [Google Scholar] [CrossRef]
- Almuteb, I.; Hua, R.; Wang, Y. Smart insoles review (2008–2021): Applications, potentials, and future. Smart Health 2022, 25, 100301. [Google Scholar] [CrossRef]
- Rani, V.; Kumar, M. Human gait recognition: A systematic review. Multimed. Tools Appl. 2023, 82, 37003–37037. [Google Scholar] [CrossRef]
- Aminian, K.; Rezakhanlou, K.; Andres, E.D.; Fritsch, C.; Leyvraz, P.-F.; Robert, P. Temporal feature estimation during walking using miniature accelerometers: An analysis of gait improvement after hip arthroplasty. Med. Biol. Eng. Comput. 1999, 37, 686–691. [Google Scholar] [CrossRef] [PubMed]
- Mason, R.; Godfrey, A.; Barry, G.; Stuart, S. Wearables for running gait analysis: A study protocol. PLoS ONE 2023, 18, e0291289. [Google Scholar] [CrossRef] [PubMed]
- Horsley, B.; Tofari, P.; Halson, S.; Kemp, J.; Dickson, J.; Maniar, N.; Cormack, S. Does Site Matter? Impact of Inertial Measurement Unit Placement on the Validity and Reliability of Stride Variables During Running: A Systematic Review and Meta-analysis. Sports Med. 2021, 51, 1449–1489. [Google Scholar] [CrossRef]
- Suzuki, M.; Mitoma, H.; Yoneyama, M. Quantitative Analysis of Motor Status in Parkinson’s Disease Using Wearable Devices: From Methodological Considerations to Problems in Clinical Applications. Park. Dis. 2017, 2017, 6139716. [Google Scholar] [CrossRef]
- Das, R.; Paul, S.; Mourya, G.; Kumar, N.; Hussain, M. Recent Trends and Practices Toward Assessment and Rehabilitation of Neurodegenerative Disorders: Insights From Human Gait. Front. Neurosci. 2022, 16, 859298. [Google Scholar] [CrossRef]
- Boekesteijn, R.; van Gerven, J.; Geurts, A.; Smulders, K. Objective gait assessment in individuals with knee osteoarthritis using inertial sensors: A systematic review and meta-analysis. Gait Posture 2022, 98, 109–120. [Google Scholar] [CrossRef] [PubMed]
- Lu, R.; Xu, Y.; Li, X.; Fan, Y.; Zeng, W.; Tan, Y.; Ren, K.; Chen, W.; Cao, X. Evaluation of Wearable Sensor Devices in Parkinson’s Disease: A Review of Current Status and Future Prospects. Park. Dis. 2020, 2020, 4693019. [Google Scholar] [CrossRef]
- Rovini, E.; Maremmani, C.; Cavallo, F. How Wearable Sensors Can Support Parkinson’s Disease Diagnosis and Treatment: A Systematic Review. Front. Neurosci. 2017, 11, 555. [Google Scholar] [CrossRef]
- Subramaniam, S.; Faisal, A.I.; Deen, M.J. Wearable Sensor Systems for Fall Risk Assessment: A Review. Front. Digit. Health 2022, 4, 921506. [Google Scholar] [CrossRef]
- Bet, P.; Castro, P.C.; Ponti, M.A. Fall detection and fall risk assessment in older person using wearable sensors: A systematic review. Int. J. Med. Inform. 2019, 130, 103946. [Google Scholar] [CrossRef]
- Amin, T.; Mobbs, R.J.; Mostafa, N.; Sy, L.W.; Choy, W.J. Wearable devices for patient monitoring in the early postoperative period: A literature review. Mhealth 2021, 7, 50. [Google Scholar] [CrossRef] [PubMed]
- Hindle, B.R.; Keogh, J.W.L.; Lorimer, A.V. Inertial-Based Human Motion Capture: A Technical Summary of Current Processing Methodologies for Spatiotemporal and Kinematic Measures. Appl. Bionics Biomech. 2021, 2021, 6628320. [Google Scholar] [CrossRef] [PubMed]
- Kavanagh, J.; Menz, H. Accelerometry: A technique for quantifying movement patterns during walking. Gait Posture 2008, 28, 1–15. [Google Scholar] [CrossRef] [PubMed]
- Rueterbories, J.; Spaich, E.; Larsen, B.; Andersen, O. Methods for gait event detection and analysis in ambulatory systems. Med. Eng. Phys. 2010, 32, 545–552. [Google Scholar] [CrossRef]
- Mobbs, R.; Perring, J.; Raj, S.; Maharaj, M.; Yoong, N.; Sy, L.; Fonseka, R.; Natarajan, P.; Choy, W. Gait metrics analysis utilizing single-point inertial measurement units: A systematic review. Mhealth 2022, 8, 9. [Google Scholar] [CrossRef]
- Wahlstrom, J.; Skog, I. Fifteen Years of Progress at Zero Velocity: A Review. IEEE Sens. J. 2021, 21, 1139–1151. [Google Scholar] [CrossRef]
- Caldas, R.; Mundt, M.; Potthast, W.; Buarque de Lima Neto, F.; Markert, B. A systematic review of gait analysis methods based on inertial sensors and adaptive algorithms. Gait Posture 2017, 57, 204–210. [Google Scholar] [CrossRef]
- Li, W.; Lu, W.; Sha, X.; Xing, H.; Lou, J.; Sun, H.; Zhao, Y. Wearable Gait Recognition Systems Based on MEMS Pressure and Inertial Sensors: A Review. IEEE Sens. J. 2022, 22, 1092–1104. [Google Scholar] [CrossRef]
- Vu, H.T.T.; Dong, D.; Cao, H.L.; Verstraten, T.; Lefeber, D.; Vanderborght, B.; Geeroms, J. A Review of Gait Phase Detection Algorithms for Lower Limb Prostheses. Sensors 2020, 20, 3972. [Google Scholar] [CrossRef]
