基于姿态的体育活动分类的人工智能方法

Rajdeep Chatterjee, Soham Roy, SK Hafizul Islam, Debabrata Samanta
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引用次数: 3

摘要

人工智能系统已经渗透到我们生活的方方面面——从我们的饮食习惯到我们的睡眠模式。这种智能系统仍处于起步阶段的一个未被触及的领域是体育。人工智能技术在体育领域的应用还不够充分,大部分工作都是由教练和人工任命的人员手动完成的。我们相信,智能系统可以使教练组的工作更容易,并产生人眼经常忽略的发现。在这里,我们提出了一个智能系统来分析漂亮的网球比赛。通过使用计算机视觉架构Detectron2和基于活动的姿势估计和随后的分类,它可以从网球击球(活动)中识别动作。它可以根据姿势和动作,如正手和反手,为球员产生一个表现分数。它也可以用来理解和评估玩家的优势和劣势。所提出的方法为球员的表现和活动检测提供了一条有价值的信息,用于更好的教练。该研究实现了98.60%的分类准确率,优于其他SOTA CNN模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An AI Approach to Pose-based Sports Activity Classification
Artificial intelligence systems have permeated into all spheres of our life-impacting everything from our food habits to our sleep patterns. One untouched area where such intelligent systems are still in their infancy is sports. There has not been enough indulgence of AI techniques in sports, and most of the works are carried on manually by coaching staff and human appointees. We believe that intelligent systems can make coaching staff’s work easier and produce findings that the human eye can often overlook. Here, we have proposed an intelligent system to analyze the beautiful game of tennis. With the use of computer vision architecture Detectron2 and activity-based pose estimation and subsequent classification, it can identify an action from a tennis shot (activity). It can produce a performance score for the player based on pose and movement like forehand and backhand. It can also be used to understand and evaluate the strengths and weaknesses of the player. The proposed approach provides a piece of valuable information for a player’s performance and activity detection to be used for better coaching. The study achieves a classification accuracy of 98.60% and outperforms other SOTA CNN models.
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