Affiliation:
1. School of Physical Education Hunan City University Yiyang Hunan China
2. Academy of Music Hengshui University Hengshui Hebei China
Abstract
AbstractThis paper adopts the deep network model constructed the results of the training are used to explore the detection of sports, and to verify the deep learning network model from the perspective of reliability and feasibility. The experimental results in this paper show that the comprehensive performance evaluation index FM increased by 2.6%, Pr increased by 0.7%, and Re increased by 4.4%. Therefore, the deep residual network structure used in the DRNTL method proposed in this paper can effectively improve the generalization ability of the network. Through the learning of a large amount of labeled data, the model can be applied to the detection of other untrained complex scenes. The engineering of the moving target detection method is of great significance.
Subject
Artificial Intelligence,Computer Networks and Communications,Information Systems,Software
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