- Prasanth, H.; Caban, M.; Keller, U.; Courtine, G.; Ijspeert, A.; Vallery, H.; von Zitzewitz, J. Wearable Sensor-Based Real-Time Gait Detection: A Systematic Review. Sensors 2021, 21, 2727. [Google Scholar] [CrossRef]
- Ouzzani, M.; Hammady, H.; Fedorowicz, Z.; Elmagarmid, A. Rayyan—A web and mobile app for systematic reviews. Syst Rev. 2016, 5, 210. [Google Scholar] [CrossRef]
- Terán-Pineda, D.; Thurnhofer-Hemsi, K.; Fernández-Rodríguez, J.D.; Domínguez, E. Deep Learning Models for Gait Event Prediction. In Proceedings of the 2024 International Joint Conference on Neural Networks (IJCNN), Yokohama, Japan, 30 June–5 July 2024; pp. 1–8. [Google Scholar]
- Fadillioglu, C.; Stetter, B.; Ringhof, S.; Krafft, F.; Sell, S.; Stein, T. Automated gait event detection for a variety of locomotion tasks using a novel gyroscope-based algorithm. Gait Posture 2020, 81, 102–108. [Google Scholar] [CrossRef] [PubMed]
- Yamagishi, S.; Jing, L. Pedestrian Dead Reckoning with Low-Cost Foot-Mounted IMU Sensor. Micromachines 2022, 13, 610. [Google Scholar] [CrossRef]
- Qiu, S.; Wang, Z.; Zhao, H.; Hu, H. Using Distributed Wearable Sensors to Measure and Evaluate Human Lower Limb Motions. IEEE Trans. Instrum. Meas. 2016, 65, 939–950. [Google Scholar] [CrossRef]
- Prigent, G.; Aminian, K.; Cereatti, A.; Salis, F.; Bonci, T.; Scott, K.; Mazza, C.; Alcock, L.; Del Din, S.; Gazit, E.; et al. A robust walking detection algorithm using a single foot-worn inertial sensor: Validation in real-life settings. Med. Biol. Eng. Comput. 2023, 61, 2341–2352. [Google Scholar] [CrossRef] [PubMed]
- Laidig, D.; Jocham, A.; Guggenberger, B.; Adamer, K.; Fischer, M.; Seel, T. Calibration-Free Gait Assessment by Foot-Worn Inertial Sensors. Front. Digit. Health. 2021, 3, 736418. [Google Scholar] [CrossRef]
- Guo, Z.; Zheng, H.; Wu, H.; Zhang, J.; Zhou, G.; Long, J. Transferable multi-modal fusion in knee angles and gait phases for their continuous prediction. J. Neural Eng. 2023, 20, 036019. [Google Scholar] [CrossRef]
- Sarshar, M.; Polturi, S.; Schega, L. Gait Phase Estimation by Using LSTM in IMU-Based Gait Analysis-Proof of Concept. Sensors 2021, 21, 5749. [Google Scholar] [CrossRef]
- Hollinger, D.; Schall, M.; Chen, H.; Bass, S.; Zabala, M. The Influence of Gait Phase on Predicting Lower-Limb Joint Angles. IEEE Trans. Med. Robot. Bionics 2023, 5, 343–352. [Google Scholar] [CrossRef]
- Salminen, M.; Perttunen, J.; Avela, J.; Vehkaoja, A. A novel method for accurate division of the gait cycle into seven phases using shank angular velocity. Gait Posture 2024, 111, 1–7. [Google Scholar] [CrossRef]
- Bertuletti, S.; Della Croce, U.; Cereatti, A. A wearable solution for accurate step detection based on the direct measurement of the inter-foot distance. J. Biomech. 2019, 84, 274–277. [Google Scholar] [CrossRef]
- Chen, W.; Li, C.; Fang, X.; Zhang, Q. A Method for Real-Time Prediction of Gait Events Based on Walking Speed Estimation. IEEE Sens. J. 2024, 24, 37986–37996. [Google Scholar] [CrossRef]
- Kim, S.; Kim, J.; Lee, H.; Lee, H.; Kwon, J.; Kim, N.; Kim, M.; Hwang, J.; Han, G. A quantitative analysis of gait patterns in vestibular neuritis patients using gyroscope sensor and a continuous walking protocol. J. Neuroeng. Rehabil. 2014, 11, 1–9. [Google Scholar] [CrossRef] [PubMed]
- De Vroey, H.; Staes, F.; Weygers, I.; Vereecke, E.; Vanrenterghem, J.; Deklerck, J.; Van Damme, G.; Hallez, H.; Claeys, K. The implementation of inertial sensors for the assessment of temporal parameters of gait in the knee arthroplasty population. Clin. Biomech. 2018, 54, 22–27. [Google Scholar] [CrossRef] [PubMed]
- Guo, Y.; Hutabarat, Y.; Owaki, D.; Hayashibe, M. Speed-Variable Gait Phase Estimation During Ambulation via Temporal Convolutional Network. IEEE Sens. J. 2024, 24, 5224–5236. [Google Scholar] [CrossRef]
- Lu, Y.; Zhu, J.; Chen, W.; Ma, X. An IMU-Based Real-Time Gait Detection Method for Intelligent Control of Knee Assistive Devices. IEEE Trans. Instrum. Meas. 2023, 72, 1–9. [Google Scholar] [CrossRef]
- Allseits, E.; Agrawal, V.; Lucarevic, J.; Gailey, R.; Gaunaurd, I.; Bennett, C. A practical step length algorithm using lower limb angular velocities. J. Biomech. 2018, 66, 137–144. [Google Scholar] [CrossRef]
- Fukutoku, K.; Nozaki, T.; Murakami, T. Measurement of Joint Moments using Wearable Sensors. IEEE J. Ind. Appl. 2020, 9, 125–131. [Google Scholar] [CrossRef]
