Visualization of table tennis skill by neural networks and fuzzy inference

The Topographic Attentive Mapping (TAM) network is a biologically-inspired classifier that bears similarities to the human visual system. When used in a TAM network, the proposed pruning algorithm improves classification accuracy and allows extracting knowledge as represented by the network structure. Fuzzy Inference is a representation method of mapping inputs to outputs using fuzzy set theory. Fuzzy inference has been successfully applied in fields such as automatic control, data classification, decision analysis, expert systems, and computer vision. In this paper, sport technique evaluation of motion analysis modelled by TAM network and Fuzzy Inference is discussed. The trajectory pattern of forehand strokes of table tennis players is analyzed with nine sensor markers attached to the right upper arm of players. With the TAM network and Fuzzy Inference, technique rules are extracted by learning algorithm in order to classify the skill level of players of table tennis from the sensor data. In addition, the difference between the elite player, middle level player and beginner is visualized, and how to improve skills specific to table tennis from the view of data analysis is discussed.
© Copyright 2017 Proceedings Book of The 15th ITTF Sports Science Congress Düsseldorf, 27th - 28th May 2017. Published by International Table Tennis Federation. All rights reserved.

Bibliographic Details
Subjects:
Notations:sport games technical and natural sciences
Tagging:neuronale Netze Fuzzy-Logik
Published in:Proceedings Book of The 15th ITTF Sports Science Congress Düsseldorf, 27th - 28th May 2017
Language:English
Published: Lausanne International Table Tennis Federation 2017
Pages:397
Document types:congress proceedings
Level:advanced