Video Analysis in Sports by Lightweight Object Detection Network under the Background of Sports Industry Development.

Yifei Zheng, Hongling Zhang
Author Information
  1. Yifei Zheng: Physical Department, Chang'an University, Xi'an 710064, Shaanxi, China. ORCID
  2. Hongling Zhang: Physical Institute, Yan'an University, Yan'an 716000, Shaanxi, China. ORCID

Abstract

This study uses the video image information in sports video image analysis to realize scientific sports training. In recent years, game video image analysis has referenced athletes' sports training. The sports video analysis is a widely used and effective method. First, the you only look once (YOLO) method is explored in lightweight object detection. Second, a sports motion analysis system based on the YOLO-OSA (you only look once-one-shot aggregation) target detection network is built based on the dense convolutional network (DenseNet) target detection network established by the one-shot aggregation (OSA) connection. Finally, object detection evaluation principles are used to analyze network performance and object detection in sports video. The results show that the more obvious the target feature, the larger the size, and the more motion information contained in the sports category feature, the more obvious the effect of the detected target. The higher the resolution of the sports video image, the higher the model detection accuracy of the YOLO-OSA target detection network, and the richer the visual video information. In sports video analysis, video images of the appropriate resolution are fed into the system. The YOLO-OSA network achieved 21.70% precision and 54.90% recall. In general, the YOLO-OSA network has certain pertinence for sports video image analysis, and it improves the detection speed of video analysis. The research and analysis of video in sports under the lightweight target detection network have certain reference significance.

References

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MeSH Term

Humans
Image Processing, Computer-Assisted
Neural Networks, Computer
Sports
Video Recording

Word Cloud

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