- Taborri, J.; Rossi, S.; Palermo, E.; Patane, F.; Cappa, P. A novel HMM distributed classifier for the detection of gait phases by means of a wearable inertial sensor network. Sensors 2014, 14, 16212–16234. [Google Scholar] [CrossRef]
- Tang, L.; Shushtari, M.; Arami, A. IMU-Based Real-Time Estimation of Gait Phase Using Multi-Resolution Neural Networks. Sensors 2024, 24, 2390. [Google Scholar] [CrossRef]
- Pérez-Ibarra, J.; Siqueira, A.; Krebs, H. Identification of Gait Events in Healthy and Parkinson’s Disease Subjects Using Inertial Sensors: A Supervised Learning Approach. IEEE Sens. J. 2020, 20, 14984–14993. [Google Scholar] [CrossRef]
- Wang, L.; Sun, Y.; Li, Q.; Liu, T.; Yi, J. Two Shank-Mounted IMUs-Based Gait Analysis and Classification for Neurological Disease Patients. IEEE Robot. Autom. Lett. 2020, 5, 1970–1976. [Google Scholar] [CrossRef]
- Zago, M.; Tarabini, M.; Spiga, M.; Ferrario, C.; Bertozzi, F.; Sforza, C.; Galli, M. Machine-Learning Based Determination of Gait Events from Foot-Mounted Inertial Units. Sensors 2021, 21, 839. [Google Scholar] [CrossRef]
- Kim, Y.K.; Pai, S.G.S.; Choi, J.-O.; Tan, K.Z.; Gwerder, M.; Frautschi, A.; Taylor, W.R.; Singh, N.B. Leveraging Deep Learning and Wearables for Automatically Identifying Gait Event: Effects of Age and Location of Sensors on the Assessment of Gait Events. IEEE Sens. J. 2025, 25, 792–802. [Google Scholar] [CrossRef]
- Anaya-Campos, L.E.; Sanchez-Fernandez, L.P.; Quinones-Uriostegui, I. Motion Smoothness Analysis of the Gait Cycle, Segmented by Stride and Associated with the Inertial Sensors’ Locations. Sensors 2025, 25, 368. [Google Scholar] [CrossRef]
- Yang, S.; Koo, B.; Lee, S.; Jang, D.; Shin, H.; Choi, H.; Kim, Y. Determination of Gait Events and Temporal Gait Parameters for Persons with a Knee-Ankle-Foot Orthosis. Sensors 2024, 24, 964. [Google Scholar] [CrossRef]
- Wang, X.; Zhang, F.; Shi, C.; Jiang, W.; Wang, K.; Wu, C.; Chen, H.; Wu, J.; Chai, G.; Shen, Q.; et al. A Modified Method of Wearable Gait Analysis for Stroke Patients Based on the Peak Width Threshold and Phase Re-Segmentation. IEEE Sens. J. 2024, 24, 29258–29270. [Google Scholar] [CrossRef]
- Voisard, C.; de l’Escalopier, N.; Ricard, D.; Oudre, L. Automatic gait events detection with inertial measurement units: Healthy subjects and moderate to severe impaired patients. J. Neuroeng. Rehabil. 2024, 21, 104. [Google Scholar] [CrossRef]
- Vittoria Guerra, B.M.; Sozzi, S.; Pizzocaro, S.; De Nunzio, A.M.; Schmid, M. AI Processing of Wearable IMU Data for Exoskeleton Gait Analysis. In Proceedings of the 2024 IEEE 8th Forum on Research and Technologies for Society and Industry Innovation (RTSI), Milan, Italy, 18–24 September 2024; pp. 380–384. [Google Scholar]
- Mohamed, S.A.; Martinez-Hernandez, U. A Hybrid Bayesian-Heuristic Inference System for Recognition of Gait Phase. In Proceedings of the 2024 International Joint Conference on Neural Networks (IJCNN), Yokohama, Japan, 30 June–5 July 2024; pp. 1–6. [Google Scholar]
- Marimon, X.; Mengual, I.; López-de-Celis, C.; Portela, A.; Rodríguez-Sanz, J.; Herráez, I.; Pérez-Bellmunt, A. Kinematic Analysis of Human Gait in Healthy Young Adults Using IMU Sensors: Exploring Relevant Machine Learning Features for Clinical Applications. Bioengineering 2024, 11, 105. [Google Scholar] [CrossRef]
- Lanotte, F.; Okita, S.; O’Brien, M.K.; Jayaraman, A. Enhanced gait tracking measures for individuals with stroke using leg-worn inertial sensors. J. Neuroeng. Rehabil. 2024, 21, 219. [Google Scholar] [CrossRef]
- Jeon, H.; Lee, D. Bi-Directional Long Short-Term Memory-Based Gait Phase Recognition Method Robust to Directional Variations in Subject’s Gait Progression Using Wearable Inertial Sensor. Sensors 2024, 24, 1276. [Google Scholar] [CrossRef]
- Javed, T.; Raza, A.; Maqbool, H.F.; Zafar, S.; Taborri, J.; Rossi, S. Multi-Class Classification of Human Activity and Gait Events Using Heterogeneous Sensors. J. Sens. Actuator Netw. 2024, 13, 85. [Google Scholar] [CrossRef]
- Akhetova, S.M.; Roembke, R.; Adamczyk, P. Detecting Toe-Off and Initial Contact in Real-Time With Self-Adapting Thresholds. J. Biomech. Eng. 2024, 146, 114502. [Google Scholar] [CrossRef]
- Shiao, Y.; Bhagat, R. Gait Phase Identification and Damping Control for Knee Orthosis Using Time Series Forest Classifier. Appl. Sci. 2023, 13, 10807. [Google Scholar] [CrossRef]
- Liu, K.; Liu, Y.; Ji, S.; Gao, C.; Zhang, S.; Fu, J. A Novel Gait Phase Recognition Method Based on DPF-LSTM-CNN Using Wearable Inertial Sensors. Sensors 2023, 23, 5905. [Google Scholar] [CrossRef]
