» Articles » PMID: 16876414

Automatic Detection of Gait Events Using Kinematic Data

Overview
Journal Gait Posture
Specialty Orthopedics
Date 2006 Aug 1
PMID 16876414
Citations 125
Authors
Affiliations
Soon will be listed here.
Abstract

The timing of heel strike (HS) and toe off (TO), the events that mark the transitions between stance and swing phase of gait, is essential when analysing gait. Force plate recordings are routinely used to identify these events. Additional instrumentation, such as force sensitive resistors, can also been used. These approaches, however, include restrictions on the number of steps that can be analyzed and further encumbrance of the subject. We developed an algorithm which automatically determines these times from kinematic data recorded by a motion capture system, which is routinely used in gait analysis laboratories. The foot velocity algorithm (FVA) uses data from the heel and toe markers and identifies features in the vertical velocity of the foot which correspond to the gait events. We verified the performance of the FVA using a large data set of 54 normal children that contained both force plate recordings and kinematic data and found errors of (mean+/-standard deviation) 16+/-15 ms for HS and 9+/-15 ms for TO. The algorithm also worked well when tested on a small number of children with spastic diplegia. We compared the performance of the FVA with another kinematic method previously described. Our foot velocity algorithm offered more accurate results and was easier to implement than the previously described one, and should be applicable in a variety of gait analysis settings.

Citing Articles

Smooth Moves: Comparing Log Dimensionless Jerk Metrics from Body Center of Mass Trajectory and Wearable Sensor Acceleration During Walking.

Brasiliano P, Pavei G, Bergamini E Sensors (Basel). 2025; 25(4).

PMID: 40006462 PMC: 11860695. DOI: 10.3390/s25041233.


Automated gait event detection for exoskeleton-assisted walking using a long short-term memory model with ground reaction force and heel marker data.

Chen X, Martin A PLoS One. 2025; 20(2):e0315186.

PMID: 39928660 PMC: 11809868. DOI: 10.1371/journal.pone.0315186.


Application of machine learning for detecting high fall risk in middle-aged workers using video-based analysis of the first 3 steps.

Sakane N, Yamauchi K, Kutsuna I, Suganuma A, Domichi M, Hirano K J Occup Health. 2025; 67(1).

PMID: 39792357 PMC: 11848130. DOI: 10.1093/joccuh/uiae075.


Cross-step detection using center-of-pressure based algorithm for real-time applications.

Zadravec M, Matjacic Z J Neuroeng Rehabil. 2024; 21(1):161.

PMID: 39285381 PMC: 11403786. DOI: 10.1186/s12984-024-01460-4.


Validity and Test-Retest Reliability of Spatiotemporal Running Parameter Measurement Using Embedded Inertial Measurement Unit Insoles.

Riglet L, Orliac B, Delphin C, Leonard A, Eby N, Ornetti P Sensors (Basel). 2024; 24(16).

PMID: 39205131 PMC: 11359420. DOI: 10.3390/s24165435.