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논문검색

Prediction of Basketball Players' behavior based on Radial Basis Function Neural Network

초록

영어

An approach based on online RBFNN is proposed to predict the ball-carrier's behavior shooting, passing and dribbling in basketball matches. In order to describe the factors affecting the behavior of ball carrier, artificial potential field (APF)-based player information is introduced to model the court situation of all players after tracking and vision range determination, then a feature vector is formed as the input of the online RBF neural network. The behavior prediction of the ball carrier is solved by the online RBF neural network based on GIRAN learning algorithm. Compared with the offline RBF neural network, the online neural network can adjust both structure and parameters to basketball matches, thus the prediction accuracy is improved to some extent.

목차

Abstract
 1. Introduction
 2. Player Information Amount based on Artificial Potential Field
  2.1. Artificial Potential Field
  2.2. Player Information Quantity based on Artificial Potential Field
 3. Behavior Prediction of the Player by Online RBFNN based on GIRAN
  3.1. RBF Neural Network
  3.2. Prediction of Ball Player
 4. Experimental Analysis and Results
 5. Conclusion
 References

저자정보

  • Shengbo Liao Beijing Jiaotong University, Beijing 100000, china
  • Deming Zhang Heilongjiang University of Chinese Medicine, Harbin 150000, China
  • Haitao Yang Beijing University of Technology, Beijing 100000, china

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