Enhancement of force patterns classification based on Gaussian distributions

(Verbesserung der Kraftmuster-Klassifikation auf der Grundlage der Gausschen Verteilung)

Description of the patterns of ground reaction force is a standard method in areas such as medicine, biomechanics and robotics. The fundamental parameter is the time course of the force, which is classified visually in particular in the field of clinical diagnostics. Here, the knowledge and experience of the diagnostician is relevant for its assessment. For an objective and valid discrimination of the ground reaction force pattern, a generic method, especially in the medical field, is absolutely necessary to describe the qualities of the time-course. The aim of the presented method was to combine the approaches of two existing procedures from the fields of machine learning and the Gauss approximation in order to take advantages of both methods for the classification of ground reaction force patterns. The current limitations of both methods could be eliminated by an overarching method. Twenty-nine male athletes from different sports were examined. Each participant was given the task of performing a one-legged stopping maneuver on a force plate from the maximum possible starting speed. The individual time course of the ground reaction force of each subject was registered and approximated on the basis of eight Gaussian distributions. The descriptive coefficients were then classified using Bayesian regulated neural networks. The different sports served as the distinguishing feature. Although the athletes were all given the same task, all sports referred to a different quality in the time course of ground reaction force. Meanwhile within each sport, the athletes were homogeneous. With an overall prediction (R = 0.938) all subjects/sports were classified correctly with 94.29% accuracy. The combination of the two methods: the mathematical description of the time course of ground reaction forces on the basis of Gaussian distributions and their classification by means of Bayesian regulated neural networks, seems an adequate and promising method to discriminate the ground reaction forces without any loss of information
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Schlagworte: Kraft Untersuchungsmethode Messverfahren Hilfsgerät Statistik Diagnostik Bodenreaktionskraft
Notationen: Trainingswissenschaft
DOI: 10.1016/j.jbiomech.2017.12.006
Veröffentlicht in: Journal of Biomechanics
Veröffentlicht: 2018
Jahrgang: 67
Seiten: 144-149
Dokumentenarten: Artikel
Sprache: Englisch
Level: hoch