- Li, J.; Liu, X.; Wang, Z.; Zhou, X.; Wang, Z. Sensor Combination Selection for Human Gait Phase Segmentation Based on Lower Limb Motion Capture With Body Sensor Network. IEEE Trans. Instrum. Meas. 2022, 71, 1–14. [Google Scholar] [CrossRef]
- Garcia, F.; Perez-Ibarra, J.; Terra, M.; Siqueira, A. Adaptive Algorithm for Gait Segmentation Using a Single IMU in the Thigh Pocket. IEEE Sens. J. 2022, 22, 13251–13261. [Google Scholar] [CrossRef]
- Werner, C.; Easthope, C.; Curt, A.; Demko, L. Towards a Mobile Gait Analysis for Patients with a Spinal Cord Injury: A Robust Algorithm Validated for Slow Walking Speeds. Sensors 2021, 21, 7381. [Google Scholar] [CrossRef] [PubMed]
- Vidyarani, K.; Talasila, V.; Megharjun, N.; Supriya, M.; Prasad, K.; Prashanth, G. An inertial sensing mechanism for measuring gait parameters and gait energy expenditure. Biomed. Signal Process. Control. 2021, 70, 103056. [Google Scholar] [CrossRef]
- Tsurumiya, K.; Hayasaka, W.; Komatsu, A.; Tsukamoto, H.; Suda, T.; Iwami, T.; Shimada, Y. Quantitative Evaluation Related to Disease Progression in Knee Osteoarthritis Patients During Gait. Adv. Biomed. Eng. 2021, 10, 51–57. [Google Scholar] [CrossRef]
- Romijnders, R.; Warmerdam, E.; Hansen, C.; Welzel, J.; Schmidt, G.; Maetzler, W. Validation of IMU-based gait event detection during curved walking and turning in older adults and Parkinson’s Disease patients. J. Neuroeng. Rehabil. 2021, 18, 28. [Google Scholar] [CrossRef] [PubMed]
- Revi, D.; De Rossi, S.; Walsh, C.; Awad, L. Estimation of Walking Speed and Its Spatiotemporal Determinants Using a Single Inertial Sensor Worn on the Thigh: From Healthy to Hemiparetic Walking. Sensors 2021, 21, 6976. [Google Scholar] [CrossRef]
- Luksys, D.; Jatuzis, D.; Jonaitis, G.; Griskevicius, J. Application of continuous relative phase analysis for differentiation of gait in neurodegenerative disease. Biomed. Signal Process. Control. 2021, 67, 102558. [Google Scholar] [CrossRef]
- Liu, X.; Li, N.; Xu, G.; Zhang, Y.G. A Novel Robust Step Detection Algorithm for Foot-Mounted IMU. IEEE Sens. J. 2021, 21, 5331–5339. [Google Scholar] [CrossRef]
- Liu, L.; Wang, H.; Li, H.; Liu, J.; Qiu, S.; Zhao, H.; Guo, X. Ambulatory Human Gait Phase Detection Using Wearable Inertial Sensors and Hidden Markov Model. Sensors 2021, 21, 1347. [Google Scholar] [CrossRef]
- Celik, Y.; Stuart, S.; Woo, W.; Godfrey, A. Wearable Inertial Gait Algorithms: Impact of Wear Location and Environment in Healthy and Parkinson’s Populations. Sensors 2021, 21, 6476. [Google Scholar] [CrossRef]
- Vienne-Jumeau, A.; Oudre, L.; Moreau, A.; Quijoux, F.; Edmond, S.; Dandrieux, M.; Legendre, E.; Vidal, P.; Ricard, D. Personalized Template-Based Step Detection From Inertial Measurement Units Signals in Multiple Sclerosis. Front. Neurol. 2020, 11, 261. [Google Scholar] [CrossRef]
- Su, B.; Smith, C.; Farewik, E. Gait Phase Recognition Using Deep Convolutional Neural Network with Inertial Measurement Units. Biosensors 2020, 10, 109. [Google Scholar] [CrossRef]
- Renggli, D.; Graf, C.; Tachatos, N.; Singh, N.; Meboldt, M.; Taylor, W.R.; Stieglitz, L.; Schmid Daners, M. Wearable Inertial Measurement Units for Assessing Gait in Real-World Environments. Front. Physiol. 2020, 11, 90. [Google Scholar] [CrossRef] [PubMed]
- Perez-Ibarra, J.C.; Siqueira, A.A.G.; Krebs, H.I. Real-Time Identification of Gait Events in Impaired Subjects Using a Single-IMU Foot-Mounted Device. IEEE Sens. J. 2020, 20, 2616–2624. [Google Scholar] [CrossRef]
- Hutabarat, Y.; Owaki, D.; Hayashibe, M. Quantitative Gait Assessment With Feature-Rich Diversity Using Two IMU Sensors. IEEE Trans. Med. Robot. Bionics 2020, 2, 639–648. [Google Scholar] [CrossRef]
- Bäcklund, T.; Öhberg, F.; Johansson, G.; Grip, H.; Sundström, N. Novel, clinically applicable method to measure step-width during the swing phase of gait. Physiol. Meas. 2020, 41, 065005. [Google Scholar] [CrossRef]
- Sánchez Manchola, M.; Bernal, M.; Munera, M.; Cifuentes, C. Gait Phase Detection for Lower-Limb Exoskeletons using Foot Motion Data from a Single Inertial Measurement Unit in Hemiparetic Individuals. Sensors 2019, 19, 2988. [Google Scholar] [CrossRef] [PubMed]
- Lou, Y.; Wang, R.; Mai, J.; Wang, N.; Wang, Q. IMU-Based Gait Phase Recognition for Stroke Survivors. Robotica 2019, 37, 2195–2208. [Google Scholar] [CrossRef]
- Han, Y.C.; Wong, K.I.; Murray, I. Gait Phase Detection for Normal and Abnormal Gaits Using IMU. IEEE Sens. J. 2019, 19, 3439–3448. [Google Scholar] [CrossRef]
