姿势识别在板球使用关键点

Rahul Mili, Nayana Das, Arjun Tandon, Saquelain Mokhtar, Imon Mukherjee, Goutam Paul
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引用次数: 3

摘要

在当今时代,人们对足球、板球、篮球和棒球的视频总结和集锦产生了兴趣。已经提出了一些识别板球裁判姿势的姿势识别方法,但它们都没有利用姿势估计和神经网络的潜力,这是深度学习中最强大的两个工具。在本文中,我们使用名为SNOW的数据集来检测板球比赛中的裁判姿势。该数据集已被评估为板球裁判姿势识别的介绍性辅助。板球的裁判有权做出决定,而这些决定是用手势传达的。在从板球视频帧中识别裁判姿势的基础上,我们试图识别五种这样的信号:无球,六,宽,出,无动作。本文讨论了一种利用姿态估计生成的关键点来识别裁判手势和姿态的技术。实验结果表明,该技术的准确率为87%,与现有的先进技术相比,该技术的评价指标具有很大的前景。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Pose Recognition in Cricket using Keypoints
In the present-day time, there has been a gain in interest in video summarization and highlights generation in football, cricket, basketball, and baseball. Some pose recognition methods for recognizing the pose of an umpire in cricket have been proposed, but none of them leverage the potential of pose estimation and neural networks, which are two of the most powerful tools in Deep learning. In this paper, we work on the dataset termed SNOW, for the detection of umpire pose in the game of cricket. This dataset has been assessed as an introductory aid for pose recognition of the umpire in cricket. The umpire in cricket has the power to give decisions, and these decisions are conveyed using hand signals. On the basis of identifying the umpire's pose from the frames of a cricket video, we try to identify five such signals: NO BALL, SIX, WIDE, OUT, and NO ACTION. This paper discusses a technique for recognition of the gestures and poses of the umpire using keypoints generated using pose estimation. The experimental results show that the accuracy of our proposed technique is 87%, and the evaluation metrics of our technique are quite promising compared to existing state-of-the-art works.
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