Feature Extraction of Athlete's Post-Match Psychological and Emotional Changes Based on Deep Learning.

Journal: Computational intelligence and neuroscience
PMID:

Abstract

Athletes have had to deal with significant shifts in the way they think about psychology and emotion before and after attending a match in their respective fields. It has become increasingly difficult for players of any sport to overcome these differences due to massive technological advancements that aid in analyzing the difficulties of an athlete. The trainer can use the results of the analysis to help motivate and prepare the athletes for the upcoming competitions. The analysis in this study is based on information about the athletes who competed in the Tokyo Olympics. Deep learning models were used to evaluate the study. Image feature detection can be accomplished through the application of a machine learning technique known as deep learning. It employs a neural network, a computer system that mimics the human brain's multiple layers. One or more unique features can be extracted from each layer. A deep learning model called the behavior recognition algorithm is used for the research. The questionnaire from the dataset was used to generate the results of the analysis.

Authors

  • Shuchang Zhang
    Department of Mathematics, National University of Defense Technology, Changsha, China. Electronic address: zhangshuchang19@163.com.
  • Fengjun Shan
    College of Physical, Zhoukou Normal University, Zhoukou, Henan, China.