- Chapman, R.; Moschetti, W.; Van Citters, D. Stance and swing phase knee flexion recover at different rates following total knee arthroplasty: An inertial measurement unit study. J. Biomech. 2019, 84, 129–137. [Google Scholar] [CrossRef]
- Allseits, E.; Agrawal, V.; Prasad, A.; Bennett, C.; Kim, K. Characterizing the Impact of Sampling Rate and Filter Design on the Morphology of Lower Limb Angular Velocities. IEEE Sens. J. 2019, 19, 4115–4122. [Google Scholar] [CrossRef]
- Figueiredo, J.; Felix, P.; Costa, L.; Moreno, J.C.; Santos, C.P. Gait Event Detection in Controlled and Real-Life Situations: Repeated Measures From Healthy Subjects. IEEE Trans. Neural Syst. Rehabil. Eng. 2018, 26, 1945–1956. [Google Scholar] [CrossRef]
- Ding, S.; Ouyang, X.; Liu, T.; Li, Z.; Yang, H. Gait Event Detection of a Lower Extremity Exoskeleton Robot by an Intelligent IMU. IEEE Sens. J. 2018, 18, 9728–9735. [Google Scholar] [CrossRef]
- Allseits, E.; Lucarevic, J.; Gailey, R.; Agrawal, V.; Gaunaurd, I.; Bennett, C. The development and concurrent validity of a real-time algorithm for temporal gait analysis using inertial measurement units. J. Biomech. 2017, 55, 27–33. [Google Scholar] [CrossRef]
- Zhang, W.; Tomizuka, M.; Byl, N. A Wireless Human Motion Monitoring System for Smart Rehabilitation. J. Dyn. Syst. Meas. Control. 2016, 138, 111004. [Google Scholar] [CrossRef]
- Storm, F.; Buckley, C.; Mazzà, C. Gait event detection in laboratory and real life settings: Accuracy of ankle and waist sensor based methods. Gait Posture 2016, 50, 42–46. [Google Scholar] [CrossRef]
- Hundza, S.; Hook, W.; Harris, C.; Mahajan, S.; Leslie, P.; Spani, C.; Spalteholz, L.; Birch, B.; Commandeur, D.; Livingston, N. Accurate and Reliable Gait Cycle Detection in Parkinson’s Disease. IEEE Trans. Neural Syst. Rehabil. Eng. 2014, 22, 127–137. [Google Scholar] [CrossRef] [PubMed]
- Gouwanda, D. Comparsion of gait symmetry indicators in overground walking and treadmill walking using wireless gyroscope. J. Mech. Med. Biol. 2014, 14, 1450006. [Google Scholar] [CrossRef]
- Miller, E.J.; Sheehan, R.C.; Kaufman, K.R. IMU filter settings for high intensity activities. Gait Posture 2022, 91, 26–29. [Google Scholar] [CrossRef]
- Galna, B.; Wood, E.; Griffiths, S.; Jackson, D.; Rivadella, A.; Spears, I. Synchronisation of multiple unconnected inertial measurement units using software correction. J. Biomech. 2025, 183, 112632. [Google Scholar] [CrossRef]
- Kuderle, A.; Roth, N.; Zlatanovic, J.; Zrenner, M.; Eskofier, B.; Kluge, F. The placement of foot-mounted IMU sensors does affect the accuracy of spatial parameters during regular walking. PLoS ONE 2022, 17, e0269567. [Google Scholar] [CrossRef]
- Zhao, H.; Wang, Z.; Qiu, S.; Wang, J.; Xu, F.; Wang, Z.; Shen, Y. Adaptive gait detection based on foot-mounted inertial sensors and multi-sensor fusion. Inf. Fusion 2019, 52, 157–166. [Google Scholar] [CrossRef]
- Grimmer, M.; Schmidt, K.; Duarte, J.E.; Neuner, L.; Koginov, G.; Riener, R. Stance and Swing Detection Based on the Angular Velocity of Lower Limb Segments During Walking. Front. Neurorobot. 2019, 13, 57. [Google Scholar] [CrossRef]
- Lee, M.; Youm, C.; Jeon, J.; Cheon, S.M.; Park, H. Validity of shoe-type inertial measurement units for Parkinson’s disease patients during treadmill walking. J. Neuroeng. Rehabil. 2018, 15, 1–12. [Google Scholar] [CrossRef]
- Aşuroğlu, T.; Açıcı, K.; Berke Erdaş, Ç.; Kılınç Toprak, M.; Erdem, H.; Oğul, H. Parkinson’s disease monitoring from gait analysis via foot-worn sensors. Biocybern. Biomed. Eng. 2018, 38, 760–772. [Google Scholar] [CrossRef]
- Granja Dominguez, A.; Romero Sevilla, R.; Aleman, A.; Duran, C.; Hochsprung, A.; Navarro, G.; Paramo, C.; Venegas, A.; Lladonosa, A.; Ayuso, G.I. Study for the validation of the FeetMe(R) integrated sensor insole system compared to GAITRite(R) system to assess gait characteristics in patients with multiple sclerosis. PLoS ONE 2023, 18, 1–17. [Google Scholar] [CrossRef]
- Subramaniam, S.; Majumder, S.; Faisal, A.I.; Deen, M.J. Insole-Based Systems for Health Monitoring: Current Solutions and Research Challenges. Sensors 2022, 22, 438. [Google Scholar] [CrossRef]
- Shabani, S.; Bourke, A.K.; Muaremi, A.; Praestgaard, J.; O’Keeffe, K.; Argent, R.; Brom, M.; Scotti, C.; Caulfield, B.; Walsh, L.C. An Automatic Foot and Shank IMU Synchronization Algorithm: Proof-of-concept. In Proceedings of the 2022 44th Annual International Conference of the IEEE Engineering in Medicine & Biology Society (EMBC), Glasgow, UK, 11–15 July 2022; pp. 4210–4213. [Google Scholar]
