基于计算机视觉的足球越位检测数据集与方法

Neeraj Panse, Ameya Mahabaleshwarkar
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引用次数: 3

摘要

越位判罚是每一场足球比赛中不可或缺的一部分。近年来,足球比赛中的决策,包括越位决策,都受到科技的严重影响。然而,尽管使用了视频助理裁判(VAR),越位判罚仍然存在不一致的问题。对VAR的批评主要有两点,一是在提供最终决定方面的广泛延迟,二是由于人为错误而导致的不准确的决定。越位决策的视觉特性使计算机视觉技术成为解决这些问题的可行选择,通过自动化过程的适当方面。然而,由于缺乏一种能够捕捉越位规则的所有方面的计算算法,缺乏一种可以被这种算法利用的方法来计算表示足球比赛场景的既定方法,以及缺乏用于测试这些方法的多样化、全面的数据集,这些都阻碍了对这个问题的研究工作。本文精确地解决了这些障碍中的每一个,以促进该领域的进一步研究。提出了一种足球比赛图像的计算越位判定算法。为这种越位算法创建足球比赛图像定量表示的方法也被作为计算机视觉任务的管道提出。已经提出了一个新的数据集来评估这种方法,其中包含了一个精心挑选的足球比赛场景,这些场景代表了一个旨在帮助或自动完成越位决策任务的系统可能面临的各种挑战。最后,本文还详细介绍了在给定数据集上,所提供的管道中使用的一组特定计算机视觉任务的性能。该系统在数据集上的F1得分为0.85。本文还讨论了这些方法的缺点和需要改进的地方,试图将未来的研究重点放在这一任务上。提供的数据集和管道实现代码可在:https://github.com/Neerajj9/Computer-Vision-based-Offside-Detection-in-Soccer
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Dataset & Methodology for Computer Vision based Offside Detection in Soccer
Offside decisions are an integral part of every soccer game. In recent times, decision-making in soccer games, including offside decisions, has been heavily influenced by technology. However, in spite of the use of a Video Assistant Referee (VAR), offside decisions remain to be plagued with inconsistencies. The two major points of criticism for the VAR have been extensive delays in providing final decisions and inaccurate decisions arising from human errors. The visual nature of offside decision-making makes Computer Vision techniques a viable option for tackling these issues, by automating appropriate aspects of the process. However, the lack of a computational algorithm that captures all aspects of the offside rule, lack of an established methodology to computationally represent soccer match scenes in a way that can be utilized by such an algorithm, and the absence of a diverse, comprehensive dataset for testing these methods have stood in the way of research efforts for this problem. This paper precisely addresses each one of these obstacles, in an effort to facilitate further research in this area. The paper presents a computational offside decision algorithm for soccer match images. The methodology for creating a quantitative representation of soccer match images for this offside algorithm has also been presented as a pipeline of Computer Vision tasks. A novel dataset for evaluating this methodology has been presented, which contains a curated selection of soccer match scenes that represent the various challenges that can be faced by a system that aims to aid or automate the task of making offside decisions. Finally, this paper also details the performance of a specific set of Computer Vision tasks used in the presented pipeline, on the given dataset. The proposed system achieves an F1 score of 0.85 on the dataset. The drawbacks and areas of improvements for these methods have also been discussed in an attempt to focus future research on this task. The presented dataset and pipeline implementation code is available at: https://github.com/Neerajj9/Computer-Vision-based-Offside-Detection-in-Soccer
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