Artificial neural networks for analyzing inter-limb coordination: The golf chip shot

Motor control research relies on theories, such as coordination dynamics, adapted from physical sciences to explain the emergence of coordinated movement in biological systems. Historically, many studies of coordination have involved inter-limb coordination of relatively few degrees of freedom. This study looked at the high-dimensional inter-limb coordination used to perform the golf chip shot toward six different target distances. This study also introduces a visualization of high-dimensional coordination relevant within the coordination dynamics theoretical framework. A specific type of Artificial Neural Network (ANN), the Self-Organizing Map (SOM), was used for the analysis. In this study, the trajectory of consecutive best-matching nodes on the output map was used as a collective variable and subsequently fed into a second SOM which was used to create visualization of coordination stability. The SOM trajectories showed changes in coordination between movement patterns used for short chip shots and movement patterns used for long chip shots. The attractor diagrams showed non-linear phase transitions for three out of four players. The methods used in this study may offer a solution for researchers from a coordination dynamics perspective who intend to use data obtained from discrete high-dimensional movements.
© Copyright 2011 Human Movement Science. Elsevier. Julkaistu Tekijä Elsevier. Kaikki oikeudet pidätetään.

Aiheet: biomekaniikka analyysi tutkimusmenetelmä nopeus liike golf tekniikka koordinaatiokyky
Aihealueet: urheilukilpailut tekniset ja luonnontieteet
Tagging: neuronale Netze
DOI: 10.1016/j.humov.2010.12.006
Julkaisussa: Human Movement Science
Julkaistu: Elsevier 2011
Vuosikerta: 30
Numero: 6
Sivuja: 1129-1143
Julkaisutyypit: elektroninen julkaisu
Kieli: englanti (kieli)
Taso: kehittynyt