- Han, Y.C.; Wong, K.I.; Murray, I. Automatic Synchronization of Markerless Video and Wearable Sensors for Walking Assessment. IEEE Sens. J. 2019, 19, 7583–7590. [Google Scholar] [CrossRef]
- Perry, J.; Burnfield, J.M. Fundamental. In Gait Analysis Normal and Pathological Function; SLACK: Thorofare, NJ, USA, 2010; pp. 3–6. [Google Scholar]
- Perry, J.; Burnfield, J.M. Phases of Gait, Fundamental. In Gait Analysis: Normal and Pathological Function, 2nd ed.; SLACK Incorporated: Thorofare, NJ, USA, 2010; pp. 9–16. [Google Scholar]
Ref. | Validation Equipment or Method | Results for Gait Events, Gait Phases Detection |
---|---|---|
[59] | F1-score, temporal error, precision and recall | TCN models demonstrated lower temporal error (20 ms) for both HS and TO events. |
[60] | Motion capture system (Vicon system), pressure mat system (GaitRite) | All events (HS, HO) were identified with less than a 2% difference from those obtained with the photogrammetry system |
[61] | Force plates | The smallest error in gait event detection was found at IC, and the largest error rate was observed at OTO with an error rate of −2.8 ± 1.5% in the patient group. Overall, the error rates were calculated to be within 3% for all cases. |
[62] | Footscan2 plate system (RSscan International Company, Belgium) | The study did not directly state accuracy metrics for gait events, but used the accuracy of spatiotemporal parameters (stride length, step length, stride velocity, and cadence). The mean absolute errors (MAEs) of the stride length, step length, stride velocity, and cadence are 1.77 ± 1.22 cm, 2.40 ± 1.83 cm, 0.02 ± 0.01 m/s, and 1.16 ± 1.37 steps/min, respectively. |
[63] | GAITRite® walkway, F1-score, precision and recall | For the results of the health test cohort. The median absolute error is 8 ms for TO and 7 ms for HS. The F1-score, precision and recall are all 100%. Multiple sclerosis and equino varus foot cohorts, with F1-scores of 99.4% and 96.3% respectively, and median absolute errors of 18 ms and 26 ms. |
[64] | Accuracy, F1-scores, precision and recall | 98.64% accuracy in stance and swing identification |
[36] | Force sensitive resistor (FSR), Positive Predictive Value | Average detection accuracy of HS event is 96.64%, with an average detection latency of approximately 20 ms when used DNN model |
[55] | Spatial root mean squared error (sRMSE), spatial mean absolute error (sMAE), temporal mean absolute error (tMAE) | Model had a spatial root mean square error of 5.00 ± 1.65%, and a temporal mean absolute error of 2.78 ± 0.97% evaluated at the HS. |
[45] | Force plates, motion capture system | The mean errors for each gait event were IC: −1.6 ± 6.3 ms, HO: −0.9 ± 29.3 ms, TO: 0.4 ± 9.0 ms, feet adjacent: −0.5 ± 7.4 ms, and tibia vertical: −0.9 ± 6.4 ms. The range of intra-class correlation coefficient for all gait events had range from 0.896 to 0.998. |
[65] | Accuracy, F1-scores, confusion matrices | The study reports 7 gait phases, including LR, MSt, TSt, PSw, IS, MSw, and TSw, and compared with the results of LSTM. Average online accuracy of 98.69% and 97.94% for seen and unseen subjects, respectively. |
[66] | Force sensitive resistor (FSR) | The Support Vector Machine (SVM) model using a cubic kernel achieved an accuracy rate of 92.4% when differentiating between gait events using the computed statistical features |
[67] | Pressure mat system (GaitRite) | The enhanced gait segmentation algorithm demonstrated greater accuracy than the Salarian gait segmentation algorithm when detecting gait events within one second, for both FO (96% vs. 90%) and FC (94% vs. 91%). |
[68] | Force sensitive resistor (FSR) | The overall accuracy of gait phases recognition is 86.43%. The accuracy of different gait phases, such as swing phase: 91.39%, FF: 85.45%, HS: 85.08%, and HO: 83.82%. |
[69] | Accuracy, MSE, F1-score, precision and recall | 99.96 ± 0.05% for gait event detection. Error rates were around 0.1 to 0.3% on all events |
[50] | Force plates | 97% accuracy in gait phase estimation for both overground and treadmill walking |
[47] | Electromyography(EMG); treadmill force plate (AMTI, USA) | The mean prediction errors for IC and TO events were −4.6 and 2.9 ms. The prediction time range for IC events in the experiments is 50–150 ms, while for TO events, it is 40–180 ms |
[70] | Force sensitive resistor (FSR) | The gait event detection success rate for IC was 100% and for TO was 99.72%. The predicted IC and TO events had a mean lead of 8.95 ms and 4.42 ms relative to FSR IC event timing |
[71] | Foot switch, motion capture system | N/A |
[40] | Force sensitive resistor (FSR), precision and recall, accuracy, sensitivity | N/A |
[51] | Force sensitive resistor (FSR), F1-score, precision and recall | High-performance scores (F1-score of gait events ≥0.92). The gait events prediction for HS and TO were about 77 ± 10 ms and 141 ± 10 ms in advance, respectively. |
[72] | Force platform, accuracy and macro-F1-score | The accuracy of gait phase recognition reached 97.21% |
[44] | Motion capture system (Vicon system) | N/A |
[42] | Virtual reality, F1-score, precision and recall | Precision of 83.7 ± 7.7% in gait phase prediction |
[38] | Video collection during experiment | Estimation error of MSt was about 7.34% in average |
[73] | Motion capture system, accuracy, F1-score, precision and recall | Gait phase segmentation using the TCN-LSTM approach yielded an accuracy of 98.9% with 98.9% and 98.8% for precision and recall. F1-score of 98.9% |
[74] | A set of rules using a foot-mounted IMU | The median delays compared with gold standard are HS: −3 0 ms, FF: 40 ms, HO: −10 ms, TO: 0 ms. Median F1-score ≥ 0.955 for all events in intra-subject evaluation |
[58] | Force platform (AMTI OR6-7, Advanced Mechanical Technology, Inc., Watertown, MA, USA) | Gait events classifiers returned an accuracy of 91–93%, while the stance vs. swing classifier reached 95.6%. gait events identification returned an average error between −11 ms and 5 ms (95% CI, HS) and between −13 ms and 50 ms TO. |
[75] | GRAIL platform with treadmill and force plates | A mean error of −2 ± 9 ms and 20 ± 40 ms for detecting the IC and FC. |
[76] | Pressure sensor | The detection of gait events such as HS, HO, and TO obtained 100% accuracy with the IMU. The delay between the estimation of the gait event, and its actual occurrence is upper bounded at 10 ms |
[77] | Statistics (ANOVA, post-hoc Tukey–Kramer test, Spearman’s rank-order correlation), video | The largest error between IMUs and the video-based foot impact detection was 0.03 s |
[43] | Accuracy | The accuracy of the model in detecting the three gait phases (TO, MSt, HS) was very high (close to 99.5%). |
[78] | Motion capture system (Qualisys, Göteborg, Sweden), F1-score, precision and recall, mean absolute error | IMU-based gait event detection showed high recall (IC: ≥97%, FC: ≥96%), high precision (IC: ≥100%, IC: ≥100%) and high F1-score (IC: ≥99%, FC: ≥98%) |
[79] | Motion capture system (Qualisys, Göteborg, Sweden) | N/A |
[80] | Statistics (mean and root mean square, ANOVA test) | N/A |
[81] | N/A | N/A |
[82] | Accuracy, F1-score, precision and recall | The accuracy of the gait phase using the HMM model under the three parameter adjustment methods was 91.59%, 91.16% and 91.88% respectively |
[41] | Zebris Rehawalk instrumented treadmills | The error (mean ± standard deviation) for the relative stance duration is 1.04 ± 1.34% and swing duration is −1.01 ± 1.35% for healthy subjects |
[83] | Absolute difference | Systematic delays were reported for IC: 0.006 s and FC: −0.029 s in lower back algorithm, whereas 0.01 s delay in IC detection was reported for the shank-based algorithm |
[57] | Motion capture system (Vicon system) | The mean errors of HS and TO were −14 ms and 23 ms respectively. |
[84] | Force plate (GaitRite), accuracy, F1-score, precision and recall, absolute mean difference | The F1-score for healthy subjects was 1. Both precision and recall results were also 1. |
[85] | Accuracy, F1-score, precision and recall | Overall, the DCNN detected swing phase with the highest classification accuracy (99.3%), followed by PSw (96.2%), MSt (95.8%). The lowest recognition accuracy was observed for TSt (92.9%). |
[86] | Motion capture system (Vicon system) | N/A |
[56] | Force sensitive resistor (FSR), F1-score, precision and recall | High accuracy for the healthy group (F1-score: 0.988) and Parkinson’s disease group (F1-score: 0.974) when using heuristic threshold-based method. Average absolute mean difference across the four events was 71 ± 62 ms for healthy group and 57 ± 61 ms for PD group. |
[87] | Video, F1-score, precision and recall, mean values of the time differences, absolute mean differences | High accuracy for the three subjects: healthy (F1-score: 0.99), hemiparetic (0.97) and myelopathic (0.96). Detection of HS in advance with an average MD of −44 ms and detected TO with a small delay of 25 ms (average MD across subjects). |
[88] | Motion capture system (Optitrack, NaturalPoint, OR, USA) and force plates (AMTI, MA, USA) | Temporal differences for average IC detection is 4.22 ± 15.48 ms, for average TO detection is −8.31± 21.02 ms |
[53] | Foot pressure measuring system (T&T medilogic Medizintechnic GmbH) | N/A |
[37] | Force plate (Advanced Mechanical Technology Inc., Watertown, MA, USA) | The absolute mean error of IC was 7 ± 3 ms, and the relative mean error was 1.04 ± 0.48%. The absolute mean error of TO was 19 ± 11 ms, and the relative mean error was 2.86 ± 1.62%. |
[89] | Motion capture system (Oqus®, Qualisys AB, Gothenburg, Sweden) | N/A |
[90] | Force sensitive resistor (FSR), true positive rate (TPR) and true negative rate (TNR), | Overall accuracy using threshold was 63.96% for the healthy group and 65.43% for the pathological group. Overall accuracy using HMM was highest 81.44% for the healthy group and 78.06% for the pathological group. |
[91] | Force sensitive resistor (FSR) | Accuracy results are above 96.5% for detection gait phases |
[92] | Force sensitive resistor (FSR) | The mean accuracy of classifying HS and TO as normal/abnormal is 94.4% |
[93] | Motion capture system (OptiTrack Motive Body 1.10, NaturalPoint, Inc., Corvallis, OR) | Average flexion at gait events for HS (5.4° ± 2.3° vs. 10.7° ± 1.4°, p < 0.0001), MSt (22.7° ± 3.2° vs. 21.9° ± 4.0°, p = 0.54), TO (14.7° ± 1.5° vs. 11.9° ± 3.3, p = 0.06), and MSw (72.4° ± 6.8° vs. 69.2° ± 2.8°, p = 0.20) |
[46] | Motion capture system (Vicon Bonita) | N/A |
[94] | N/A | Difference in detection timing was an average of 50 ms late for HS, while TO was detected an average of 35 ms late for TO1 and 70 ms late for TO2 |
[95] | Force sensitive resistor (FSR) | HS was the gait event most accurately detected under control (accuracy of 100%) and real-life situations (accuracy > 96.98%). |
[96] | Force plate system (AMTI, Watertown, USA) | The mean time errors of HS and TO detection are −10 ms and 19 ms. |
[49] | Motion capture system (NaturalPoint, Corvalis, USA) | Errors in timing estimation (±0.08 s) of TO events and 0.01 s of IC event. |
[52] | MatScan system (Vertical ground reaction force) | N/A |
[97] | MatScan system (Vertical ground reaction force) | Negative zero crossing showed good concurrence for HS event timing with a mean difference of −1.5 samples (30 ms) and 72% of gait events. |
[98] | Motion capture system (PhaseSpace IMPULSE system) | N/A |
[99] | Pressure-sensing insoles (F-Scan 3000E, Tekscan) | 100% detection IC and FC when shank method was used. |
[39] | Motion capture system (Vicon system) | N/A |
[54] | True positive rate (TPR) and true negative rate (TNR) | The highest values of specificity and sensitivity (>0.98) for the three classifiers examined here were obtained when the angular velocity of the foot was processed. |
[48] | Statistic (Kolmogorov-Smirnov, ANOVA test, Kruskal-Wallis, Mann–Whitney U test, post-hoc tests) | N/A |
[100] | Pressure mat system (GaitRite CIR Systems Inc., Havertown, PA, USA), high-speed video camera system (Canon EX-FH25 Exilim) | Probability of true-positive event detection for the IMU system is 100%, and the probability of false-positive event detection is 0% when referenced to the video system and to the pressure mat. |
[101] | N/A | N/A |
Disclaimer/Publisher’s Note: The statements, opinions and data contained in all publications are solely those of the individual author(s) and contributor(s) and not of MDPI and/or the editor(s). MDPI and/or the editor(s) disclaim responsibility for any injury to people or property resulting from any ideas, methods, instructions or products referred to in the content. |
© 2025 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
Share and Cite
Lin, S.; Evans, K.; Hartley, D.; Morrison, S.; McDonald, S.; Veidt, M.; Wang, G. A Review of Gait Analysis Using Gyroscopes and Inertial Measurement Units. Sensors 2025, 25, 3481. https://doi.org/10.3390/s25113481
Lin S, Evans K, Hartley D, Morrison S, McDonald S, Veidt M, Wang G. A Review of Gait Analysis Using Gyroscopes and Inertial Measurement Units. Sensors. 2025; 25(11):3481. https://doi.org/10.3390/s25113481
Chicago/Turabian StyleLin, Sheng, Kerrie Evans, Dean Hartley, Scott Morrison, Stuart McDonald, Martin Veidt, and Gui Wang. 2025. "A Review of Gait Analysis Using Gyroscopes and Inertial Measurement Units" Sensors 25, no. 11: 3481. https://doi.org/10.3390/s25113481
APA StyleLin, S., Evans, K., Hartley, D., Morrison, S., McDonald, S., Veidt, M., & Wang, G. (2025). A Review of Gait Analysis Using Gyroscopes and Inertial Measurement Units. Sensors, 25(11), 3481. https://doi.org/10.3390/s25113481